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Non-thermal particle acceleration from maximum entropy in collisionless plasmas

Published online by Cambridge University Press:  30 June 2022

Vladimir Zhdankin*
Affiliation:
Center for Computational Astrophysics, Flatiron Institute, 162 Fifth Avenue, New York, NY 10010, USA
*
Email address for correspondence: [email protected]
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Abstract

Dissipative processes cause collisionless plasmas in many systems to develop non-thermal particle distributions with broad power-law tails. The prevalence of power-law energy distributions in space/astrophysical observations and kinetic simulations of systems with a variety of acceleration and trapping (or escape) mechanisms poses a deep mystery. We consider the possibility that such distributions can be modelled from maximum-entropy principles, when accounting for generalizations beyond the Boltzmann–Gibbs entropy. Using a dimensional representation of entropy (related to the Renyi and Tsallis entropies), we derive generalized maximum-entropy distributions with a power-law tail determined by the characteristic energy scale at which irreversible dissipation occurs. By assuming that particles are typically energized by an amount comparable to the free energy (per particle) before equilibrating, we derive a formula for the power-law index as a function of plasma parameters for magnetic dissipation in systems with sufficiently complex topologies. The model reproduces several results from kinetic simulations of relativistic turbulence and magnetic reconnection.

Type
Letter
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press

1. Introduction

Non-thermal energetic particles are ubiquitous in collisionless plasmas, being observed in laboratory experiments (e.g. Yoo et al. Reference Yoo, Yamada, Ji and Myers2013; Bulanov et al. Reference Bulanov, Esirkepov, Kando, Koga, Kondo and Korn2015; Schroeder et al. Reference Schroeder, Howes, Kletzing, Skiff, Carter, Vincena and Dorfman2021), planetary magnetospheres (Birn et al. Reference Birn, Artemyev, Baker, Echim, Hoshino and Zelenyi2012), the solar wind (Fisk & Gloeckler Reference Fisk and Gloeckler2007), the solar corona (Aschwanden Reference Aschwanden2002) and high-energy astrophysical systems (e.g. Blandford & Eichler Reference Blandford and Eichler1987). It was long recognized that non-thermal particles are a generic consequence of collisionless plasma physics, as the absence of Coulomb collisions precludes relaxation to a thermal equilibrium (e.g. Fermi Reference Fermi1949, Reference Fermi1954; Parker & Tidman Reference Parker and Tidman1958). More recently, first-principles numerical simulations demonstrated efficient particle acceleration from shocks (Spitkovsky Reference Spitkovsky2008; Sironi & Spitkovsky Reference Sironi and Spitkovsky2010; Caprioli & Spitkovsky Reference Caprioli and Spitkovsky2014), magnetic reconnection (Guo et al. Reference Guo, Li, Daughton and Liu2014; Sironi & Spitkovsky Reference Sironi and Spitkovsky2014; Werner et al. Reference Werner, Uzdensky, Cerutti, Nalewajko and Begelman2016; Li et al. Reference Li, Guo, Li, Stanier and Kilian2019), relativistic turbulence (Zhdankin et al. Reference Zhdankin, Werner, Uzdensky and Begelman2017; Comisso & Sironi Reference Comisso and Sironi2018) and various instabilities (e.g. Hoshino Reference Hoshino2013; Kunz, Stone & Quataert Reference Kunz, Stone and Quataert2016; Nalewajko et al. Reference Nalewajko, Zrake, Yuan, East and Blandford2016; Alves, Zrake & Fiuza Reference Alves, Zrake and Fiuza2018; Ley et al. Reference Ley, Riquelme, Sironi, Verscharen and Sandoval2019; Sironi, Rowan & Narayan Reference Sironi, Rowan and Narayan2021). In observations and simulations, particle energy distributions frequently exhibit power-law tails in which the index $\alpha$ can range from hard ($\alpha \sim 1$) to soft ($\alpha \gg 1$) values, depending on system parameters. Determining why power-law distributions form and predicting $\alpha$ as a function of parameters are topics of fundamental importance.

This Letter explores the possibility that power-law distributions in collisionless plasmas can be explained by maximum-entropy principles, when considering non-extensive entropy measures beyond the traditional Boltzmann–Gibbs (BG) entropy. There is no a priori reason for a collisionless plasma to relax to a state of maximum BG entropy. Given that plasma dissipation processes are macroscopically irreversible, the question is then, what type of entropy (if any) does a collisionless plasma maximize upon equilibration?

Generalized measures of entropy form a possible foundation for non-equilibrium statistical mechanics. In particular, the non-extensive entropy of Tsallis (Reference Tsallis1988), building on earlier ideas by Rényi (Reference Rényi1961) and others, has gained attention in the community. Non-extensive entropy was suggested to be relevant for physical systems with long-range correlations (e.g. Milovanov & Zelenyi Reference Milovanov and Zelenyi2000), which are a generic outcome of nonlinear processes in a collisionless plasma. It was shown that the maximization of Tsallis entropy leads to the kappa distribution, which has a quasi-thermal peak along with a power-law tail that extends to high energies (Milovanov & Zelenyi Reference Milovanov and Zelenyi2000; Leubner Reference Leubner2002; Livadiotis & McComas Reference Livadiotis and McComas2009). Incidentally, the kappa distribution is widely used to model non-thermal particle distributions in space plasmas such as the solar wind (e.g. Pierrard & Lazar Reference Pierrard and Lazar2010; Livadiotis & McComas Reference Livadiotis and McComas2013). While intriguing, the generalized measures of entropy have degrees of freedom (e.g. the entropic index or kappa index) that are not straightforward to interpret physically or model phenomenologically, which has limited their utility.

Recently, Zhdankin (Reference Zhdankin2021a) developed a framework for quantifying generalized entropy based on dimensional representations of entropy, derived from the Casimir invariants of the Vlasov equation. This framework shares similarities to the non-extensive entropies of Rényi (Reference Rényi1961) and Tsallis (Reference Tsallis1988), but enables a connection with irreversible processes occurring at various energy scales within the plasma. Thus, long-range correlations are re-interpreted as the relaxation of a collisionless plasma subject to dissipation at non-thermal energies. In this Letter, we use this framework to derive a generalized maximum-entropy (GME) distribution (equivalent to the Tsallis distribution) that has a power-law tail at high energies, resembling numerical and observational results in the literature. For a given number of particles and kinetic energy content, there is only one unconstrained free parameter (linked to $\alpha$), determined by the energy scale at which entropy is maximized.

