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Lagrangian diffusion properties of a free shear turbulent jet

Published online by Cambridge University Press:  11 May 2021

Bianca Viggiano
Affiliation:
Department of Mechanical and Materials Engineering, Portland State University, Portland, OR97201, USA
Thomas Basset
Affiliation:
Univ. Lyon, ENS de Lyon, Univ. Claude Bernard, CNRS, Laboratoire de Physique, 69007Lyon, France
Stephen Solovitz
Affiliation:
School of Engineering and Computer Science, Washington State University Vancouver, Vancouver, WA98686, USA
Thomas Barois
Affiliation:
Univ. Bordeaux, CNRS, LOMA, UMR 5798, 33400Talence, France
Mathieu Gibert
Affiliation:
Univ. Grenoble Alpes, CNRS, Grenoble INP, Institut Néel, 38000Grenoble, France
Nicolas Mordant
Affiliation:
Univ. Grenoble Alpes, CNRS, Grenoble INP, LEGI, 38000Grenoble, France
Laurent Chevillard
Affiliation:
Univ. Lyon, ENS de Lyon, Univ. Claude Bernard, CNRS, Laboratoire de Physique, 69007Lyon, France
Romain Volk
Affiliation:
Univ. Lyon, ENS de Lyon, Univ. Claude Bernard, CNRS, Laboratoire de Physique, 69007Lyon, France
Mickaël Bourgoin
Affiliation:
Univ. Lyon, ENS de Lyon, Univ. Claude Bernard, CNRS, Laboratoire de Physique, 69007Lyon, France
Raúl Bayoán Cal*
Affiliation:
Department of Mechanical and Materials Engineering, Portland State University, Portland, OR97201, USA
*
Email address for correspondence: [email protected]

Abstract

A Lagrangian experimental study of an axisymmetric turbulent water jet is performed to investigate the highly anisotropic and inhomogeneous flow field. Measurements are conducted within a Lagrangian exploration module, an icosahedron apparatus, to facilitate optical access of three cameras. Stereoscopic particle tracking velocimetry results in three-component tracks of position, velocity and acceleration of the tracer particles within the vertically oriented jet with a Taylor-based Reynolds number ${\textit {Re}}_\lambda \simeq 230$. Analysis is performed at seven locations from 15 diameters up to 45 diameters downstream. Eulerian analysis is first carried out to obtain critical parameters of the jet and relevant scales, namely the Kolmogorov and large (integral) scales as well as the energy dissipation rate. Lagrangian statistical analysis is then performed on velocity components stationarised following methods inspired by Batchelor (J. Fluid Mech., vol. 3, 1957, pp. 67–80), which aim to extend stationary Lagrangian theory of turbulent diffusion by Taylor to the case of self-similar flows. The evolution of typical Lagrangian scaling parameters as a function of the developing jet is explored and results show validation of the proposed stationarisation. The universal scaling constant $C_0$ (for the Lagrangian second-order structure function), as well as Eulerian and Lagrangian integral time scales, are discussed in this context. Constant $C_0$ is found to converge to a constant value (of the order of $C_0 = 3$) within 30 diameters downstream of the nozzle. Finally, the occurrence of finite particle size effects is investigated through consideration of acceleration-dependent quantities.

Type
JFM Papers
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2021. Published by Cambridge University Press

1. Introduction

Dispersion of particles from a point source in turbulent free jet flows plays an important role in many industrial and natural systems, including for instance sprays, flames, volcanic plumes and emission of pollutants at industrial chimneys. Depending on the particle characteristics (size, density with respect to the carrier fluid, volume fraction, etc.), the dynamics will follow that of the fluid (particles will then be considered as tracers) or it may be affected by inertial effects, finite size effects and couplings between the phases in highly seeded particle-laden flows (Berk & Coletti Reference Berk and Coletti2020).

In the simplest situations, where particles can be considered as tracers (which is the framework of the present study), the turbulent diffusion process can be related to simple Lagrangian statistical properties of the carrier flow. While this connection has been extensively investigated for the case of homogeneous isotropic turbulence, in the spirit of Taylor's turbulent diffusion theory (Taylor Reference Taylor1922), the case of inhomogeneous flows remains largely unexplored, in spite of an extension of Taylor's theory proposed by Batchelor (Reference Batchelor1957). A summary of Taylor's diffusion and Batchelor's extension to self-similar flows are presented herein as incentive for the characterisation of several basic Lagrangian statistics in free shear flows and, in turn, motivation of the present study.

1.1. Taylor's theory of turbulent diffusion

The importance of the Lagrangian approach in modelling turbulent dispersion was first evidenced by the early work of Taylor (Reference Taylor1922). Taylor's theory connects the mean square displacement $\sigma ^2(\tau )$ of particles spreading from a point source in stationary homogeneous isotropic turbulence to the Lagrangian two-point correlation function $R^L_{uu}(\tau ) = \langle u(t+\tau )u(t) \rangle$, where the average $\langle \cdot \rangle$ is taken over an ensemble of particle trajectories. Here, $u(t)$ represents the velocity of individual particles along their trajectory (note that for simplicity only one velocity component is considered) and $\tau$ is the time lag. This result is often called the Taylor theorem and expressed as

(1.1)\begin{equation} \frac{\mathrm{d}^2\sigma^2}{\mathrm{d}\tau^2}(\tau) = 2 R^L_{uu}(\tau). \end{equation}

Taylor's theory is of utmost practical importance, as it reduces the prediction of the spreading of tracer particles (and therefore of any passive substance spread by turbulence with negligible molecular diffusivity) to the knowledge of the Lagrangian two-point correlation function $R^L_{uu}(\tau )$ at all times. Note that the correlation function $R^L_{uu}$ can be equivalently replaced by the Lagrangian second-order structure function $S^L_2(\tau ) = \langle [u(t+\tau )-u(t)]^2 \rangle = 2 (R^L_{uu}(0) - R^L_{uu}(\tau ))$, which is a common statistical tool used to characterise the multiscale dynamics of turbulence. The correlation at $\tau = 0$, $R^L_{uu}(0)$, is the mean square of the velocity fluctuations $\sigma _u^2$.

Interestingly, the asymptotic regimes of the short and long time scales of turbulent diffusion do not depend on the details of the dynamics of turbulence. In the limit of very short times, the spreading follows trends of the trivial (purely kinematic) ballistic regime, where $\sigma ^2(\tau ) \simeq \sigma _u^2 \tau ^2$. This can be retrieved from a simple one-term Taylor expansion of the particle displacement itself, or equivalently by applying (1.1) and considering the limit at vanishing times for the Lagrangian correlation function, $R^L_{uu}(\tau ) \simeq \sigma _u^2$ for small times. In the limit of very long time scales, (1.1) from Taylor's theory predicts that due to the finite Lagrangian correlation time of turbulence ($T_L = \sigma _u^{-2} \int _0^\infty R^L_{uu}(\tau ) \,\mathrm {d}\tau$) the long-term turbulent diffusion process behaves as simple diffusion (where the mean square displacement grows linearly with time, $\sigma ^2 \propto 2 K_T \tau$, for long times) with a turbulent diffusivity $K_T = \sigma _u^2 T_L$.

Details of the diffusion process at intermediate time scales require a deeper knowledge of the specific time dependence of $R^L_{uu}(\tau )$ at all times, particularly in the inertial range of scales of turbulence. Such dependency can be inferred empirically from a Lagrangian statistical description à la Kolmogorov (Toschi & Bodenschatz Reference Toschi and Bodenschatz2009), which predicts that for homogeneous isotropic turbulence within the inertial range of time scales, $\tau _\eta \ll \tau \ll T_L$, $S^L_2(\tau ) = C_0 \varepsilon \tau$, with $\varepsilon$ the turbulent energy dissipation rate and $\tau _\eta = (\nu /\varepsilon )^{1/2}$ the turbulent dissipation scale. The universal constant $C_0$ plays a similar role in the Lagrangian framework to the Kolmogorov constant in the Eulerian framework. As a consequence, a detailed description of the turbulent diffusion process, including the inertial-scale behaviour, relies on the knowledge of $S^L_2(\tau )$ (or equivalently of $R^L_{uu}(\tau )$) at all time scales and specifically on the knowledge of $C_0$ at inertial scales. Thereafter, stochastic models can be built giving reasonable Lagrangian dynamics descriptions at all time scales (Sawford Reference Sawford1991; Viggiano et al. Reference Viggiano, Friedrich, Volk, Bourgoin, Cal and Chevillard2020).

The empirical determination of the constant $C_0$ is therefore critical in describing the turbulent diffusion process and to accurately model the particle dispersion occurring in industrial applications and natural circumstances. Such a determination requires accessing accurate inertial-range Lagrangian statistics and has received attention in the past two decades in several experimental and numerical studies (Sawford Reference Sawford1991; Mordant et al. Reference Mordant, Metz, Michel and Pinton2001; Yeung Reference Yeung2002; Ouellette et al. Reference Ouellette, Xu, Bourgoin and Bodenschatz2006b; Toschi & Bodenschatz Reference Toschi and Bodenschatz2009) as well as some field measurements in the ocean (Lien, D'Asaro & Dairiki Reference Lien, D'Asaro and Dairiki1998). This leads to a range of $C_0$ estimates ranging from 2 to 7 (cf. Lien & D'Asaro (Reference Lien and D'Asaro2002) and Toschi & Bodenschatz (Reference Toschi and Bodenschatz2009) for a complete comparison of theoretical, simulated and experimental results). The variability of reported values in the literature has been in part attributed to the relatively strong dependence of this constant on Reynolds number (Sawford Reference Sawford1991; Ouellette et al. Reference Ouellette, Xu, Bourgoin and Bodenschatz2006b) and to the existence of large-scale anisotropy and inhomogeneity (Ouellette et al. Reference Ouellette, Xu, Bourgoin and Bodenschatz2006b).

1.2. Batchelor's extension of theory of turbulent diffusion

In spite of this variability of the tabulated values for $C_0$, the connection between turbulent diffusion and Lagrangian statistics in homogeneous isotropic and stationary turbulence is now well circumscribed. The situation is more complex when it comes to inhomogeneous and anisotropic flows. One strong hypothesis of Taylor's turbulent diffusion theory relies on the statistical Lagrangian stationarity of the particle dynamics, which requires not only a global temporal stationarity of the flow, but also a statistical Eulerian homogeneity: a particle travelling across an inhomogeneous field will indeed experience non-stationary temporal dynamics along its trajectory. Besides, in inhomogeneous flows any Lagrangian statistics will depend on the initial position of the particle (used to label trajectories). For the sake of keeping formulas compact, explicit reference to initial position will be omitted when exploring inhomogeneous Lagrangian statistics, but the reader should remember this dependence.