After deriving the GME distribution, we propose a model for determining the power-law index $\alpha$ as a function of physical parameters, for systems governed by magnetic dissipation with sufficiently complex topologies. By assuming that particles are typically energized by an amount comparable to the free energy per particle before equilibrating, we derive an equation for $\alpha$ versus plasma beta and fluctuation amplitude, indicating that non-thermal particle acceleration is efficient when $\beta$ is low and fluctuations are strong. We compare the model predictions with numerical results from the literature on relativistic turbulence and magnetic reconnection, showing that the model is able to reproduce some observed trends such as the scaling of $\alpha$ with the magnetization $\sigma$. The GME model also provides a resolution for why power-law distributions are often similar for distinct processes (with diverse escape/trapping mechanisms) and for varying spatial dimensionality (two dimensions versus three dimensions).

The GME framework provides a route to understanding particle acceleration that is distinct from standard approaches based on quasilinear theory and its extensions. The limitations and applicability of the model are further discussed in the conclusions.

2. Model for GME distribution

Consider a collisionless plasma in a closed system. The evolution of the fine-grained particle distribution for a given species can be represented by the (relativistic) Vlasov equation,

(2.1)\begin{equation} \partial_t f + \boldsymbol{v}\boldsymbol{\cdot} \boldsymbol{\nabla} f + \boldsymbol{F} \boldsymbol{\cdot} \partial_{\boldsymbol{p}} f= 0 , \end{equation}

where $f(\boldsymbol {x},\boldsymbol {p},t)$ is the particle momentum distribution function (normalized such that $\int \, {{\rm d}}^{3}p \, {{\rm d}}^{3}x f = N$ is the total number of particles), $\boldsymbol {v} = \boldsymbol {p}c/ (m^{2}c^{2}+p^{2})^{1/2}$ is the particle velocity (with $m$ the particle mass) and $\boldsymbol {F}(\boldsymbol {x},\boldsymbol {p},t)$ is a phase-space conserving force field ($\partial _{\boldsymbol {p}} \boldsymbol {\cdot } \boldsymbol {F} = 0$), containing the electromagnetic force and external forces. Here, $\boldsymbol{x}$ is the position vector, $\boldsymbol{p}$ is the momentum vector, and c is the speed of light. Equation (2.1) can be applied to any particle species, with appropriate $\boldsymbol {F}$. We denote particle kinetic energy by $E(p) = (m^{2}c^{4}+p^{2}c^{2})^{1/2} - m c^{2}$ and the system-averaged kinetic energy by $\bar {E}$.

The Vlasov equation formally conserves the BG entropy $S=-\int \, {{\rm d}}^{3}x \, {{\rm d}}^{3}p f \log {f}$ as well as an infinite set of quantities known as the Casimir invariants. The latter can be manipulated to yield quantities with dimensions of momentum, introduced in Zhdankin (Reference Zhdankin2021a) as the Casimir momenta

(2.2)\begin{equation} p_{c,\chi}(f) \equiv n_0^{1/3} \left( \frac{1}{N} \int \, {{\rm d}}^{3}x \, {{\rm d}}^{3}p f^{\chi} \right)^{{-}1/3(\chi-1)} ,\end{equation}

where $n_0$ is the mean particle number density and $\chi > 0$ is a free index that parameterizes the weight toward different regions of phase space: large (small) values of $\chi$ are sensitive to low (high) energies. The phase-space integral in (2.2) resembles those used in the non-extensive entropies of Rényi (Reference Rényi1961) and Tsallis (Reference Tsallis1988). The Casimir momenta, however, manipulate this integral into a dimensional form that is interpretable physically. In particular, the anomalous growth of $p_{c,\chi }$ is indicative of irreversible entropy production at the corresponding momentum scale in phase space (with $\chi \to 0$ corresponding to momenta far in the tail, and $\chi \to \infty$ corresponding to momenta near the mode).

As described in Zhdankin (Reference Zhdankin2021a), $p_{c,\chi }$ share many properties with the BG entropy $S$: (i) they reduce to a dimensionalized version of the BG entropy when $\chi \to 1$, as $p_{c,\chi \to 1} = n_0^{1/3} \, {\rm e}^{S/3N}$; (ii) they are maximized when $f$ is isotropic and spatially uniform; and (iii) while ideally conserved by the Vlasov equation, the formation of fine-scale structure breaks conservation of $p_{c,\chi }$ for $f$ measured at coarse-grained scales. Zhdankin (Reference Zhdankin2021a) also argued that $p_{c,\chi }$ associated with coarse-grained $f$ will tend to increase (irreversibly) when energy is injected into the system, for generic complex processes; this was demonstrated by two-dimensional kinetic simulations of relativistic turbulence. Phenomena such as the entropy cascade may lead to anomalous entropy production through finite collisionality (Schekochihin et al. Reference Schekochihin, Cowley, Dorland, Hammett, Howes, Quataert and Tatsuno2009; Eyink Reference Eyink2018).

The infinite number of generalized entropies represented by $p_{c,\chi }$ complicates the application of a maximum-entropy principle. Only when dissipation occurs collisionally or at small enough energy scales ($\chi \sim 1$) is the BG entropy maximized. In general, mechanisms of anomalous entropy production can operate over a spectrum of scales, so a scale-by-scale understanding of the plasma physical processes is necessary to model the system.

In this Letter, we consider the idealized situation where entropy is maximized at a characteristic momentum scale represented by $p_{c,\chi _d}$ with a given index $\chi _d$ where the subscript $d$ denotes ‘dissipation’. Physically, particles are energized up to this scale (on average) while mixing causes the distribution to smooth out to the equilibrium state.

Suppose that the system evolves to maximize $p_{c,\chi _d}$. The GME distribution is isotropic and spatially uniform $f(\boldsymbol {p},\boldsymbol {x})=f(p)$, and can be derived from the functional

(2.3)\begin{align} {\mathcal{L}} = N^{1/3} \left( \int \, {{\rm d}}^{3}p f^{\chi_d} / N \right)^{{-}1/3(\chi_d-1)} - \lambda_1 \left( \int \, {{\rm d}}^{3}p f - N \right) - \lambda_2 \left[ \int \, {{\rm d}}^{3}p E(p) f - N \bar{E}\right] , \end{align}

where $\lambda _i$ are Lagrange multipliers enforcing number and energy constraints. By requiring $\delta {\mathcal {L}} = 0$ upon variations of the distribution $\delta f$, we obtain

(2.4)\begin{equation} \frac{p_{c,\chi_d}^{3\chi_d-2} \chi_d f^{\chi_d-1}}{3(1-\chi_d) N^{2/3}} - \lambda_1 - \lambda_2E(p) = 0 , \end{equation}

which leads to the GME distribution

(2.5)\begin{equation} f = C [ E(p)/E_b+ 1 ]^{{-}1/(1-\chi_d)} , \end{equation}

where $C$ and $E_b$ are the normalization factor and characteristic energy, determined by requiring $4{\rm \pi} \int dp p^{2} f = N$ and $4{\rm \pi} \int dp p^{2} E(p) f = N \bar {E}$. Note that (2.5) is operationally equivalent to the Tsallis distribution (Tsallis Reference Tsallis1988); this equivalence is due to the fact that the Tsallis entropy and Casimir momenta are both obtained from the same fundamental phase-space integral (involving powers of $f$). We will restrict our attention to $\chi _d < 1$, in which case there is a power-law tail (whereas $\chi _d > 1$ would lead to a narrow distribution with sharp cutoff). The derivation of (2.5) from maximizing a dimensional representation of generalized entropy is the first main result of this work.