One such inhomogeneous flow field is a turbulent free round jet. Although limited Lagrangian experimental campaigns have been carried out (Gervais, Baudet & Gagne Reference Gervais, Baudet and Gagne2007; Holzner et al. Reference Holzner, Liberzon, Nikitin, Lüthi, Kinzelbach and Tsinober2008; Wolf et al. Reference Wolf, Lüthi, Holzner, Krug, Kinzelbach and Tsinober2012; Kim, Liberzon & Chamorro Reference Kim, Liberzon and Chamorro2017), this type of flow has received much attention in Eulerian studies as one of its most striking properties is that turbulence is self-preserving (Corrsin Reference Corrsin1943; Hinze & Van Der Hegge Zijnen Reference Hinze and Van Der Hegge Zijnen1949; Hussein, Capp & George Reference Hussein, Capp and George1994; Weisgraber & Liepmann Reference Weisgraber and Liepmann1998). More specifically, as the jet develops downstream of the nozzle, the turbulence properties (length, time and velocity scales) evolve in such a way that the Reynolds number remains constant at all downstream positions. Note that such self-similarity generally applies only at sufficiently large downstream positions, typically $z >rsim 20 D$, with $D$ the nozzle diameter (Pope Reference Pope2000). As a result of this axial Eulerian inhomogeneity, Lagrangian dynamics is non-stationary and dependent on the initial position of considered trajectories.

In 1957, Batchelor proposed an extension of Taylor's stationary diffusion theory to the case of turbulent jets in a Lagrangian framework, exploiting the Eulerian self-similarity property of these flows (Batchelor Reference Batchelor1957). The approach by Batchelor uses the Eulerian self-similarity to define a compensated time $\tilde {\tau }$ and a compensated Lagrangian velocity $\tilde {u}(\tilde {\tau })$ which exhibits statistically stationary Lagrangian dynamics. It can be noted that the Lagrangian stationarisation idea introduced by Batchelor is not limited to the case of the jet, but can also be applied to other self-preserving flows such as wakes, mixing layers and possibly other types of shear flows (Batchelor Reference Batchelor1957; Cermak Reference Cermak1963).

The idea of this stationarisation is to compensate the effect of Eulerian inhomogeneity on the Lagrangian variables to retrieve a Lagrangian dynamics which becomes independent of the initial position and statistically stationary and, in turn, to generalise results originally established for stationary situations (such as Taylor's theory of turbulent diffusion). Based on the Eulerian self-similarity properties, Batchelor considers the case of the dispersion of particles released at the origin of a turbulent jet, whose Lagrangian dynamics is stationarised by considering the just mentioned compensated variables. Explicitly, through consideration of the velocity at the position $\boldsymbol {x}(\tau )$ reached by the particle at a given time $\tau$ since it has been released (at $\tau = 0$ and $\boldsymbol {x} = 0$) as well as the time scales of the flow properties at this position $\boldsymbol {x}(\tau )$:

(1.2a,b)\begin{equation} \tilde{u}(\tau) = \frac{u(\tau) - \bar{u}^e(\boldsymbol{x}(\tau))}{\sigma_u(\boldsymbol{x}(\tau))} \quad \textrm{and} \quad \tilde{\tau} = \frac{\tau}{T_E(\boldsymbol{x}(\tau))}, \end{equation}

where $\bar {u}^e(\boldsymbol {x}(\tau ))$ represents the local (Eulerian) average velocity at the position $\boldsymbol {x}$ of the particle at time $\tau$ and $T_E(\boldsymbol {x}(\tau ))$ the local Eulerian time scale (only one velocity component is considered). Similarly, $\sigma _u(\boldsymbol {x}(\tau ))$ is the local (Eulerian) standard deviation of the velocity at the position $\boldsymbol {x}$ of the particle at time $\tau$. The temporal transformation simply rescales the time in order to account for the evolution of the Eulerian background properties as the particle moves downstream in the jet. The transformation of the velocity intends to stationarise the effective dynamics by: (i) subtracting the local average velocity, so that the average of $\tilde {u}$ is zero, and (ii) choosing the denominator $\sigma _u(\boldsymbol {x}(\tau ))$ a general compensation for the decay of the turbulent fluctuations of the background Eulerian field as the particles move downstream. Note that the transformations, as they were presented by Batchelor (Reference Batchelor1957), directly considered the Eulerian power-law dependencies (in space) of $\bar {u}^e$, $\sigma _u$ and $T_E$ in the self-similar region of the jet near its centreline. The transformations as written in (1.2a,b) are therefore more general, although Batchelor's transformations are eventually equivalent if such power-law dependencies are assumed. The more general expression considered here allows one to explore the relevance of the stationarisation procedure not only in the centreline of the jet (as done by Batchelor) but to also probe away from the centreline.

As a result of the stationarisation procedure, compensated Lagrangian statistics are expected to no longer depend on the initial position and to exhibit similar properties (time scales, correlations, etc.) at any position in the jet and hence at any time along particle trajectories. Batchelor then demonstrates that Taylor's theory can be extended to the stationarised dynamics by connecting the mean square displacement of the particles to $R^L_{\tilde {u}\tilde {u}}(\tilde {\tau })$, the Lagrangian correlation function of $\tilde {u}(\tilde {\tau })$.

Three important aspects arise regarding Batchelor's diffusion theory: (i) it extends the Eulerian self-similarity to the Lagrangian framework, in this respect being often referred to as the Lagrangian self-similarity hypothesis (Cermak Reference Cermak1963), (ii) it connects the turbulent diffusion process of particles in jets to the Lagrangian correlation function (or equivalently to the second-order structure function) of the stationarised velocity statistics and (iii) it proposes a systematic method of analysing the non-stationary data of the jet.

1.3. Outline of the article

To the knowledge of the authors, only indirect evidence of the validity concerning Batchelor's self-similarity hypothesis in turbulent free jets exists in the literature, largely based on measurements of the mean square displacements of particles (Kennedy & Moody Reference Kennedy and Moody1998). Direct Lagrangian measurements which show the stationarity of the compensated velocity correlations are still lacking, as well as the full characterisation of the inertial-scale Lagrangian dynamics in jets. Lagrangian correlation functions in free shear jets have been reported in experiments by Gervais et al. (Reference Gervais, Baudet and Gagne2007) (which use acoustic Lagrangian velocimetry; Mordant et al. Reference Mordant, Metz, Michel and Pinton2001), although the question of the Lagrangian self-similarity has not been directly addressed. Further, a detailed characterisation of the inertial-range dynamics, the estimation of the related fundamental constants such as $C_0$ and the relevance of simple Lagrangian stochastic models derived for homogeneous isotropic conditions (Sawford Reference Sawford1991) are also currently lacking from the literature for this flow configuration.

The aim of the present article is to address these unanswered questions through examination of particle trajectories within a free jet. Three-component trajectories of a turbulent water jet (${\textit {Re}}_\lambda \simeq 230$) are captured, with a measurement volume containing up to 45 diameters downstream of the jet exit. Experimental methods provide sufficient temporal details to analyse particle trajectories as well as adequate spatial resolution and interrogation volume size to facilitate the application of basic Eulerian analysis. In § 2 the experimental set-up and methods are presented including the implementation of the Lagrangian particle tracking and the stationarisation procedure that will be applied, inspired by Batchelor's Lagrangian self-similarity hypothesis. Section 3 is dedicated to basic Eulerian statistics, which are not the main topic of this study but nevertheless allow the characterisation of key turbulence properties (energy dissipation rate, Eulerian scales, Reynolds number, etc.) and their self-similar behaviour. Section 4 includes results for the Lagrangian dynamics. In the context of the previously discussed turbulent diffusion, emphasis is placed on second-order Lagrangian statistics (velocity two-point correlation and structure functions), for which the Lagrangian self-similarity compensation is tested and an estimate of the constant $C_0$ is given. The connections between Eulerian and Lagrangian scales are also considered in the framework of classical stochastic modelling. Section 5 extends the discussion of Lagrangian statistics to second-derivative dynamics where comparisons between key acceleration quantities and the scaling constant $C_0$ are presented. Finally, main conclusions are summarised in § 6.

2. Experimental methods

2.1. Hydraulic set-up

Experiments were performed in the Lagrangian Exploration Module (LEM) (Zimmermann et al. Reference Zimmermann, Xu, Gasteuil, Bourgoin, Volk, Pinton and Bodenschatz2010) at the École Normale Supérieure de Lyon. A vertically oriented jet of water is injected into the LEM, a convex regular icosahedral (20-faced polyhedron) tank full of water, as seen in figure 1(a). The LEM was originally designed to generate homogeneous isotropic turbulence when the 12 propellers on 12 of its faces are activated; however, for this experiment, the LEM is only used as a tank as the optical access makes it an ideal apparatus for three-dimensional particle tracking of a jet.

Figure 1. (a) Three-dimensional CAD rendering of the LEM. (b) Schematic of the hydraulic set-up. Cameras 1, 2 and 3 are oriented orthogonal to the green faces labelled accordingly as 1, 2 and 3.

A schematic of the hydraulic set-up is shown in figure 1(b). The vertical jet, injected with a pump connected to a reservoir, is ejected upwards into the tank from a round nozzle with a diameter $D = 4\ \textrm {mm}$. At the nozzle exit, the flow rate is kept steady at $Q \simeq 10^{-4}\ \textrm {m}^3\ \textrm {s}^{-1}$, generating an exit velocity $U_J \simeq 7\ \textrm {m}\ \textrm {s}^{-1}$, and, in turn, a Reynolds number based on the diameter ${\textit {Re}}_D = U_JD/\nu \simeq 2.8\times 10^{4}$ with $\nu$ the water kinematic viscosity. An overflow valve releases the excess water from the top of the tank at the same rate as injection from the nozzle. Experiments are performed at ambient temperature. By moving the vertical position of the nozzle, two locations are considered in order to study near-field (NF) and far-field (FF) dynamics, with interrogation volumes spanning $0\ \textrm {mm} \leq z \leq 120\ \textrm {mm}$ ($0 \leq z/D \leq 30$) and $80\ \textrm {mm} \leq z \leq 200\ \textrm {mm}$ ($20 \leq z/D \leq 50$), respectively (the $z$ axis is the jet axis with $z = 0$ the nozzle exit position). For both regions, the jet is sufficiently far from the walls of the tank to discount momentum effects from the LEM onto the jet (Hussein et al. Reference Hussein, Capp and George1994), and thus a free jet is observed.

The particles, seeding the jet during injection, are neutrally buoyant spherical polystyrene tracers with a density $\rho _p = 1060\ \textrm {kg}\ \textrm {m}^{-3}$ and a diameter $d_p = 250\ \mathrm {\mu }$m. The reservoir is seeded with a mass loading of $0.1\,\%$ (reasonable seeding to observe a few hundred particles per image) and an external stirrer maintains homogeneity of the particles. The quiescent water inside the LEM is not seeded; therefore tracked particles are only those injected into the measurement volume by the jet (although some tracers are always remaining in the tank). The inlet valve is open sufficiently long before the recording, in such a way that the jet is stationary but minimal particle recirculation occurs. The ratio of the particle diameter $d_p$ to the Taylor microscale $\lambda$ is always smaller than 1 and ranges from 0.3 (in the FF) to 0.8 (in the NF). The particles are not expected to deviate from tracer behaviour for velocity statistics within the inertial range (Mordant, Lévêque & Pinton Reference Mordant, Lévêque and Pinton2004a). The ratio of $d_p$ to the Kolmogorov length scale $\eta$ remains, however, larger than 1 and ranges from 9 (in the FF) to 25 (in the NF). Finite size effects are therefore expected to influence small-scale Lagrangian dynamics and in particular acceleration statistics (Qureshi et al. Reference Qureshi, Bourgoin, Baudet, Cartellier and Gagne2007), as further investigated in § 5.