In the ultra-relativistic (UR) limit, $\bar {E} \gg m c^{2}$, the GME distribution ((2.5)) becomes

(2.6)\begin{equation} f \xrightarrow[]{\text{UR}} C (p/p_b + 1)^{-\alpha-2}, \end{equation}

where $\alpha = (2\chi _d-1)/(1-\chi _d)$, $C = N (\alpha - 1) \alpha (\alpha + 1)/8{\rm \pi} p_b^{3}$ and $p_b = (\alpha - 2) \bar {E}/3 c$. In the non-relativistic (NR) limit, $\bar {E} \ll m c^{2}$, (2.5) becomes

(2.7)\begin{equation} f \xrightarrow[]{\text{NR}} C ( p^{2}/p_b^{2} + 1 )^{-\alpha-1/2}, \end{equation}

where $\alpha = (1+\chi _d)/2(1-\chi _d)$, $C = N \varGamma (\alpha +1/2)/ {\rm \pi}^{3/2} p_b^{3} \varGamma (\alpha -1)$ and $p_b = [4 (\alpha -2) m \bar {E}/3]^{1/2}$. The NR expression ((2.7)) is equivalent to the kappa distribution.

In both limits, we used $\alpha$ to denote the power-law index of the corresponding energy distribution,

(2.8)\begin{equation} F(E) = \frac{{{\rm d}}p}{{{\rm d}}E} 4{\rm \pi} p^{2} f(p) |_{p=[E (E + 2\,m c^{2})]^{1/2}/c} , \end{equation}

such that $F(E) \propto E^{-\alpha }$ at high energies. Also note that $\chi _d \to 1$ ($\alpha \to \infty$) recovers the thermal (Maxwell–Jüttner) distribution, using the identity $(A/x + 1)^{-x} = {\rm e}^{-A}$ as $x \to \infty$ for any $A$.

Since the GME distribution has an infinite extent in energy, $\alpha > 2$ is necessary for finite $\bar {E}$. Thus, the domain is $3/4 < \chi _d < 1$ for the UR case and $3/5 < \chi _d < 1$ for the NR case. We note that the GME framework can be extended to allow $1 < \alpha < 2$ if an additional constraint is imposed to make the distribution vanish at a maximum momentum $p_{\rm max}$ (which may be related to the system confinement scale, for example). This would be implemented by adding a third Lagrange multiplier to ${\mathcal {L}}$ that enforces $p_{c,\chi \to 0} = p_{\rm max}$. However, the resulting equation does not have an analytically tractable solution for $f$, so we defer such an extension to future work. This extension may be necessary to accurately model particle distributions in relativistic magnetic reconnection (Sironi & Spitkovsky Reference Sironi and Spitkovsky2014) or turbulence (Zhdankin et al. Reference Zhdankin, Werner, Uzdensky and Begelman2017) at high magnetization, where $\alpha < 2$ has been measured in simulations.

3. Model for power-law index

Suppose that the dynamics is sufficiently complex to cause the initial distribution (which is arbitrary) to evolve into the GME state. One can then compare the momentum at which entropy is maximized, $p_{c,\chi _d}$, with the momentum of the typical particle given by $p_{c,\infty }$ (note that $p_{c,\infty }$ lies close to $p_b$). Evaluating $p_{c,\chi _d}/p_{c,\infty }$ using (2.2) with the GME distribution ((2.5)), one obtains in the UR limit

(3.1)\begin{equation} \frac{p_{c,\chi_d} }{p_{c,\infty}} \xrightarrow[]{\text{UR}} \left(\frac{\alpha+1}{\alpha-2} \right)^{(\alpha+2)/3} , \end{equation}

and in the NR limit

(3.2)\begin{equation} \frac{p_{c,\chi_d} }{p_{c,\infty}} \xrightarrow[]{\text{NR}} \left( \frac{\alpha-1/2}{\alpha-2} \right)^{(2\alpha+1)/6} . \end{equation}

This relates the power-law index $\alpha$ to the maximum-entropy scale, which can be modelled phenomenologically (as considered below). In figure 1, we show $\alpha$ versus $p_{c,\chi _d}/p_{c,\infty }$, separately for the UR ((3.1)) and NR ((3.2)) limits. Note the divergence $\alpha \to \infty$ when $p_{c,\chi _d}/p_{c,\infty } \to e \approx 2.72$ (UR case) or $p_{c,\chi _d}/p_{c,\infty } \to \, {\rm e}^{1/2} \approx 1.65$ (NR case). Thus, if entropy is maximized at momentum scales sufficiently close to the peak of the distribution, then a thermal distribution is recovered (similar to a collisional plasma). When $p_{c,\chi _d}/p_{c,\infty }$ becomes larger than a factor of few, the non-thermal state is obtained, with $\alpha \to 2$ for $p_{c,\chi _d}/p_{c,\infty } \gg 1$. Thus, in both the UR and the NR limit, the distribution will relax to the non-thermal state if entropy is maximized at momentum scales in the tail of the distribution.

Figure 1. The energy power-law index $\alpha$ of the GME distribution versus the ratio between the entropy-maximizing momentum $p_{c,\chi _d}$ and the typical momentum $p_{c,\infty }$ ((3.1) and (3.2)). The UR (red) and NR (blue) limits are shown separately, with dashed lines indicating singularities.

Physical considerations are necessary to determine $p_{c,\chi _d}/p_{c,\infty }$ as a function of system parameters, from which one can extract $\alpha$. In general, this will need to be informed by numerical simulations and analytical considerations for the given process.

For this Letter, we consider a simplified scenario to estimate the momentum scale of maximum entropy that arises from the dissipation of magnetic energy in complex field topologies (via magnetic reconnection, turbulence or instabilities). We suppose that, rather than being energized at the thermal energy scale, the typical particles are energized by an amount comparable to the free magnetic energy per particle, $E_{\rm free} = \delta B^{2}/8{\rm \pi} n_0$, over a dynamical time scale, before equilibrating to the GME state. Here, $\delta B$ is the characteristic magnetic field fluctuation (prior to dissipation), while we denote the background (non-dissipating) component by $B_0$. We denote the energy corresponding to the Casimir momenta by $E_{c,{\chi }} = E(p_{c,\chi })$ and the typical particle energy as $E_0$ (prior to dissipation), noting that the thermal dissipation energy scale is $e E_0$. The model posits that $E_{c,\chi _d} \sim e E_0 + \eta E_{\rm free}$ where $\eta$ is an order-unity coefficient describing the portion of free energy converted. We can then write

(3.3)\begin{align} \frac{p_{c,\chi_d}}{p_{c,\infty}} & = \left[ \frac{E_{c,\chi_d} ( E_{c,\chi_d} + 2\,m c^{2})}{E_{c,\infty} (E_{c,\infty} + 2\,m c^{2})} \right]^{1/2} \nonumber\\ & \sim \left[ \frac{(e E_0 + \eta E_{\rm free}) (e E_0 + \eta E_{\rm free}+2\,m c^{2})}{E_0 (E_0+2\,m c^{2})} \right]^{1/2} \nonumber\\ & \sim \left[ \frac{[e + \eta (\delta B/B_0)^{2}/\beta_c] [e+ \eta (\delta B/B_0)^{2}/\beta_c+2/\theta_c]}{1+2/\theta_c} \right]^{1/2}, \end{align}

where $\theta _c = E_0/m c^{2}$ is a characteristic dimensionless temperature and $\beta _c = 8{\rm \pi} n_0 E_0/B_0^{2}$ is a characteristic plasma beta for the particle species (which may differ from the standard plasma beta, $\beta _0=8{\rm \pi} n_0 T/B_0^{2}$ where $T$ is species temperature, by a factor of order unity). Equating (3.3) with either (3.1) or (3.2) yields an implicit equation for $\alpha$ as a function of $\beta _c$, $\delta B/B_0$ and $\theta _c$ in the appropriate limit. The physical parameters required to achieve a given value of $\alpha$ can then be expressed in the UR limit ($\theta _c \gg 1$) as

(3.4)

and in the NR limit ($\theta _c \ll 1$) as

(3.5)

The predicted scaling of $\alpha$ given by (3.4) and (3.5) is the second main result of this work. The right-hand side of both equations becomes zero when $\alpha \to \infty$, indicating that the thermal distribution is recovered for high beta or weak fluctuations, $(\delta B/B_0)^{2} / \beta _c \ll 1$. On the other hand, the non-thermal state is obtained when $(\delta B/B_0)^{2}/\beta _c \gtrsim 1$, for both UR and NR regimes. For $(\delta B/B_0)^{2}/\beta _c \gg 1$, the index approaches $\alpha \to 2$ (but recall that the model may be extended, in principle, to allow $1 < \alpha < 2$). The scaling is plotted in figure 2.

Figure 2. The energy power-law index $\alpha$ of the GME distribution versus (pre-dissipation) physical parameters $\eta (\delta B/B_0)^{2} / \beta _c$ for the magnetic dissipation model. The UR (red; (3.4)) and NR (blue; (3.5)) limits are shown separately.

4. Comparison with simulations

To validate the GME model, we remark on how the predictions compare with existing results from kinetic simulations of relativistic turbulence and magnetic reconnection in the literature.

In figure 3, we show the global particle energy distribution $F(E)$ arising in a $1536^{3}$-cell particle-in-cell (PIC) simulation of driven relativistic turbulence (with $\delta B/B_0 \approx 1$) studied in  Zhdankin et al. (Reference Zhdankin, Uzdensky, Werner and Begelman2018) and Wong et al. (Reference Wong, Zhdankin, Uzdensky, Werner and Begelman2020). The simulation begins with a Maxwell–Jüttner distribution of electrons and positrons with UR temperature $\theta =T/m_e c^{2}=100$ and initial magnetization $\sigma _0 = 3/8$. The magnetization is defined as the ratio of the magnetic enthalpy to plasma enthalpy, and is related to species plasma beta by $\sigma _0 = 1/(4\beta _0)$ in the UR regime; thus $\beta _0 = 2/3$. The simulation develops a non-thermal tail with index $\alpha \approx 3$. We find that the GME distribution of (2.6) provides a fair fit to the fully developed state when we choose $\chi _d = 0.815$, as shown by the dashed line in figure 3. The fit over-predicts the number of particles at energies below the peak, indicating that relaxation to the GME state is incomplete (possible reasons for this will be described in the conclusions). The PIC simulations of decaying, magnetically dominated turbulence by Comisso & Sironi (Reference Comisso and Sironi2019) also appear to resemble the GME state. Thus, we believe that the GME model provides a reasonable (if imperfect) representation of available numerical data on relativistic turbulence.

Figure 3. Energy distribution $F(E)$ in PIC simulation of relativistic turbulence for various times, taken from Zhdankin et al. (Reference Zhdankin, Uzdensky, Werner and Begelman2018), compared with the GME distribution (dashed; (2.6)) with $\chi _d = 0.815$.

We next consider the model for the power-law index $\alpha$ from magnetic dissipation. In figure 4, we compare the predicted $\alpha$ versus $\sigma$ scaling ((3.4) with $\beta _c = 1/4\sigma$, $\delta B/B_0 = 1$, $\eta = 1$) with results in the literature on relativistic turbulence in a pair plasma. PIC simulations of driven relativistic turbulence indicate that the power-law index is well described by the empirical formula $\alpha \approx \alpha _\infty + C_0 \sigma ^{-0.5}$, with $\alpha _\infty \approx 1$ and $C_0 \approx 1.5$ for large sizes (Zhdankin et al. Reference Zhdankin, Werner, Uzdensky and Begelman2017, Reference Zhdankin, Uzdensky, Werner and Begelman2018), shown in figure 4 (blue); note that a similar formula with different coefficients was also suggested for relativistic magnetic reconnection (Ball, Sironi & Özel Reference Ball, Sironi and Özel2018; Werner et al. Reference Werner, Uzdensky, Begelman, Cerutti and Nalewajko2018; Uzdensky Reference Uzdensky2022). We also show approximate data points from the two-dimensional decaying relativistic turbulence simulations of Comisso & Sironi (Reference Comisso and Sironi2019) (red). The model is able to explain the trends in the numerical simulations fairly well, up to a factor of order unity in $\sigma$. Fits to the simulation data can be improved by adjusting $\eta$, noting that driven turbulence would effectively have a larger $\eta$ than decaying turbulence. Additionally, we note that Comisso & Sironi (Reference Comisso and Sironi2019) find that $\alpha$ increases with decreasing $\delta B/B_0$, consistent with the GME prediction.