2.2. Optical set-up

Three high-speed cameras (Phantom V12, Vision Research) mounted with 100 mm macro lenses (Zeiss Milvus) are used to track the particles. The optical configuration is shown in figure 2. The angles are related to the geometry of an icosahedron. The interrogation volume is illuminated in a back-light configuration with three 30 cm square light-emitting diode panels oriented opposite the three cameras. The spatial resolution of each camera is $1280 \times 800$ pixels, creating a measurement volume of around $80\ \textrm {mm} \times 100\ \textrm {mm} \times 130\ \textrm {mm}$, as seen in figure 3. Hence one pixel corresponds to roughly 0.1 mm. The three cameras are synced via TTL triggering at a frequency of 6 kHz for 8000 snapshots, resulting in a total record of nearly 1.3 s per run. For each nozzle position (NF and FF), a total of 50 runs are performed to ensure statistical convergence.

Figure 2. Schematic of the optical set-up. (a) Top view and (b) profile view.

Figure 3. Measurement volume captured by the three-camera set-up for the NF measurements (same measurement volume for the FF measurements).

2.3. Particle tracking velocimetry

2.3.1. Particle detection

To create particle trajectories through particle tracking velocimetry, two-dimensional images are first analysed to measure the positions of the centres of the particles. The particle detection procedure used in this study is an ad hoc process which uses classical methods of image analysis: non-uniform illumination correction, morphological operations (opening), thresholding, binarisation and centroid detection. An example of a camera image with detected particles is presented in figure 4.

Figure 4. Detection of 705 particles on camera 2 in the NF configuration (nozzle in the top left-hand corner). Inset: zoom on the boxed zone.

2.3.2. Stereoscopic reconstruction

After the particle centres for all images and all cameras have been determined, the actual three-dimensional positions of the particles can be reconstructed, knowing that each camera image is a two-dimensional projection of the measurement volume. More typically, methods based on optical models are used to achieve real particle positions, but for this study a geometric method developed by Machicoane et al. (Reference Machicoane, Aliseda, Volk and Bourgoin2019) is used due to its increased precision and ease of implementation. This method is based on an initial polynomial calibration, where each position on a camera image corresponds to a line in real space (a line of possible positions in three-dimensional space). The rays for each detected centre in the two-dimensional images are computed based on the calibration, and then those rays are matched in space for all three camera locations to create a volume of particles in real space. The matching algorithm employed was recently developed by Bourgoin & Huisman (Reference Bourgoin and Huisman2020). To create the largest convex hull possible which is dictated by the orientation of the cameras, matching of particle position based on the intercept of only two rays (i.e. two of the three cameras) is accepted. The possibility of overlapping of particles in one dimension, two matches per ray, is also admitted in this algorithm. However, this allows the inclusion of non-existent ghost particles. Fortunately, these ghost particles do not form persistent trajectories and therefore they are removed when the trajectories are formed in the next step. The tolerance to allow a match is $50\ \mathrm {\mu }$m (calibration accuracy of around $1\ \mathrm {\mu }$m).

2.3.3. Tracking

The stereoscopic reconstruction gives a cloud of points for every time step. The goal of the tracking is to transform this cloud into trajectories by following particles through time. To track the position of a considered particle as it moves among numerous other particles, the simplest algorithm is to consider the nearest neighbour: if one considers a particle in frame $n$, its position in frame $n+1$ is the nearest particle in frame $n+1$. But, for increased mass loading of particles, the trajectories are tangled, as observed in this study. Moreover, several points are ‘ghost’ particles and should not be tracked. Thus advanced predictive tracking methods are generally employed (Ouellette, Xu & Bodenschatz Reference Ouellette, Xu and Bodenschatz2006a). The trajectories are assumed to be relatively smooth and self-consistent, i.e. there are no severe variations in velocity and therefore past positions give accurate indications of future positions (Guezennec et al. Reference Guezennec, Brodkey, Trigui and Kent1994). If one considers a particle at frame $n$, its position in frame $n+1$ can be extrapolated and finally the nearest-neighbour approach is employed based on the extrapolated position. In the present study, the extrapolated position is determined by fitting the previous five positions from frame $n-4$ to $n$ with a simple linear relation (i.e. velocity), as indicated in figure 5. If there are fewer than five positions, the available positions are used. A maximum distance of 1 mm between extrapolated position and real position is applied to continue the trajectories in order to avoid the tracking of absurd trajectories. If the same particle is the nearest neighbour for two different tracks, the nearest trajectory is chosen and the other trajectory is stopped.

Figure 5. Predictive tracking schematic. The solid line signifies the real trajectory. The dotted line (linear fit of the positions from frame $n-4$ to $n$) indicates the position extrapolation.

2.4. Post-processing of the trajectories

The tracking of particles results in a set of trajectories for each of the 50 experimental runs. A minimum trajectory length of 10 frames is required to remove presumably false trajectories. Some real trajectories are also removed, but their statistical value is negligible. Finally, the coordinate basis is adapted by aligning the $z$ axis with the jet axis and centring it in $x$ and $y$ directions. Positions and velocities are computed in adapted cylindrical coordinates $(z,r,\theta )$ with $z$ the axial coordinate, $r$ the radial one and $\theta$ the circumferential one. A visualisation of tracks is shown in figure 6. It can be noted that most trajectories come from the nozzle (where they are injected) and very few come from the outside and are entrained in the jet (visible in figure 6 as radial trajectories towards the jet). The full dataset for the NF comprises $4.2\times 10^6$ trajectories longer than or equal to 10 frames, which corresponds to $1.0\times 10^8$ particle positions. For the FF, it is comprised of $6.1\times 10^6$ trajectories and $1.6\times 10^8$ particle positions. Lagrangian-based analysis, when the length of the trajectories becomes relevant, presents average trajectory lengths for the NF and FF locations of 59 and 68 frames, respectively. Extraction methods of these data are described in § 4.1.

Figure 6. Near-field jet: 95 055 trajectories longer than or equal to 10 frames (one colour per trajectory, one movie considered).

The trajectories reconstructed by the tracking algorithm always exhibit some level of noise due to errors eventually accumulated from particle detection, stereo-matching and tracking. It is important to properly handle noise, in particular when it comes to evaluating statistics associated with differentiated quantities (particle velocity and acceleration). Two techniques are implemented to do so. For all Eulerian statistical analysis requiring the estimate of local velocity, the trajectories are convolved with a first-order derivative Gaussian kernel with a length of 6 time instances and a width of 2 (ad hoc smoothing parameters) (Mordant, Crawford & Bodenschatz Reference Mordant, Crawford and Bodenschatz2004b). For all two-time Lagrangian statistical analysis (correlation and structure functions), an alternative noise reduction method, presented by Machicoane et al. (Reference Machicoane, Huck and Volk2017a,Reference Machicoane, López-Caballero, Bourgoin, Aliseda and Volkb) is implemented to obtain unbiased statistics based on an estimation from discrete temporal increments of position, without requiring explicit calculation of individual trajectory derivatives. For example, to compute the noiseless Lagrangian two-point correlation of velocity, $R^L_{\hat {u}\hat {u}}$, the first-order increments are considered as follows:

(2.1)\begin{equation} R^L_{\textrm{d} x\,\textrm{d} x}(\tau,\textrm{d} t) = R^L_{\hat{u}\hat{u}}(\tau)\,\textrm{d} t^2 + \langle \textrm{d} b\,(t+\tau)\,\textrm{d} b(t) \rangle + O(\textrm{d} t^3), \end{equation}

where ${\textrm {d}x}$ is the temporal increment of the signal $x$ over a time $\textrm {d} t$ with ${\textrm {d}x} = x(t+\textrm {d} t)-x(t) = \textrm {d}\hat {x}+\textrm {d} b$. The circumflex signifies the real (noiseless) signal and the noise is denoted as $b$ (assumed to be a white noise). From the presented relationship, the noiseless correlation function of velocity $R^L_{\hat {u}\hat {u}}(\tau )$ can be extracted from the correlation of measured position increments ${\textrm {d}x}$, exploring its polynomial dependency with $\textrm {d} t$ at the lowest (quadratic) order and neglecting higher-order terms (i.e. $O(\textrm {d} t^3)$), by applying a simple polynomial fit of $c_1 \,\textrm {d} t^2 + c_2$. This method, called the ‘$\textrm {d} t$-method’ in the following, allows the estimation, with increased accuracy and less sensitivity to noise, of statistics of differentiated quantities (and hence the exploration of small-scale mechanisms). Further, this is done without actually requiring estimation of derivatives, but by simply considering position increments at various temporal lags. More information is provided, including a validation study of synthetic data, in Machicoane et al. (Reference Machicoane, Huck and Volk2017a,Reference Machicoane, López-Caballero, Bourgoin, Aliseda and Volkb).

2.5. Stationarisation techniques

To address the Lagrangian instationarity (related to the Eulerian inhomogeneity) of the flow, methods are used according to the proposed self-similarity of a turbulent jet by Batchelor (Reference Batchelor1957), i.e. based on the transformation of the Lagrangian velocity and time scales of a particle at a given time $\tau$ after it has been released from a point source. Equation (1.2a,b) provides a relationship to achieve proper stationarisation. For this study, the fluctuating stationarised velocity is obtained by subtracting the local Eulerian velocity (and assuming cylindrical symmetry of the jet, hence neglecting the $\theta$ dependence on spatially averaged quantities), $\bar {u}^e_i(z,r)$, and scaling by the local standard deviation, $\sigma _{u_i}(z,r)$. Explicitly,

(2.2)\begin{equation} \tilde{u}_i(\tau) = \frac{u_i(\tau) - \bar{u}^e_i(\boldsymbol{x}(\tau))}{\sigma_{u_i}(\boldsymbol{x}(\tau))} = \frac{u_i(\tau) - \bar{u}^e_i(z,r)}{\sigma_{u_i}(z,r)}. \end{equation}

The local standard deviation is an optimal choice for compensation as it generalises the methods presented in Batchelor (Reference Batchelor1957), where a specific decay rate (Batchelor assumed a power law) is required for stationarisation. This velocity $\tilde {u}$ takes the mean drift and decay into account although the term becomes dimensionless as a result. For this reason, for all statistical calculations of dimensional quantities (such as the turbulent dissipation rate) inferred from this analysis, velocity is redimensionalised through multiplication with the average local standard deviation within the considered measurement region or location. For transparency, the Eulerian mean and standard deviation velocity fields used for the stationarisation are presented in figure 7 (figure 7a showing the mean velocity as a vector field and figure 7b the standard deviation of the axial and radial velocity components). The half-width of the jet, $r_{1/2}(z)$, where $\bar {u}^e_z(z,r=r_{1/2}(z)) = {{\textstyle \frac {1}{2}}} \bar {u}^e_z(z,r=0)$, is included in the Eulerian mean velocity field as the dashed line to provide clarity to the sampling methods based on this quantity, as discussed in §§ 3 and 4. Note that Lagrangian velocity components are used for the Eulerian statistical characterisation; therefore the stationarisation technique described is required for all analyses presented in the study. For clarity, herein the tilde is omitted and the compensated Lagrangian velocity is denoted as $u(\tau )$ for the remainder of the article.