Figure 4. Energy power-law index $\alpha$ versus magnetization $\sigma$ from the GME model in the UR limit (black; (3.4) with $\beta _c = 1/4\sigma$, $\delta B/B_0 = 1$, and $\eta = 1$) compared with empirical fitting formula $\alpha \approx \alpha _\infty + C_0 \sigma ^{-0.5}$ from PIC simulations of driven relativistic turbulence in Zhdankin et al. (Reference Zhdankin, Werner, Uzdensky and Begelman2017) (blue). Also shown is the approximate range of indices from PIC simulations of decaying relativistic turbulence from Comisso & Sironi (Reference Comisso and Sironi2019) (their figure 5 inset; red).

In addition to these quantitative comparisons, the GME model provides a resolution to several mysterious findings from kinetic simulations in the literature. Kinetic simulations of disparate processes (turbulence, magnetic reconnection and instabilities) often exhibit very similar power-law distributions for given plasma parameters. For example, PIC simulations find comparable non-thermal particle acceleration from magnetic dissipation with different current sheet geometries and ensuing dynamics (e.g. Werner & Uzdensky Reference Werner and Uzdensky2021). PIC simulations of relativistic turbulence find that non-thermal particle distributions have a similar shape for different driving mechanisms (electromagnetic, solenoidal, compressive, imbalanced), despite different time scales to arrive at those distributions (Zhdankin Reference Zhdankin2021b; Hankla et al. Reference Hankla, Zhdankin, Werner, Uzdensky and Begelman2022). The universality revealed by these findings may be explained by all of the processes having sufficient complexity to attain a GME state at similar energy scales.

Kinetic simulations also indicate that non-thermal particle distributions formed by relativistic magnetic reconnection (Werner & Uzdensky Reference Werner and Uzdensky2017; Guo et al. Reference Guo, Li, Daughton, Li, Kilian, Liu, Zhang and Zhang2021) and turbulence (Comisso & Sironi Reference Comisso and Sironi2019) are insensitive to the number of spatial dimensions (two dimensions vs three dimensions), despite different secondary instabilities, cascades, and trapping mechanisms (e.g. long-lived plasmoids in two dimensions). The GME framework predicts that the distributions are insensitive to the number of spatial dimensions, as long as there are sufficient degrees of freedom to attain such a state.

The GME model predicts similar acceleration efficiency in the NR regime as in the UR regime, as long as no factors arise that suppress entropy production at high energies. PIC simulations in the NR regime are generally constrained in scale separation, which may limit power-law formation. However, recent PIC simulations of NR magnetic reconnection provide some evidence for (steep) power-law distributions at low $\beta$ (Li et al. Reference Li, Guo, Li, Stanier and Kilian2019). Recent simulations of reduced kinetic models indicate efficient electron acceleration by NR magnetic reconnection at macroscopic scales when $\delta B/B_0$ is large enough (Arnold et al. Reference Arnold, Drake, Swisdak, Guo, Dahlin, Chen, Fleishman, Glesener, Kontar and Phan2021). Hybrid kinetic simulations of turbulence driven by the magnetorotational instability described by Kunz et al. (Reference Kunz, Stone and Quataert2016) exhibit an ion distribution that is well fit by a kappa distribution, as predicted by the GME model ((2.7)), although the index appears to be harder than predicted by (3.5) for the high values of plasma beta (possibly a consequence of non-magnetic sources of free energy). Hybrid kinetic simulations of Alfvénic turbulence may provide further tests of the model; published cases with $\delta B/B_0 \ll 1$ and moderate beta do not exhibit significant particle acceleration, consistent with (3.5) (e.g. Arzamasskiy et al. Reference Arzamasskiy, Kunz, Chandran and Quataert2019; Cerri, Arzamasskiy & Kunz Reference Cerri, Arzamasskiy and Kunz2021). Further benchmarking of the model in the NR regime is deferred to future work.

5. Conclusions and discussion

This Letter provides an analytical model for power-law non-thermal distributions that arise in collisionless plasmas due to generic energization processes. Unlike many works in the literature, this model is based on maximum-entropy principles (of a generalized, non-BG form), rather than the details of the microscopic mechanisms that ultimately enable (or counteract) the acceleration. The GME distribution ((2.5)(2.7)) provides a physically motivated reduced model for non-thermal particle populations. Likewise, the model for the power-law index $\alpha$ of the equilibrium distribution versus plasma parameters ((3.4) and (3.5)) may be a useful prescription for systems where magnetic dissipation is the key energizer (e.g. magnetic reconnection, turbulence and some instabilities). Further comparison with kinetic simulations will be essential for benchmarking the validity of the model and determining a more rigorous closure for $p_{c,\chi _d}/p_{c,\infty }$. Extension of the model to other processes (such as collisionless shocks) may require taking into account additional effects, such as particle escape and the self-consistent generation of magnetic fields.

There are several physical effects that may prevent the non-thermal GME state described in this Letter from being attained in some systems. First and foremost, the competition of entropy production mechanisms at multiple scales would invalidate the core assumption of the distribution being governed by $p_{c,\chi }$ at a single dominant value of the index $\chi = \chi _d$. Second, the time dependence of physical parameters (e.g. growing plasma beta amid dissipation) may cause $p_{c,\chi _d}/p_{c,\infty }$ to vary over time, leading to hysteresis that is not accounted for in the model. These assumptions may be relaxed in future iterations of the model.

Another effect that may prevent the GME state from being attained is anisotropy of the momentum distribution (at macroscopic scales). This may occur if the energization mechanisms are strongly anisotropic with respect to the large-scale magnetic field and pitch angle scattering is inefficient. Anisotropy reduces the entropy and thus prevents complete relaxation to the (isotropic) GME state.

The GME model indicates that particle acceleration will be inefficient if the mechanisms of entropy production are localized at energy scales near the thermal energy (Landau damping being one such example). This may be the situation for simplified or dynamically constrained setups such as the collision of Alfvén waves (Nättilä & Beloborodov Reference Nättilä and Beloborodov2022), two-dimensional NR magnetic reconnection (Dahlin, Drake & Swisdak Reference Dahlin, Drake and Swisdak2017; Li et al. Reference Li, Guo, Li, Stanier and Kilian2019) or magnetic reconnection in a strong guide field (Werner & Uzdensky Reference Werner and Uzdensky2017; Arnold et al. Reference Arnold, Drake, Swisdak, Guo, Dahlin, Chen, Fleishman, Glesener, Kontar and Phan2021).