Figure 7. (a) Vector field of the $\boldsymbol {\bar {u}^e}$ field for the normalised locations, including the half-width of the jet (dashed line, purple), $r_{1/2}$, at all downstream locations for the NF. (b) Contour representations of the local standard deviations $\sigma _{u_z}$ (left) and $\sigma _{u_r}$ (right) for the axial and radial velocity components for NF locations.

3. Eulerian velocity statistical analysis

This section aims to extract flow parameters such as length scales and energy dissipation rate from various Eulerian statistics: second-order structure functions and two-point correlation functions. The jet flow is inhomogeneous; therefore these quantities depend on $z$ and $r$. Focus is placed on centreline statistics for the Eulerian characterisation of the jet, limited to radial distances up to $r_{1/2}$ and consideration of only the $z$-axis evolution is used to characterise the main property of the base turbulence.

3.1. Eulerian second-order structure functions

Structure functions are commonly used to describe multiscale properties of turbulence through a statistical representation of a flow quantity with a given spatial or temporal separation. In the Eulerian perspective, longitudinal velocity structure functions of order $n$ are defined as

(3.1)\begin{equation} S^E_{n-{\parallel}}(\boldsymbol{x},\boldsymbol{{\rm \Delta} x}) = \langle [\delta u_\parallel(\boldsymbol{x},\boldsymbol{{\rm \Delta} x})]^n \rangle = \langle [u_\parallel(\boldsymbol{x}+\boldsymbol{{\rm \Delta} x}) - u_\parallel(\boldsymbol{x})]^n \rangle, \end{equation}

where $\delta u_\parallel$ is computed over two points, one at $\boldsymbol {x}$, the other at $\boldsymbol {x}+\boldsymbol {{\rm \Delta} x}$, with $u_\parallel$ defined as the single longitudinal component of Eulerian velocity along $\boldsymbol {{\rm \Delta} x}$. The $\langle \cdot \rangle$ denotes ensemble averaging.

In homogeneous isotropic stationary turbulence (HIST), Kolmogorov phenomenology K41 (Kolmogorov Reference Kolmogorov1941) predicts for the second-order structure function in the inertial range, scaling between the Kolmogorov scale $\eta$ and the integral length scale $L$, that

(3.2)\begin{equation} S^E_{2-{\parallel}}(\varDelta) = \langle [\delta u_\parallel(\boldsymbol{x},\varDelta)]^2 \rangle = C_2 \frac{(\varepsilon \varDelta )^{2/3}}{\sigma_{u_\parallel}^2}, \end{equation}

with $\varepsilon$ the average energy dissipation rate per unit mass and $C_2 \simeq 2.0$ (Pope Reference Pope2000). The $\sigma _{u_\parallel }^2$ denominator (the variance of longitudinal velocity component) has been added here in the right-hand term to account for the fact that the stationarised velocity according to transformations (2.2) is considered. Alternatively, the transverse structure function $S^E_{2-\perp }(\varDelta )$ can be considered where increments are taken for the velocity components perpendicular to the separation vector. In HIST, within the inertial range, $S^E_{2-\perp }(\varDelta )$ follows the same K41 scaling but with a constant $C_{2\perp } = \frac {4}{3} C_2$. Previous studies have found that these relations, a priori established for HIST, apply reasonably well to the inertial scales of turbulent jets, in spite of the large-scale inhomogeneity and anisotropy (e.g. Romano & Antonia Reference Romano and Antonia2001). In the sequel relation (3.2) is used together with the relation $C_{2\perp }=\frac {4}{3}C_2$ to analyse longitudinal and transverse structure functions in the jet.

Within the jet (cylindrical coordinates), the longitudinal second-order structure function is usually estimated, near the centreline, based on the axial component of the velocity:

(3.3)\begin{equation} S^E_{2-z,\parallel}(z,\delta z) = \langle [u_z(z+\delta z,r) - u_z(z,r)]^2 \rangle, \end{equation}

with $u_z$ the fluctuating axial velocity (recall that the stationarisation described in § 2.5 is applied) and $\delta z$ the axial distance between the two considered points (the explicit $z$ dependency is kept here to emphasise the streamwise inhomogeneity of the jet centreline statistics). This is, for instance, the quantity typically measured when using hot-wire anemometry (sensitive to the streamwise velocity component) combined with the Taylor frozen field hypothesis.

To explore the streamwise evolution of Eulerian properties of the jet, a set of data (particle velocities) is considered for a given $z$ position, which falls within a short cylinder (disk), $\mathcal {D}_z$, of limited height ($0.5\ \textrm {mm}$ in the $z$ direction) and a radius of $r_{1/2}(z)$ for statistical analysis. The disk radius is chosen to include sufficient particles for statistical convergence but, in being limited to the half-width, the volume does not encompass particles from the turbulent/non-turbulent interface. This gives a canonical description of turbulent properties representative of the centreline of the jet. Consideration of statistics in a thin disk allows the more detailed exploration of $z$ dependence of statistical quantities; however, this sampling technique forbids exploration of $\delta z$ values over a range relevant to estimate $S^E_{2-z,\parallel }(z,\delta z)$ at inertial scales. To overcome this issue, two strategies are considered. (i) Still based on the axial $z$ component of the velocity, $S^E_{2-z,\perp }(z,\delta r)$, the transverse structure function of $u_z$ (with the separation vector $\boldsymbol {\delta r}$ taken within the plane of the disk) is estimated in lieu of $S^E_{2-z,\parallel }(z,\delta z)$. (ii) For radial velocities, the longitudinal structure function is considered through use of the velocity components perpendicular to the $z$ axis (i.e. within the sampling disk $\mathcal {D}_z$), projected onto the increment vector $\boldsymbol {\delta r}$ within the disk $\mathcal {D}_z$. This is denoted as $S^E_{2-r\theta ,\parallel }(z,\delta r)$ (where the subscript $r\theta$ recalls that only velocity components perpendicular to $z$ are considered). For any redimensionalisation of a Eulerian quantity, the averaged standard deviation within a respective disk, $\langle \sigma _{u_i} \rangle _{\mathcal {D}_z}$, is employed. For brevity this is herein denoted as $\sigma _{u_i}$ for all Eulerian calculations.

The discussions of this subsection (and in the two following) illustrate the extraction of the main Eulerian turbulent properties (and of their streamwise evolution) based on $S^E_{2-z,\perp }(z,\delta r)$. The same analysis was also repeated based on $S^E_{2-r\theta ,\parallel }(z,\delta r)$, the details of which are not provided for brevity. Analysis follows the same recipe as is described for $S^E_{2-z,\perp }(\delta r)$, and the main turbulent parameters extracted from these two estimates are discussed and compared in § 3.3.

The transverse structure function based on $u_z$ at a given $z$ position is estimated as

(3.4)\begin{equation} S^E_{2-z,\perp}(z,\delta r) = \langle [u_z(\boldsymbol{r}+\boldsymbol{\delta r}) - u_z(\boldsymbol{r})]^2 \rangle_{\mathcal{D}_z}, \end{equation}

where the average is taken over a pair of particles within the disk $\mathcal {D}_z$ separated by a vector $\boldsymbol {\delta r}$. Note that, given the reduced height of the disk (not exceeding two particle diameters), $\boldsymbol {\delta r}$ is within an acceptable approximation perpendicular to the $z$ axis, ensuring that (3.4) indeed corresponds to a transverse structure function (except maybe for the smallest separations, comparable to the disk height).

The structure function $S^E_{2-z,\perp }(z,\delta r)$ is computed for different $z$ positions (in the NF and FF of the jet) and shown in figure 8(a). As explained in § 2.5, while the stationarised (hence dimensionless) velocity is used for all estimates, $S^E_{2-z,\perp }$ is made dimensional by multiplying it by the square of $\sigma _{u_z}$, the standard deviation of $u_z$ within $\mathcal {D}_z$ (see table 1). This redimensionalisation is required in order to extract the dimensional value of $\varepsilon$, and the associated derived parameters (in particular the dissipation scales and Taylor microscale). To this end, figure 8(b) includes the compensated structure function $(S^E_{2-z,\perp }(z,\delta r)\sigma _{u_z}^2/\frac {4}{3}C_2)^{3/2}/\delta r$ (measurements by Romano & Antonia (Reference Romano and Antonia2001) suggest that in spite of the large-scale anisotropy, the isotropic relation $C_{2\perp } = \frac {4}{3}C_2$ applies reasonably well for the inertial-scale dynamics of the jet). Well-defined plateaus, corresponding to inertial-range dynamics, are observed from which the dissipation rate $\varepsilon _z$ can be extracted according to (3.2). The subscript $z$ in $\varepsilon _z$ simply refers to the fact that this estimate is based on the axial component of the velocity. It will be compared later with $\varepsilon _{r\theta }$, the estimate from $S^E_{2-r\theta ,\parallel }$. It can be seen that, as the location downstream increases, the plateau of the second-order structure function (and hence $\varepsilon _z$) decreases, due to the streamwise decay of turbulence along the jet.

Figure 8. Eulerian second-order structure functions of the axial velocity on the axis, (a) uncompensated $S^E_{2-z,\perp }(z,\delta r)\sigma _{u_z}^2$ and (b) compensated $(S^E_{2-z,\perp }(z,\delta r)\sigma _{u_z}^2/\frac {4}{3}C_2)^{3/2}/\delta r$ (the solid lines are the plateaus to extract $\varepsilon _z$), for the four denoted downstream locations.

Table 1. Eulerian parameters of the jet on the axis for various $z/D$ positions.

It is noted that small scales (typically for $\delta r < 10^{-3}\ \textrm {m}$) are not statistically well converged. This is due to the lack of statistics for pairs of particles with very small separation due to the moderate seeding of particles used for the Lagrangian tracking. Furthermore, the noise at small scales, $\delta r \sim 1.5\times 10^{-3}\ \textrm {m}$, could also be due to the use of the total distance for the separation vector. This artefact is most easily observed in the farthest downstream locations.