Beyond numerical simulations, we note that in situ measurements of particle distributions in the solar wind may provide an additional test of the GME model in the NR regime. The non-thermal population of high-energy electrons (called the halo) is well fit by a kappa distribution, the parameters of which can be measured as a function of plasma conditions and distance from the Sun (e.g. Maksimovic et al. Reference Maksimovic, Zouganelis, Chaufray, Issautier, Scime, Littleton, Marsch, McComas, Salem and Lin2005; Stverak et al. Reference Štverák, Maksimovic, Trávníček, Marsch, Fazakerley and Scime2009; Abraham et al. Reference Abraham, Owen, Verscharen, Bakrania, Stansby, Wicks, Nicolaou, Whittlesey, Agudelo Rueda and Bercic2022). While the measured kappa indices at $\sim 1$ AU are reasonable in comparison with the GME model for magnetic dissipation (with $\beta \lesssim 1$ and $\delta B/B_0 \sim 1$), a careful analysis is necessary to take into account the distribution evolution from the solar corona and the possible effect of non-negligible collisions. Furthermore, the measured solar wind distribution also has a thermal component (called the core) and beamed component (called the strahl), which are not readily explained by the GME model.

Non-thermal particle acceleration is usually modelled in the language of quasilinear theory, involving concepts such as the Fokker–Planck equation (or its extensions), pitch angle scattering and trapping (or escape) mechanisms (see, e.g. Kulsrud & Ferrari Reference Kulsrud and Ferrari1971; Blandford & Eichler Reference Blandford and Eichler1987; Schlickeiser Reference Schlickeiser1989; Chandran Reference Chandran2000; Isliker, Vlahos & Constantinescu Reference Isliker, Vlahos and Constantinescu2017; Demidem, Lemoine & Casse Reference Demidem, Lemoine and Casse2020; Lemoine & Malkov Reference Lemoine and Malkov2020; Lemoine Reference Lemoine2021; Vega et al. Reference Vega, Boldyrev, Roytershteyn and Medvedev2022). The maximum-entropy model proposed in this Letter stands in stark contrast to these conventional approaches, being only weakly dependent on the physical ingredients responsible for enabling the GME state. The two frameworks are not mutually exclusive, however, as the GME distribution may be maintained by a broad class of Fokker–Planck diffusion/advection coefficients (e.g. Shizgal Reference Shizgal2018). It is important for future work to bridge the two mathematical frameworks.

Acknowledgements

The author thanks D. Uzdensky, M. Begelman, G. Werner and Y. Levin for helpful discussions during the early stages of this project.

Editor Roger Blandford thanks the referees for their advice in evaluating this article.

Declaration of interest

The authors report no conflict of interest.

Funding

The author is supported by a Flatiron Research Fellowship at the Flatiron Institute, Simons Foundation. Research at the Flatiron Institute is supported by the Simons Foundation.