3.2. Eulerian two-point correlation functions

The second-order Eulerian statistics shown in the previous section from the structure functions can be equivalently investigated in terms of the two-point correlation function. The correlation of axial velocity can indeed be obtained via the non-dimensional second-order structure function, $R^E_{uu-z,\perp }(z,\delta r) = 1 - S^E_{2-z,\perp }(z,\delta r)/2$, to depict the evolution of the velocity interactions through space. The results from the NF and FF are presented in figure 9. The curves are ordered depending on their downstream location $z$. The location nearest the jet exit, $z/D = 15$, exhibits a rapid decorrelation. As the flow advances downstream, the turbulent length scales grow, resulting in a dynamics which remains correlated over longer distances, as seen by the $z/D = 45$ profile. This trend can be investigated quantitatively using the Eulerian correlation length (or Eulerian integral scale) $L_{E_{z,\perp }}(z) = \int _0^\infty R^E_{uu-z,\perp }(z,\delta r) \,\mathrm {d}\delta r$. Recall that transverse and longitudinal correlation lengths are kinematically related in HIST by $L_{E_{z,\parallel }} = 2 L_{E_{z,\perp }}$ (Pope Reference Pope2000). Since most studies in the literature refer to the longitudinal length, the present study will then consider $L_{E_z}(z) = 2 \int _0^\infty R^E_{uu-z,\perp }(z,\delta r) \,\mathrm {d}\delta r$, avoiding the $\perp$ or $\parallel$ subscripts. However, it is noted that measurements by Burattini, Antonia & Danaila (Reference Burattini, Antonia and Danaila2005) suggest that the ratio may actually be slightly lower than 2, and closer to 1.8 in free shearing jets due to large-scale anisotropy.

Figure 9. Normalised two-point spatial correlation of the Eulerian axial velocity on the axis, $R^E_{uu-z,\perp }(z,\delta r) = 1 - S^E_{2-z,\perp }(z,\delta r)/2$.

3.3. Evolution of Eulerian parameters

The evolution of $\varepsilon _z$, estimated from the plateaus of the compensated second-order structure functions (figure 8b), is represented in figure 10. There exists a tendency of $1/z^4$ (more clearly visible in figure 11c), as expected for canonical self-similar jets. The observed consistency in the values and shape of the profiles between the NF and FF experimental locations validates the presented $\varepsilon _z$ values from the independent measurements carried over the overlapping region.

Figure 10. Evolution of $\varepsilon _z$ along the jet axis.

Figure 11. (a) The standard deviation averaged within the disk $\mathcal {D}_z$, (b) the dissipation rate and (c) the integral length scale for the axial component of velocity for all downstream locations. Power-law relations are given as dashed lines.

From the dissipation rate $\varepsilon _z$, other relevant parameters of the flow field can be extracted, namely the Kolmogorov time scale $\tau _{\eta _z} = (\nu /\varepsilon _z)^{1/2}$ and length scale $\eta _z = (\nu ^3/\varepsilon _z)^{1/4}$, as well as the Taylor microscale $\lambda _z = (15\nu \sigma _{u_z}^2/\varepsilon _z)^{1/2}$ and the Taylor-based Reynolds number ${\textit {Re}}_\lambda = \sigma _{u_z}\lambda _z/\nu$, both of which assume HIST. Further, large length and time scales are obtained from the two-point correlation profiles in figure 9. For a more accurate estimate of the correlation length $L_{E_z}(z) = 2 \int _0^\infty R^E_{uu-z,\perp }(z,\delta r) \,\mathrm {d}\delta r$, the integral of the correlation functions is based on a fit of the curves shown in figure 9 using a Batchelor-type parametrisation (Lohse & Müller-Groeling Reference Lohse and Müller-Groeling1995). Recall that the factor 2 is the HIST correction that relates the transverse correlation (given by the integral of $R^E_{uu-z,\perp }$) to the longitudinal one. The calculated $L_{E_z}$ is therefore interpreted as the longitudinal integral scale associated with the $z$ component of velocity. The integral time scale is then computed as $T_{E_z}=L_{E_z}/\sigma _{u_z}$. All relevant quantities of the jet for the considered streamwise locations are collected in table 1. The streamwise evolution for the velocity standard deviation, dissipation rate and integral scale are also shown in figure 11, where the well-known self-similar power-law profiles can be seen. Comparisons with known self-similar quantities, namely the centreline decay $B = 5.87$ and the spreading rate $S =0.099$, compare well with values presented in Pope (Reference Pope2000).

This brief characterisation of basic Eulerian properties is concluded by reporting the similarly employed analysis performed for $S^E_{2-r\theta ,\parallel }(z,\delta r)$ (where rather than $u_z$, components of velocity perpendicular to the $z$ direction are considered). This leads to estimates of the dissipation rate $\varepsilon _{r\theta }$ (and derived quantities) and of the integral length scale and time scale, $L_{E_{r\theta }}$ and $T_{E_{r\theta }}$. Results are included in table 1. The dissipation rate for the radial velocity is lower than that for the axial component near the exit of the jet, but declines more slowly as the jet develops, resulting in similar values for $\varepsilon _{r\theta }$ and $\varepsilon _z$ at $z/D > 25$. As a result, in this region dissipation scales are found almost identical with both estimates. This supports the idea that small and inertial scales are nearly isotropic. The large scales show, however, a certain degree of anisotropy, in particular regarding the integral length scale and to a lesser degree the integral time scale which are found larger for the $z$ component than for the $r\theta$ components.

4. Lagrangian velocity statistical analysis

In this section, the Lagrangian statistics of the jet dynamics are investigated with a particular focus on second-order statistics (namely velocity second-order structure function and two-point correlation function), which are key ingredients for modelling turbulent diffusion, as discussed in the introduction. In particular, the relevance of Batchelor's Lagrangian self-similar stationarisation idea is further assessed.

4.1. Lagrangian second-order structure functions

The application of the known Kolmogorov K41 phenomenology for HIST, generally applied to Eulerian inertial scaling, can be extended to the Lagrangian framework (Toschi & Bodenschatz Reference Toschi and Bodenschatz2009), where dynamics is investigated as a function of temporal increments along particle trajectories (see figure 12). Namely, for the second-order Lagrangian structure function, this reads (for the stationarised velocity defined by relation (2.2))

(4.1)\begin{equation} S^L_{2,i}(\tau) = \langle [u_i(t+\tau) - u_i(t)]^2 \rangle = C_{0_i} \frac{\varepsilon_i \tau}{\sigma_{u_i}^2}, \end{equation}

within the the inertial range ($\tau _\eta \ll \tau \ll T_L$), where $i$ is a velocity component ($i=x$, $y$ or $z$; by symmetry, statistics along $x$ and $y$ are identical and equivalent to statistics of the radial $r$ component of velocity) and $T_L$ is the Lagrangian integral time scale, which is expected to be related to the Eulerian integral time (this point is discussed in greater depth later). Note that while for the Eulerian structure functions, spatial velocity increments were computed between pairs of particles and then averaged, now, for Lagrangian analysis, temporal velocity increments are computed on each individual trajectory before being averaged. In this study, the nature of this scaling is revisited as well as the value of the constant $C_0$ when the stationarised velocity presented in § 2.5 is considered. In order to address the role of jet anisotropy (in particular regarding the value of $C_{0_z}$ and $C_{0_r}$), the statistics for the axial and radial components of velocity are considered separately. Recall also that in lieu of Gaussian filtering previously applied to the Eulerian structure functions, the $\textrm {d} t$-method presented in § 2.4 is implemented, which has been shown to better handle noise issues for Lagrangian velocity statistics estimates (Machicoane et al. Reference Machicoane, Huck and Volk2017a).

Figure 12. Schematic of the Lagrangian velocity increment in a Cartesian coordinate system for a given time lag $\tau$.

Figure 13(a) presents the corresponding curves for $S^L_{2,z}(\tau )$ at the four different downstream locations. For each location $z$, the ensemble selected for the Lagrangian statistics consists of each trajectory, in its entirety (for long time lag convergences), which passes through a small sphere $\mathcal {S}_z$ centred at downstream position $z$ along the jet centreline, with a radius of $r_{1/2}(z)/3$. A minimum trajectory length of 30 frames is enforced. This volume allows sufficient particles for convergence of statistics yet does not overlap in the axial direction as the half-width increases. Similar to methods presented in the Eulerian framework, the averaged standard deviation from within each respective sphere $\langle \sigma _{u_i} \rangle _{\mathcal {S}_z}$ is used for redimensionalisation of Lagrangian quantities when necessary (for calculation of $C_0$) and denoted simply as $\sigma _{u_i}$. All curves exhibit a transition from a dissipative behaviour at small time lags (where $S^L_{2,z} \propto \tau ^2$) to the inertial range (where $S^L_{2,z} \propto \tau$). The main figure shows the structure function in stationarised variables, while the inset provides the same data but non-stationarised. Several interesting points emerge.

  1. (a) Effect of stationarisation at inertial scales. The non-stationarised statistics (inset of figure 13a) are widely spread while the stationarised statistics (main figure) collapse reasonably well, in particular in the FF ($z/D > 25$). Similarity between the curves is improved for the inertial-range dynamics (which presents similar trends even at distances $z/D >rsim 20$), but is less adequate for the small-scale dissipative dynamics, for which the collapse becomes reasonable only at far-downstream locations ($z/D > 35$). This suggests that the stationarisation procedure is efficient for retrieving self-similar inertial-range Lagrangian statistics in the FF (in Batchelor's sense, meaning that Lagrangian statistics become independent of the downstream position as particles travel along the jet), while discrepancies remain in the small scales until the very FF.

  2. (b) Small-scale dynamics discrepancies. In the Lagrangian framework, the small-scale dynamics of structure functions is associated with particle acceleration statistics. Figure 13(a) therefore suggests that stationarised acceleration statistics eventually fall in line, but only in the very FF (curves at $z/D = 40$ and 45 almost perfectly collapse). As discussed in § 5, acceleration statistics are strongly affected by the finite size of the particles, which in our study remains much larger than the dissipation scale of the flow ($d_p/\eta = 25$ at $z/D = 15$ and 9 at $z/D = 45$). Although further investigation focusing specifically on the small-scale dynamics would be required (which is not in the scope of the present article, mostly motivated by applications to diffusion which is primarily driven by inertial- and large-scale behaviour), it is probable that the observed discrepancy at small scales reflects these finite size effects. This is supported by the fact that as considered positions are farther downstream (where $d_p/\eta$ gets smaller and hence finite particle size effects disappear), the stationarised acceleration dynamics seems to better converge to a single curve. Acceleration statistics and finite size effects are further discussed in § 5.

  3. (c) Large-scale dynamics. By construction, the second-order structure function of the stationarised velocity should reach, in large scales, an asymptotic constant value of 2 as the Lagrangian dynamics becomes fully decorrelated. This asymptotic regime is not reached in our data, where $S^L_2$ reaches at best values of order 1, without exhibiting an asymptotic decorrelated plateau. This is due to the lack of statistics for long trajectories. One of the well-known difficulties of Lagrangian diagnosis is indeed the capacity to obtain sufficiently long trajectories allowing exploration of the large-scale dynamics. In the present study, most trajectories are efficiently tracked over a few tens of frames at most (very few are over hundreds of frames). At the operating repetition rate of 6000 frames per second, this corresponds to trajectories at most $10\ \textrm {ms}$ long, which represents (according to table 1) a few Eulerian integral time scales in the NF, and only a fraction of this integral scale in the FF, where only a part of the inertial-range dynamics is accessible. In § 4.2, it is demonstrated that large-scale behaviour (and the effect of stationarisation on it) can still be addressed by estimating the Lagrangian correlation time scales.

  4. (d) Estimate of $C_0$ constant. Figure 13(b) shows the compensated structure functions $S^L_{2,z}(\tau )\sigma _{u_z}^2/(\tau \varepsilon _z)$ built with $\varepsilon _z$ values found in the Eulerian analysis (for consistency regarding possible anisotropy effects, the estimate of dissipation rate based on Eulerian statistics of corresponding components is used). Based on relation (4.1), within the inertial range the value of $C_{0_z}$ can be extracted from the plateau of the curves. The value of the plateau is observed to saturate, as considered positions reach farther towards the FF, at a value of $C_{0_z} \simeq 3.2$. The downstream evolution of $C_{0_z}$ is further discussed in the ensuing sections.

Figure 13. Lagrangian second-order structure functions of the axial velocity on the axis, estimated at four downstream locations ($z/D = 15$, 25, 35 and 45). (a) Non-dimensional $S^L_{2,z}(\tau )$ as a function of the non-dimensional time $\tau /T_{E_z}$ (inset: dimensional $S^L_{2,z}(\tau )\sigma _{u_z}^2$ as a function of time $\tau$) and (b) compensated $S^L_{2,z}(\tau )\sigma _{u_z}^2/(\tau \varepsilon _z)$, for the denoted downstream locations. The universal scaling constant $C_{0_z}$ can be extracted from the plateau of the compensated structure functions.

All observations also apply to estimates of $S^L_{2,r}$, based on the radial component of velocity. Quantitative comparison of the downstream evolution of $C_{0_z}$ and $C_{0_r}$ is detailed in § 4.3.

4.2. Lagrangian two-point correlation functions

The two-point correlation functions of the Lagrangian axial velocity as a function of the compensated time lag $\tau /T_{E_z}$ are presented in figure 14(a) where $R^L_{uu-z}(\tau ) = \langle u_z(t+\tau ) u_z(t) \rangle$. It can be seen that, as for the structure functions previously discussed, the stationarisation results in a remarkable collapse of the correlation functions, in particular at $z/D > 20$. Note that the small-scale discrepancy observed for $S^L_{2,z}$ is also expected to be present for the correlation function, which carries essentially the same information; it is, however, less emphasised due to the linear (rather than logarithmic) scale used to represent the correlation function. The observed agreement between the two-point correlation functions confirms again the Lagrangian self-similarity hypothesis at inertial scales, resulting in two-point correlation functions of the stationarised variables which do not depend on the downstream position of the particles as they evolve along the jet (beyond $z/D >rsim 20$).

Figure 14. Normalised Lagrangian correlation of the axial velocity for the compensated time lag $\tau /T_{E_z}$. Insets provide the Lagrangian correlation as a function of the dimensional time lag $\tau$ for the same seven downstream locations previously considered. Locations are (a) along the centreline ($r=0$) and (b) at the jet half-width ($r=r_{1/2}$) for all downstream positions.

Although the shortness of the trajectories does not allow direct exploration of the large-scale, fully decorrelated, regime (where $R_{uu,i}$ vanishes), the observed collapse at intermediate scales allows speculation that the self-similarity hypothesis may also extend to the large scales. This would lead, in particular, to a univocal relation between the Lagrangian correlation time (defined as $T_{L_i} = \int _0^\infty R^L_{uu,i}(\tau ) \,\mathrm {d}\tau$) and the Eulerian time scale at all positions along the jet (except in the very NF, where Lagrangian two-point correlation clearly deviates). This point is further tested in § 4.3 where we estimate $T_L$ based on appropriate fits (exponential or double exponential; Sawford Reference Sawford1991) of the Lagrangian two-point correlation, supporting the validity of self-similarity in the large scales and the univocal link between $T_L$ and $T_E$.

The subsection is concluded by providing, in figure 14(b), a test of the Lagrangian self-similarity hypothesis when off-axis dynamics is considered. The original stationarisation proposed by Batchelor (Reference Batchelor1957) used centreline power laws for a self-similar jet to compensate the Lagrangian velocity and time. As discussed in § 2.5, these formulas have been generalised (compatible with Batchelor's approach in the centreline) using actual local measurements of Eulerian properties rather than prescribed centreline power laws. The stationarisation transformations can therefore be applied at any arbitrary position along particle trajectories. Figure 14(b) explores the application of the proposed stationarisation considering trajectories passing through a ball centred off-axis, at a radial location of $r = r_{1/2}(z)$, instead of $r = 0$. As for the centreline analysis, the correlation functions of the stationarised variables collapse for all locations $z/D > 20$. This substantiates the generalised stationarisation technique, and its application to locations beyond the centreline. Although the present study focuses on diffusion of particles near the jet centreline, this result motivates future dedicated studies to explore more deeply the generalised Lagrangian stationarisation for off-axis statistics as well as for other inhomogeneous flows (such as von Kármán flows, which are widely used for Lagrangian studies of turbulence).

4.3. Evolution of Lagrangian parameters

This subsection provides estimates of $C_0$ and $T_L$, their streamwise evolution along the jet centreline, their connection to Eulerian properties of the jet and the reliability of Lagrangian stochastic models derived for HIST (Sawford Reference Sawford1991) to address the stationarised Lagrangian dynamics of the jet. Investigations are made into these quantities for both axial and radial components of the velocity.

Table 2 presents these Lagrangian parameters of the jet for various $z$ locations in the NF and FF. The scaling constant $C_{0_z}$ is observed in the compensated Lagrangian structure functions (figure 13b). The Lagrangian integral time scale $T_{L_z}$ is estimated based on an exponential fit of the velocity correlation curves, due to the lack of experimental data for large time lags (figure 14a). Lagrangian correlation functions are indeed known (at least in HIST) to be well fitted by double-exponential functions, and even simple exponential functions at sufficiently large Reynolds number, if the focus is on the estimate of inertial- and large-scale behaviour (Sawford Reference Sawford1991). In the present case, the fit by a simple exponential ($\textrm {e}^{-\tau /T_{L_z}}$) leads to very similar estimates of $T_{L_z}$ compared with a more sophisticated double-exponential fit. Corresponding radial quantities are extracted in the same way by considering $S^L_{2-r}(\tau )$ and $R^L_{uu-r}(\tau )$.

Table 2. Lagrangian parameters of the jet on the axis for various $z/D$ positions.

Constant $C_{0_z}$ is found to converge to a constant value $C_{0_z} \simeq 3.2$ at $z/D > 30$. This is more easily observed in figure 15 which provides the evolution of the Lagrangian parameters as a function of the downstream position $z$. The asymptotic FF value of $C_{0_z}$ can be compared with values reported in the literature for $C_0$. A relationship presented by Lien & D'Asaro (Reference Lien and D'Asaro2002) accounting for finite-Reynolds-number effects on $C_0$ suggests an altered $C_0^*({\textit {Re}}_\lambda ) = C^\infty _0 [1-(0.1{\textit {Re}}_\lambda )^{-1/2}]$, where, according to Sawford (Reference Sawford1991), $C^\infty _0 \simeq 7.0$. This gives an estimated $C_0^*$ of 5.6 for the Reynolds number corresponding to the present study as a benchmark value. As previously mentioned, discrepancies of this parameter exist between numerous studies. For example, a value of $C_0^*$ of 4.8 was extracted for direct numerical simulation data with ${\textit {Re}}_\lambda = 240$ by Sawford & Yeung (Reference Sawford and Yeung2001), while experimental data taken between two counter-rotating disks at ${\textit {Re}}_\lambda = 740$ produced a value of $C_0^*$ of 2.9 (Mordant et al. Reference Mordant, Metz, Michel and Pinton2001). Ouellette et al. (Reference Ouellette, Xu and Bodenschatz2006a) found in a similar flow at ${\textit {Re}}_\lambda \simeq 200$ an anisotropic behaviour, with $C_0^* \simeq 3.5$ for the velocity component aligned with the axis of rotation of the disks and $C_0^* \simeq 5.5$ for the transverse components. It is therefore difficult to be fully conclusive regarding the expected value of $C_0$ in this case, as it appears to be non-universal and not only dependent on the Reynolds number, but for a given Reynolds number to also depend on specific geometrical properties of the considered flow. It is observed, however, that the measured value of $C_{0_z}$ in the jet is in the same range of magnitude as other studies in different flows at similar Reynolds number. With regard to anisotropy, table 2 and figure 15 suggest that $C_{0_z}$ and $C_{0_r}$ behave almost identically along the jet, $C_{0_z}$ converging to a value of 3.0 and $C_{0_r}$ to a value of 2.8. This indicates, on the one hand, that Lagrangian dynamics exhibits a level of isotropy and, on the other hand, that at a specific location downstream, $C_0$ becomes independent of axial location and hence supports the idea that inertial Lagrangian statistics reach self-similarity.

Figure 15. Evolution of the scaling constant $C_0$ (left-hand axis) and the ratio of the integral time scales $T_E/T_L$ (right-hand axis) as a function of downstream location within the jet centre. The axial (solid) and radial (dot-dashed) components are both presented.

Regarding the Lagrangian correlation time scale, both $T_{L_z}$ and $T_{L_r}$ increase with increasing axial distance, with $T_{L_z}$ being, however, significantly larger (about double) than $T_{L_r}$ (see table 2). Large-scale Lagrangian dynamics therefore exhibits a persistent anisotropy, somehow more pronounced than the anisotropy previously reported for the Eulerian integral time scales (see for instance $T_{E_z}$ and $T_{E_{r\theta }}$ in table 1). To further compare Lagrangian and Eulerian large-scale properties, the ratios of the Eulerian to Lagrangian integral time scales for both the axial and the radial components of velocity are provided in table 2 and figure 15. For all locations, the Eulerian to Lagrangian time-scale ratio for the radial component is notably larger (about double) than that for the axial component. The axial component trends are consistent with similar results reported by Gervais et al. (Reference Gervais, Baudet and Gagne2007), wherein $T_{E_z}/T_{L_z}$ was found to be less than 1 in the NF, and to evolve towards a value greater than 1 (between 1.3 and 1.8) as the jet develops. Interestingly, in the well-developed region, the Lagrangian dynamics decorrelates significantly faster compared with the Eulerian dynamics, as originally intuited by Kraichnan (Reference Kraichnan1964). This relation between Eulerian and Lagrangian time scales has been examined numerically by Yeung (Reference Yeung2002) where a ratio of $T_E/T_L = 1.28$ was found for HIST. This value is slightly lower than the value found in the present experiments, but is still consistent with the Lagrangian dynamics decorrelating faster than the Eulerian dynamics.

Since the study of Kraichnan (Reference Kraichnan1964) who suggested that $T_E/T_L > 1$, a similar prediction has been made by Sawford (Reference Sawford1991) based on simple Lagrangian stochastic modelling. In this approach, Eulerian and Lagrangian time scales can be simply related to each other via the scaling constant $C_0$:

(4.2)\begin{equation} T_E/T_L = C_0/2. \end{equation}

As observed in figure 15, this relation is tested against the experimental results for the axial and radial velocity components. Note that the limits of the right-hand axis for $T_E/T_L$ are half the limit of the left-hand axis for $C_0$; therefore if $T_E/T_L = C_0/2$ holds, the curves for $T_E/T_L$ and for $C_0$ shall superimpose. For the axial component, the agreement is almost perfect at all locations, including in the NF. This is not observed for the radial component; while the two curves exhibit proportionality, the ratio of time scales is nearly equal to the scaling constant $C_0$ at all presented locations.