References

REFERENCES

Abraham, J.B., Owen, C., Verscharen, D., Bakrania, M., Stansby, D., Wicks, R., Nicolaou, G., Whittlesey, P., Agudelo Rueda, J., Bercic, L., et al. 2022 Radial evolution of thermal and suprathermal electron populations in the slow solar wind from 0.13 to 0.5 au: Parker solar probe observations. Astrophys. J. 931 (2), 118.CrossRefGoogle Scholar
Alves, E.P., Zrake, J. & Fiuza, F. 2018 Efficient nonthermal particle acceleration by the kink instability in relativistic jets. Phys. Rev. Lett. 121 (24), 245101.CrossRefGoogle ScholarPubMed
Arnold, H., Drake, J., Swisdak, M., Guo, F., Dahlin, J., Chen, B., Fleishman, G., Glesener, L., Kontar, E., Phan, T., et al. 2021 Electron acceleration during macroscale magnetic reconnection. Phys. Rev. Lett. 126 (13), 135101.CrossRefGoogle ScholarPubMed
Arzamasskiy, L., Kunz, M.W., Chandran, B.D. & Quataert, E. 2019 Hybrid-kinetic simulations of ion heating in Alfvénic turbulence. Astrophys. J. 879 (1), 53.CrossRefGoogle Scholar
Aschwanden, M.J. 2002 Particle acceleration and kinematics in solar flares–a synthesis of recent observations and theoretical concepts (invited review). Space Sci. Rev. 101 (1-2), 1227.CrossRefGoogle Scholar
Ball, D., Sironi, L. & Özel, F. 2018 Electron and proton acceleration in trans-relativistic magnetic reconnection: dependence on plasma beta and magnetization. Astrophys. J. 862 (1), 80.CrossRefGoogle Scholar
Birn, J., Artemyev, A., Baker, D., Echim, M., Hoshino, M. & Zelenyi, L. 2012 Particle acceleration in the magnetotail and aurora. Space Sci. Rev. 173 (1-4), 49102.CrossRefGoogle Scholar
Blandford, R. & Eichler, D. 1987 Particle acceleration at astrophysical shocks: a theory of cosmic ray origin. Phys. Rep. 154 (1), 175.CrossRefGoogle Scholar
Bulanov, S., Esirkepov, T.Z., Kando, M., Koga, J., Kondo, K. & Korn, G. 2015 On the problems of relativistic laboratory astrophysics and fundamental physics with super powerful lasers. Plasma Phys. Rep. 41 (1), 151.CrossRefGoogle Scholar
Caprioli, D. & Spitkovsky, A. 2014 Simulations of ion acceleration at non-relativistic shocks. I. Acceleration efficiency. Astrophys. J. 783 (2), 91.CrossRefGoogle Scholar
Cerri, S.S., Arzamasskiy, L. & Kunz, M.W. 2021 On stochastic heating and its phase-space signatures in low-beta kinetic turbulence. Astrophys. J. 916 (2), 120.CrossRefGoogle Scholar
Chandran, B.D. 2000 Scattering of energetic particles by anisotropic magnetohydrodynamic turbulence with a Goldreich-Sridhar power spectrum. Phys. Rev. Lett. 85 (22), 4656.CrossRefGoogle ScholarPubMed
Comisso, L. & Sironi, L. 2018 Particle acceleration in relativistic plasma turbulence. Phys. Rev. Lett. 121 (25), 255101.CrossRefGoogle ScholarPubMed
Comisso, L. & Sironi, L. 2019 The interplay of magnetically dominated turbulence and magnetic reconnection in producing nonthermal particles. Astrophys. J. 886 (2), 122.CrossRefGoogle Scholar
Dahlin, J., Drake, J. & Swisdak, M. 2017 The role of three-dimensional transport in driving enhanced electron acceleration during magnetic reconnection. Phys. Plasmas 24 (9), 092110.CrossRefGoogle Scholar
Demidem, C., Lemoine, M. & Casse, F. 2020 Particle acceleration in relativistic turbulence: a theoretical appraisal. Phys. Rev. D 102 (2), 023003.CrossRefGoogle Scholar
Eyink, G.L. 2018 Cascades and dissipative anomalies in nearly collisionless plasma turbulence. Phys. Rev. X 8 (4), 041020.Google Scholar
Fermi, E. 1949 On the origin of the cosmic radiation. Phys. Rev. 75 (8), 1169.CrossRefGoogle Scholar
Fermi, E. 1954 Galactic magnetic fields and the origin of cosmic radiation. Astrophys. J. 119, 1.CrossRefGoogle Scholar
Fisk, L. & Gloeckler, G. 2007 Acceleration and composition of solar wind suprathermal tails. Space Sci. Rev. 130 (1-4), 153160.CrossRefGoogle Scholar
Guo, F., Li, X., Daughton, W., Li, H., Kilian, P., Liu, Y.-H., Zhang, Q. & Zhang, H. 2021 Magnetic energy release, plasma dynamics, and particle acceleration in relativistic turbulent magnetic reconnection. Astrophys. J. 919 (2), 111.CrossRefGoogle Scholar
Guo, F., Li, H., Daughton, W. & Liu, Y.-H. 2014 Formation of hard power laws in the energetic particle spectra resulting from relativistic magnetic reconnection. Phys. Rev. Lett. 113, 155005.CrossRefGoogle ScholarPubMed
Hankla, A.M., Zhdankin, V., Werner, G.R., Uzdensky, D.A. & Begelman, M.C. 2022 Kinetic simulations of imbalanced turbulence in a relativistic plasma: net flow and particle acceleration. Mon. Not. R. Astron. Soc. 509 (3), 38263841.CrossRefGoogle Scholar
Hoshino, M. 2013 Particle acceleration during magnetorotational instability in a collisionless accretion disk. Astrophys. J. 773 (2), 118.CrossRefGoogle Scholar
Isliker, H., Vlahos, L. & Constantinescu, D. 2017 Fractional transport in strongly turbulent plasmas. Phys. Rev. Lett. 119 (4), 045101.CrossRefGoogle ScholarPubMed
Kulsrud, R.M. & Ferrari, A. 1971 The relativistic quasilinear theory of particle acceleration by hydromagnetic turbulence. Astrophys. Space Sci. 12 (2), 302318.CrossRefGoogle Scholar
Kunz, M.W., Stone, J.M. & Quataert, E. 2016 Magnetorotational turbulence and dynamo in a collisionless plasma. Phys. Rev. Lett. 117 (23), 235101.CrossRefGoogle Scholar
Lemoine, M. 2021 Particle acceleration in strong MHD turbulence. Phys. Rev. D 104 (6), 063020.CrossRefGoogle Scholar
Lemoine, M. & Malkov, M.A. 2020 Power-law spectra from stochastic acceleration. Mon. Not. R. Astron. Soc. 499 (4), 49724983.CrossRefGoogle Scholar
Leubner, M.P. 2002 A nonextensive entropy approach to kappa-distributions. Astrophys. Space Sci. 282 (3), 573579.CrossRefGoogle Scholar
Ley, F., Riquelme, M., Sironi, L., Verscharen, D. & Sandoval, A. 2019 Stochastic ion acceleration by the ion-cyclotron instability in a growing magnetic field. Astrophys. J. 880 (2), 100.CrossRefGoogle Scholar
Li, X., Guo, F., Li, H., Stanier, A. & Kilian, P. 2019 Formation of power-law electron energy spectra in three-dimensional low-$\beta$ magnetic reconnection. Astrophys. J. 884 (2), 118.CrossRefGoogle Scholar
Livadiotis, G. & McComas, D. 2009 Beyond kappa distributions: exploiting tsallis statistical mechanics in space plasmas. J. Geophys. Res.: Space Phys. 114 (A11).Google Scholar
Livadiotis, G. & McComas, D. 2013 Understanding kappa distributions: a toolbox for space science and astrophysics. Space Sci. Rev. 175 (1), 183214.CrossRefGoogle Scholar
Maksimovic, M., Zouganelis, I., Chaufray, J.-Y., Issautier, K., Scime, E., Littleton, J., Marsch, E., McComas, D., Salem, C., Lin, R., et al. 2005 Radial evolution of the electron distribution functions in the fast solar wind between 0.3 and 1.5 au. J. Geophys. Res.: Space Phys. 110 (A9).Google Scholar
Milovanov, A. & Zelenyi, L. 2000 Functional background of the tsallis entropy: “coarse-grained” systems and “kappa” distribution functions. Nonlinear Process. Geophys. 7 (3/4), 211221.CrossRefGoogle Scholar
Nalewajko, K., Zrake, J., Yuan, Y., East, W.E. & Blandford, R.D. 2016 Kinetic simulations of the lowest-order unstable mode of relativistic magnetostatic equilibria. Astrophys. J. 826, 115.CrossRefGoogle Scholar
Nättilä, J. & Beloborodov, A.M. 2022 Heating of magnetically dominated plasma by Alfvén-wave turbulence. Phys. Rev. Lett. 128 (7), 075101.CrossRefGoogle ScholarPubMed
Parker, E. & Tidman, D. 1958 Suprathermal particles. Phys. Rev. 111 (5), 1206.CrossRefGoogle Scholar
Pierrard, V. & Lazar, M. 2010 Kappa distributions: theory and applications in space plasmas. Solar Phys. 267 (1), 153174.CrossRefGoogle Scholar
Rényi, A. 1961 On measures of entropy and information. In Proceedings of the Fourth Berkeley Symposium on Mathematical Statistics and Probability, Volume 1: Contributions to the Theory of Statistics, pp. 547–561. University of California Press.Google Scholar
Schekochihin, A., Cowley, S., Dorland, W., Hammett, G., Howes, G., Quataert, E. & Tatsuno, T. 2009 Astrophysical gyrokinetics: kinetic and fluid turbulent cascades in magnetized weakly collisional plasmas. Astrophys. J. Suppl. Ser. 182 (1), 310.CrossRefGoogle Scholar
Schlickeiser, R. 1989 Cosmic-ray transport and acceleration. I-derivation of the kinetic equation and application to cosmic rays in static cold media. II-cosmic rays in moving cold media with application to diffusive shock wave acceleration. Astrophys. J. 336, 243293.CrossRefGoogle Scholar
Schroeder, J.W., Howes, G., Kletzing, C., Skiff, F., Carter, T., Vincena, S. & Dorfman, S. 2021 Laboratory measurements of the physics of auroral electron acceleration by Alfvén waves. Nat. Commun. 12 (1), 19.CrossRefGoogle ScholarPubMed
Shizgal, B.D. 2018 Kappa and other nonequilibrium distributions from the Fokker-Planck equation and the relationship to tsallis entropy. Phys. Rev. E 97 (5), 052144.CrossRefGoogle ScholarPubMed
Sironi, L., Rowan, M.E. & Narayan, R. 2021 Reconnection-driven particle acceleration in relativistic shear flows. Astrophys. J. Lett. 907 (2), L44.CrossRefGoogle Scholar
Sironi, L. & Spitkovsky, A. 2010 Particle acceleration in relativistic magnetized collisionless electron-ion shocks. Astrophys. J. 726 (2), 75.CrossRefGoogle Scholar
Sironi, L. & Spitkovsky, A. 2014 Relativistic reconnection: an efficient source of non-thermal particles. Astrophys. J. Lett. 783 (1), L21.CrossRefGoogle Scholar
Spitkovsky, A. 2008 Particle acceleration in relativistic collisionless shocks: fermi process at last? Astrophys. J. Lett. 682 (1), L5.CrossRefGoogle Scholar
Štverák, Š., Maksimovic, M., Trávníček, P.M., Marsch, E., Fazakerley, A.N. & Scime, E.E. 2009 Radial evolution of nonthermal electron populations in the low-latitude solar wind: helios, cluster, and ulysses observations. J. Geophys. Res.: Space Phys. 114 (A5).Google Scholar
Tsallis, C. 1988 Possible generalization of Boltzmann-Gibbs statistics. J. Stat. Phys. 52 (1), 479487.CrossRefGoogle Scholar
Uzdensky, D.A. 2022 Relativistic non-thermal particle acceleration in two-dimensional collisionless magnetic reconnection. J. Plasma Phys. 88 (1).CrossRefGoogle Scholar
Vega, C., Boldyrev, S., Roytershteyn, V. & Medvedev, M. 2022 Turbulence and particle acceleration in a relativistic plasma. Astrophys. J. Lett. 924 (1), L19.CrossRefGoogle Scholar
Werner, G.R. & Uzdensky, D.A. 2017 Nonthermal particle acceleration in 3d relativistic magnetic reconnection in pair plasma. Astrophys. J. Lett. 843 (2), L27.CrossRefGoogle Scholar
Werner, G.R. & Uzdensky, D.A. 2021 Reconnection and particle acceleration in three-dimensional current sheet evolution in moderately magnetized astrophysical pair plasma. J. Plasma Phys. 87 (6).CrossRefGoogle Scholar
Werner, G.R., Uzdensky, D.A., Begelman, M.C., Cerutti, B. & Nalewajko, K. 2018 Non-thermal particle acceleration in collisionless relativistic electron-proton reconnection. Mon. Not. R. Astron. Soc. 473, 48404861.CrossRefGoogle Scholar
Werner, G.R., Uzdensky, D.A., Cerutti, B., Nalewajko, K. & Begelman, M.C. 2016 The extent of power-law energy spectra in collisionless relativistic magnetic reconnection in pair plasmas. Astrophys. J. Lett. 816, L8.CrossRefGoogle Scholar
Wong, K., Zhdankin, V., Uzdensky, D.A., Werner, G.R. & Begelman, M.C. 2020 First-principles demonstration of diffusive-advective particle acceleration in kinetic simulations of relativistic plasma turbulence. Astrophys. J. Lett. 893 (1), L7.CrossRefGoogle Scholar
Yoo, J., Yamada, M., Ji, H. & Myers, C.E. 2013 Observation of ion acceleration and heating during collisionless magnetic reconnection in a laboratory plasma. Phys. Rev. Lett. 110 (21), 215007.CrossRefGoogle Scholar
Zhdankin, V. 2021 a Generalized entropy production in collisionless plasma flows and turbulence. arXiv:2110.07025.Google Scholar
Zhdankin, V. 2021 b Particle energization in relativistic plasma turbulence: solenoidal versus compressive driving. Astrophys. J. 922 (2), 172.CrossRefGoogle Scholar
Zhdankin, V., Uzdensky, D.A., Werner, G.R. & Begelman, M.C. 2018 System-size convergence of nonthermal particle acceleration in relativistic plasma turbulence. Astrophys. J. Lett. 867 (1), L18.CrossRefGoogle Scholar
Zhdankin, V., Werner, G.R., Uzdensky, D.A. & Begelman, M.C. 2017 Kinetic turbulence in relativistic plasma: From thermal bath to nonthermal continuum. Phys. Rev. Lett. 118, 055103.CrossRefGoogle ScholarPubMed
Figure 0