5. Lagrangian acceleration statistical analysis

This section explores the statistics of the Lagrangian acceleration, to further elucidate small-scale dynamics and its evolution along the jet. Particularly, the role of finite particle size effects (which evolve along the jet, and therefore may be to blame for preventing self-similarity from being recovered until the very FF, as discussed in § 4.1) and the associated dimensionless constant $a_0$ (appearing in the Heisenberg–Yaglom relation; Monin & Yaglom Reference Monin and Yaglom1975) are addressed. At the same time, investigation into the connection between Eulerian and Lagrangian dissipative time scales can be carried out to further probe the applicability of stochastic models. All analysis is performed on trajectories that pass through a sphere of radius $r_{1/2}(z)/3$, as was done for the Lagrangian velocity analysis. Only the axial component of velocity is considered for the acceleration discussion (the radial component gives almost identical conclusions).

5.1. Acceleration variance

The variance of acceleration components is traditionally characterised by the scaling constant $a_0$ through the Heisenberg–Yaglom relation (Monin & Yaglom Reference Monin and Yaglom1975):

(5.1)\begin{equation} \langle a_z^2 \rangle = a_0 \nu^{{-}1/2} \varepsilon^{3/2}, \end{equation}

where $\nu$ is the fluid viscosity and $\varepsilon$ is the dissipation rate. The acceleration variance is taken directly from the trajectories with the $\textrm {d} t$-method implemented to find the noiseless values of $\langle a_z^2 \rangle$ (Machicoane et al. Reference Machicoane, Huck and Volk2017a). This is done for different $z$ positions along the jet. Parameter $a_0$ is then deduced at the different positions as $\langle a_z^2\rangle \nu ^{1/2}\varepsilon _z^{-3/2}$, where $\varepsilon _z$ is the estimate of the dissipation rate at the considered position, based on the considered acceleration component.

Acceleration variance, and therefore the dimensionless constant $a_0$, is known to be highly sensitive to finite particle size effects and to converge to the value expected for actual tracers only when the normalised particle diameter $d_p/\eta \lesssim 5$ (Voth et al. Reference Voth, La Porta, Crawford, Alexander and Bodenschatz2002; Qureshi et al. Reference Qureshi, Bourgoin, Baudet, Cartellier and Gagne2007; Calzavarini et al. Reference Calzavarini, Volk, Bourgoin, Lévêque, Pinton and Toschi2009; Volk et al. Reference Volk, Calzavarini, Lévêque and Pinton2011), where $\eta$ is the Kolmogorov length scale (see table 1). In the present study, the ratio $d_p/\eta$ varies typically between 9 and 25 depending on the distance to the nozzle. Therefore, the constant $a_0$, as a function of the normalised particle size $d_p/\eta$ (bottom axis) and of the downstream normalised location $z/D$ (top axis), is provided in figure 16. Included is a power-law fit of $-$1.75 and a red dashed line of the expected value (from numerical simulations of HIST), $a_0^{theory} \simeq 4.2$, calculated from Sawford (Reference Sawford1991). The power-law fit of $-$1.75 provides the expected $a_0^{tracer}$ value of a true tracer through extrapolating the trend as $d_p/\eta \rightarrow 5$, from which a value of $a_0^{tracer} \simeq 3.0$ is found, in reasonable agreement with values reported in previous experimental studies of von Kármán flows (Voth et al. Reference Voth, La Porta, Crawford, Alexander and Bodenschatz2002) and numerical simulations in HIST (Sawford Reference Sawford1991; Vedula & Yeung Reference Vedula and Yeung1999) for similar Reynolds number. Furthermore, the power-law fit intersects with the theoretical value of $a_0^{theory}$ at $d_p/\eta \lesssim 5$, which is generally considered as the diameter for which finite size effects become noticeable. These observations suggest that acceleration statistics in the jet should eventually behave for tracers as in HIST, without a major influence of large-scale inhomogeneity of the jet. With the present considered particles (with $d_p \simeq 250\ \mathrm {\mu }$m) the tracer behaviour is expected to be reached at a downstream distance $z/D \simeq 65$, which is out of reach of the present dataset. To go into this question in more depth, it would be interesting to perform further experiments specifically dedicated to acceleration measurements, by considering either smaller particles or further downstream distances.

Figure 16. Evolution of the scaling constant of acceleration $a_0$ along the centreline as a function of the finite particle size $d_p/\eta$.

Regarding finite size effects, previous studies have reported in HIST a power-law dependency of $a_0$ on particle size, with $a_0 \propto (d_p/\eta )^{-2/3}$ (Qureshi et al. Reference Qureshi, Bourgoin, Baudet, Cartellier and Gagne2007; Brown, Warhaft & Voth Reference Brown, Warhaft and Voth2009), while a study by Volk et al. (Reference Volk, Calzavarini, Lévêque and Pinton2011) of von Kármán dynamics reported a slightly steeper decay with an exponent $-0.81$. In the present study, an even steeper decrease of constant $a_0$ is observed with particle size, with an exponent $-1.75$, about double the values reported previously. This stronger dependence of $a_0$ on particle size remains to be elucidated. It is likely due to a coupling between the finite size effects and the streamwise dependence of turbulent properties in the jet, although further investigation would be necessary to further explore this point.

5.2. Acceleration two-point correlation

Beyond the value of $a_0$, acceleration statistics are also of great interest as they reflect the Lagrangian dissipative dynamics of the particles. In particular, they give access to the dissipative time scale of the Lagrangian dynamics, traditionally defined based on $\tau _0$, the zero-crossing time of the acceleration two-point correlation function $R_{aa,z}(\tau ) = \langle a_z(t+\tau ) a_z(t) \rangle$ with $R_{aa,z}(\tau _0) = 0$. Acceleration two-point correlation is estimated with a variant of the $\textrm {d} t$-method (Machicoane et al. Reference Machicoane, Huck and Volk2017a). Briefly, the acceleration two-point correlation is obtained from second-order position increments $\textrm {d}^2x$ according to the relation

(5.2)\begin{equation} R_{\textrm{d}^2x\,\textrm{d}^2x}(\tau,\textrm{d} t) = R_{\hat{a}\hat{a}}(\tau) \,\textrm{d} t^4 +R_{\textrm{d}^2b\,\textrm{d}^2b}(\tau,\textrm{d} t) + O (\textrm{d} t^6), \end{equation}

where $R_{\textrm {d}^2b\,\textrm {d}^2b}$ represents the contribution of noise. A polynomial fit of $\textrm {d} t^4$ is implemented to extract the true correlation values of $R_{\hat {a}\hat {a}}$, eliminating the noise contribution. This method is extended, herein, to more accurately describe the correlation of acceleration of the given dataset.

The two-point correlation of acceleration is presented in figure 17 for four downstream locations along the centreline, where the time lag has been normalised by $\tau _\eta$. It has been noted in previous studies that for tracers $\tau _0 \simeq 2.2\tau _\eta$ (Yeung & Pope Reference Yeung and Pope1989; Volk et al. Reference Volk, Calzavarini, Verhille, Lohse, Mordant, Pinton and Toschi2008; Calzavarini et al. Reference Calzavarini, Volk, Bourgoin, Lévêque, Pinton and Toschi2009). For the current study, the the zero-crossing time is not unequivocally close to $\tau _{\eta }$ and therefore the ratio $\tau _0/\tau _\eta$ depends on the location of the measurement. The expected value of 2 is only approached in the farthest downstream locations within the jet. The solid line in figure 18 shows the downstream evolution of the zero-crossing time $\tau _0$. As for $a_0$ the observed streamwise dependency of $\tau _0/\tau _\eta$ is likely due to finite size effects, which have been reported in HIST to be affected by finite size effects (Volk et al. Reference Volk, Calzavarini, Verhille, Lohse, Mordant, Pinton and Toschi2008; Calzavarini et al. Reference Calzavarini, Volk, Bourgoin, Lévêque, Pinton and Toschi2009). It should be noted, though, that $\tau _0/\tau _\eta$ seems to eventually approach the expected value of nearly 2 for the farthest positions (and hence for the smallest $d_p/\eta$ ratios), presented in the inset of figure 18. Following the considerations previously discussed for the trends of $a_0$, it could then be expected that the actual tracer behaviour (free of finite size effects) would be fully recovered for $\tau _0$ near $z/D\simeq 65$, with a ratio $\tau _0/\tau _\eta$ of the same order as that usually reported for HIST.

Figure 17. Normalised axial acceleration correlation on the axis as a function of time lag normalised by the Kolmogorov time scale.

Figure 18. The zero-crossing of the acceleration correlation normalised by the Kolmogorov time scale as a function of the downstream location along the centre of the jet. Three estimations are presented based on the acceleration correlation $R_{aa}$, the derived second-order structure function $\mathrm {d}S^L_2/\mathrm {d}\tau$ and the model-driven values obtained from $C_0/a_0$.

Beyond the discussed finite size effects, acceleration correlation is also insightful for shedding further light on the Lagrangian properties of the jet of relevance for the application to diffusion problems, as motivated in the introduction.

First, the stationarisation of velocity à la Batchelor can be further tested by recalling that for any random stationary signal $\xi$, the two-point correlation of the derivative of $\xi$, $R_{\dot {\xi }\dot {\xi }}$, is simply related to the second derivative of the two-point correlation of $\xi$: $R_{\dot {\xi }\dot {\xi }} = -\ddot {R}_{\xi \xi }$ (derivatives are denoted in dot notation). In the present case, this relation gives that the zero-crossing of acceleration correlation corresponds to an inflection point of the velocity two-point correlation. If Lagrangian stationarity holds, $\tau _0$ can therefore be simply extracted from the peak of the derivative of the second-order structure function, $\mathrm {d}S^L_2/\mathrm {d}\tau$ (figure not included). The corresponding values are presented in figure 18 (dot-dashed line) which exhibit a fair agreement with the direct estimate of $\tau _0$ from $R_{aa}$. This observation supports the validity of the proposed stationarisation procedure at each explored location independently. However, finite size effects influence the streamwise dependence of $\tau _0$, therefore impeding the validation of the small-scale Lagrangian self-similarity based on streamwise evolution of $\tau _0$ (or $a_0$).