Figure 1. The energy power-law index $\alpha$ of the GME distribution versus the ratio between the entropy-maximizing momentum $p_{c,\chi _d}$ and the typical momentum $p_{c,\infty }$ ((3.1) and (3.2)). The UR (red) and NR (blue) limits are shown separately, with dashed lines indicating singularities.

Figure 1

Figure 2. The energy power-law index $\alpha$ of the GME distribution versus (pre-dissipation) physical parameters $\eta (\delta B/B_0)^{2} / \beta _c$ for the magnetic dissipation model. The UR (red; (3.4)) and NR (blue; (3.5)) limits are shown separately.

Figure 2

Figure 3. Energy distribution $F(E)$ in PIC simulation of relativistic turbulence for various times, taken from Zhdankin et al. (2018), compared with the GME distribution (dashed; (2.6)) with $\chi _d = 0.815$.

Figure 3

Figure 4. Energy power-law index $\alpha$ versus magnetization $\sigma$ from the GME model in the UR limit (black; (3.4) with $\beta _c = 1/4\sigma$, $\delta B/B_0 = 1$, and $\eta = 1$) compared with empirical fitting formula $\alpha \approx \alpha _\infty + C_0 \sigma ^{-0.5}$ from PIC simulations of driven relativistic turbulence in Zhdankin et al. (2017) (blue). Also shown is the approximate range of indices from PIC simulations of decaying relativistic turbulence from Comisso & Sironi (2019) (their figure 5 inset; red).