Second, the relevance of stochastic models for characterising the Lagrangian dynamics (and therefore for predicting diffusion properties) can be further tested from the acceleration time scales. As presented in § 4.3, simple (Langevin) stochastic models accurately predict large-scale properties, such as the connection between Lagrangian and Eulerian integral time scales and $C_0$. Two-time stochastic models (Sawford Reference Sawford1991) also predict a similar relation for the small Eulerian and Lagrangian time scales, involving the constant $C_0$ and $a_0$ (see Huck, Machicoane & Volk Reference Huck, Machicoane and Volk2019). Namely, the prediction from such models can be written as

(5.3)\begin{equation} \tau_a = \int_0^{\tau_0} R_{aa}(\tau) \,\mathrm{d}\tau = \frac{C_0}{2a_0}\tau_\eta. \end{equation}

Neglecting the curvature of $R_{aa}$ at the origin, the integral $\int _0^{\tau _0} R_{aa}(\tau ) \,\mathrm {d}\tau$ can be approximated as $\tau _a \simeq {{\textstyle \frac {1}{2}}} \tau _0$ (because of the curvature, it is actually slightly larger than that). It is therefore expected from stochastic models that $\tau _0/\tau _\eta \simeq C_0/a_0$. The dashed line in figure 18 represents the downstream evolution of the ratio $C_{0_z}/a_{0_z}$ extracted from the measurements. Neglecting the NF locations of $z/D < 25$, it can be seen that the agreement is also adequate when compared with the two previously presented independent estimations of $\tau _0/\tau _\eta$.

6. Conclusion

Particle tracking velocimetry was implemented to create three-component jet trajectories in three-dimensional space. Generation of such a large-scale database facilitates the study of how fundamental Lagrangian parameters behave when exposed to a highly anisotropic and inhomogeneous flow field. The Lagrangian self-similarity theory of turbulent diffusion of Batchelor (Reference Batchelor1957) has been applied to account for the Lagrangian instationarity of the flow field due to the spatial Eulerian inhomogeneity. The stationarisation technique leading to Lagrangian self-similarity is validated in the FF of the jet for Lagrangian inertial-scale dynamics by the collapse of the Lagrangian velocity structure functions and correlation profiles (after a given location downstream) for the stationarised variables. The Lagrangian self-similarity is also validated for the large scales, as the Lagrangian and Eulerian time scales are found to be univocally tight in the FF of the jet. For the small-scale Lagrangian dynamics, self-similarity is only observed in the farthest downstream locations explored. This is attributed to the impact of finite particle size effects which evolve along the jet axis and therefore influence the small-scale Lagrangian dynamics differently depending on the downstream position, as confirmed by the acceleration statistics. Further studies, with experiments specifically dedicated to small-scale (acceleration) measurements of small tracers, would be required to draw final conclusions concerning the small-scale Lagrangian self-similarity. In turn, this confirmation of the validity of the Lagrangian self-similarity at inertial and large scales is an important element supporting Batchelor's extension of Taylor's stationary theory of turbulent diffusion to the case of self-similar jets and wakes where particles have a non-stationary Lagrangian dynamics.

Regarding the inertial scales of the Lagrangian dynamics, results indicate that the Lagrangian scaling constant $C_0$ is a function of downstream location in the NF and eventually converges (around $z/D = 30$) to a value of the order of 3, with a small (${\sim }10\,\%$) difference between axial and radial components, indicating a weak role of anisotropy in inertial-scale Lagrangian dynamics in the jet. It is noted that this value may be dependent on Reynolds number (its order of magnitude is consistent though with HIST simulations and experiments carried in other flows at similar Reynolds number), and further studies in a jet configuration at different Reynolds number will be required to explore this dependency.

The evolution of the Eulerian to Lagrangian integral time-scale ratio shows convergence towards $T_E/T_L \simeq 1.8$ around $z/D = 25$ for the axial velocity time scales and $T_E/T_L \simeq 2.6$ at the same location downstream for the radial-based time-scale ratio. This points towards three interesting observations. (i) In the well-developed region of the jet, the Lagrangian dynamics decorrelates faster (about twice faster) than the Eulerian dynamics (as predicted for HIST by Kraichnan (Reference Kraichnan1964)). (ii) The ratio between Lagrangian and Eulerian integral scales is about 40 % larger for the radial component compared with the axial, which is related to the large-scale anisotropy of the jet. (iii) In spite of this difference, sufficient agreement is found between the measured ratio for these time scales and the prediction from simple stochastic models for HIST, $T_E/T_L \simeq C_0/2$ (the agreement is favourable between the axial-based parameters while the value predicted by the model underestimates the actual time-scale ratio for the radial direction).

Considering the small-scale dynamics, the normalised acceleration variance shows a strong dependence on the downstream location from the nozzle, presumably associated with finite particle size effects, which are known to influence acceleration when $d_p/\eta > 5$ typically. This presumably explains why self-similarity is not fully recovered at small scales in the present study, as tracer-like behaviour for acceleration would only be recovered around $z/D\simeq 65$. Besides, the power-law slope of $a_0$ as a function of $d_p/\eta$ found in the current study is larger than in previous studies of HIST and von Kármán flows, suggesting that the jet dynamics interplays with finite size effects. The zero-crossing of the acceleration correlation also demonstrates a strong dependence on the downstream location from the nozzle, converging towards typical values ($\tau _0/\tau _\eta \simeq 2$) only at the farthest position explored ($z/D>rsim 40$). Although the actual value of $\tau _0$ is likely also to be altered due to finite size effects, the agreement between several independent estimates of $\tau _0$ supports, on the one hand, the validity of the proposed stationarisation method and, on the other hand, the relevance of simple stochastic approaches to link (in the FF) the Eulerian and Lagrangian dissipative time scales to the experimentally determined constants $C_0$ and $a_0$.

The ability of the implemented stationarisation technique provides adequate methods for calculating the scaling constant, a non-trivial task within an inhomogeneous flow field. Overall, after a proper stationarisation, the Lagrangian properties for the jet are interestingly found to match reasonably well the behaviours previously reported for HIST. From the perspective of building simple and practical diffusion models, the success of the method validates Batchelor's extension of Taylor's theory, providing estimates of turbulent diffusion properties based on the Lagrangian second-order structure function (or two-point correlation function) of velocity. Further, the relations presented between the Eulerian and Lagrangian time scales (both integral and dissipative) suggest that simple stochastic modelling is well suited for finding reasonable estimates of such correlation functions. Actually, based on these models, simple knowledge of the constants $a_0$ and $C_0$ may be sufficient to build reasonable proxies (with exponential or double-exponential functions) of these correlations to be used for estimating turbulent diffusion properties.

Funding

B.V., S.S. and R.B.C. are supported by a US National Science Foundation grant (NSF-GEO-1756259). R.B.C. is also grateful for the support provided through the Fulbright Scholar Program. B.V., L.C., R.V. and M.B. benefit from the financial support of the Project IDEXLYON of the University of Lyon in the framework of the French Programme Investissements d'Avenir (ANR-16-IDEX-0005). L.C. is supported by ANR grants Liouville ANR-15-CE40-0013 and by the Simons Foundation (award 651475).

Declaration of interests

The authors report no conflict of interest.

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Figure 0

Figure 1. (a) Three-dimensional CAD rendering of the LEM. (b) Schematic of the hydraulic set-up. Cameras 1, 2 and 3 are oriented orthogonal to the green faces labelled accordingly as 1, 2 and 3.

Figure 1

Figure 2. Schematic of the optical set-up. (a) Top view and (b) profile view.

Figure 2

Figure 3. Measurement volume captured by the three-camera set-up for the NF measurements (same measurement volume for the FF measurements).

Figure 3

Figure 4. Detection of 705 particles on camera 2 in the NF configuration (nozzle in the top left-hand corner). Inset: zoom on the boxed zone.

Figure 4

Figure 5. Predictive tracking schematic. The solid line signifies the real trajectory. The dotted line (linear fit of the positions from frame $n-4$ to $n$) indicates the position extrapolation.

Figure 5

Figure 6. Near-field jet: 95 055 trajectories longer than or equal to 10 frames (one colour per trajectory, one movie considered).

Figure 6

Figure 7. (a) Vector field of the $\boldsymbol {\bar {u}^e}$ field for the normalised locations, including the half-width of the jet (dashed line, purple), $r_{1/2}$, at all downstream locations for the NF. (b) Contour representations of the local standard deviations $\sigma _{u_z}$ (left) and $\sigma _{u_r}$ (right) for the axial and radial velocity components for NF locations.

Figure 7

Figure 8. Eulerian second-order structure functions of the axial velocity on the axis, (a) uncompensated $S^E_{2-z,\perp }(z,\delta r)\sigma _{u_z}^2$ and (b) compensated $(S^E_{2-z,\perp }(z,\delta r)\sigma _{u_z}^2/\frac {4}{3}C_2)^{3/2}/\delta r$ (the solid lines are the plateaus to extract $\varepsilon _z$), for the four denoted downstream locations.

Figure 8

Table 1. Eulerian parameters of the jet on the axis for various $z/D$ positions.

Figure 9

Figure 9. Normalised two-point spatial correlation of the Eulerian axial velocity on the axis, $R^E_{uu-z,\perp }(z,\delta r) = 1 - S^E_{2-z,\perp }(z,\delta r)/2$.

Figure 10

Figure 10. Evolution of $\varepsilon _z$ along the jet axis.

Figure 11

Figure 11. (a) The standard deviation averaged within the disk $\mathcal {D}_z$, (b) the dissipation rate and (c) the integral length scale for the axial component of velocity for all downstream locations. Power-law relations are given as dashed lines.

Figure 12

Figure 12. Schematic of the Lagrangian velocity increment in a Cartesian coordinate system for a given time lag $\tau$.

Figure 13

Figure 13. Lagrangian second-order structure functions of the axial velocity on the axis, estimated at four downstream locations ($z/D = 15$, 25, 35 and 45). (a) Non-dimensional $S^L_{2,z}(\tau )$ as a function of the non-dimensional time $\tau /T_{E_z}$ (inset: dimensional $S^L_{2,z}(\tau )\sigma _{u_z}^2$ as a function of time $\tau$) and (b) compensated $S^L_{2,z}(\tau )\sigma _{u_z}^2/(\tau \varepsilon _z)$, for the denoted downstream locations. The universal scaling constant $C_{0_z}$ can be extracted from the plateau of the compensated structure functions.

Figure 14

Figure 14. Normalised Lagrangian correlation of the axial velocity for the compensated time lag $\tau /T_{E_z}$. Insets provide the Lagrangian correlation as a function of the dimensional time lag $\tau$ for the same seven downstream locations previously considered. Locations are (a) along the centreline ($r=0$) and (b) at the jet half-width ($r=r_{1/2}$) for all downstream positions.

Figure 15

Table 2. Lagrangian parameters of the jet on the axis for various $z/D$ positions.

Figure 16

Figure 15. Evolution of the scaling constant $C_0$ (left-hand axis) and the ratio of the integral time scales $T_E/T_L$ (right-hand axis) as a function of downstream location within the jet centre. The axial (solid) and radial (dot-dashed) components are both presented.

Figure 17

Figure 16. Evolution of the scaling constant of acceleration $a_0$ along the centreline as a function of the finite particle size $d_p/\eta$.

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Figure 17. Normalised axial acceleration correlation on the axis as a function of time lag normalised by the Kolmogorov time scale.

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Figure 18. The zero-crossing of the acceleration correlation normalised by the Kolmogorov time scale as a function of the downstream location along the centre of the jet. Three estimations are presented based on the acceleration correlation $R_{aa}$, the derived second-order structure function $\mathrm {d}S^L_2/\mathrm {d}\tau$ and the model-driven values obtained from $C_0/a_0$.