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Optimising an array of Cherenkov telescopes in Australia for the detection of TeV gamma-ray transients

Published online by Cambridge University Press:  24 October 2024

Simon Lee*
Affiliation:
School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, SA, Australia
Sabrina Einecke
Affiliation:
School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, SA, Australia
Gavin Rowell
Affiliation:
School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, SA, Australia
Csaba Balazs
Affiliation:
School of Physics and Astronomy, Monash University, Melbourne, VIC, Australia
Jose Bellido
Affiliation:
School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, SA, Australia
Shi Dai
Affiliation:
School of Science, Western Sydney University, Penrith, NSW, Australia
Miroslav D. Filipović
Affiliation:
School of Science, Western Sydney University, Penrith, NSW, Australia
Violet Harvey
Affiliation:
School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, SA, Australia
Padric McGee
Affiliation:
School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, SA, Australia
Peter Marinos
Affiliation:
School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, SA, Australia
Nicholas Tothill
Affiliation:
School of Science, Western Sydney University, Penrith, NSW, Australia
Martin White
Affiliation:
School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, SA, Australia
*
Corresponding author: Simon Lee; Email: [email protected]
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Abstract

As TeV gamma-ray astronomy progresses into the era of the Cherenkov Telescope Array (CTA), instantaneously following up on gamma-ray transients is becoming more important than ever. To this end, a worldwide network of Imaging Atmospheric Cherenkov Telescopes has been proposed. Australia is ideally suited to provide coverage of part of the Southern Hemisphere sky inaccessible to H.E.S.S. in Namibia and the upcoming CTA-South in Chile. This study assesses the sources detectable by a small, transient-focused array in Australia based on CTA telescope designs. The TeV emission of extragalactic sources (including the majority of gamma-ray transients) can suffer significant absorption by the extragalactic background light. As such, we explored the improvements possible by implementing stereoscopic and topological triggers, as well as lowered image cleaning thresholds, to access lower energies. We modelled flaring gamma-ray sources based on past measurements from the satellite-based gamma-ray telescope Fermi-LAT. We estimate that an array of four Medium-Sized Telescopes (MSTs) would detect $\sim$24 active galactic nucleus flares >5$\sigma$ per year, up to a redshift of $z\approx1.5$. Two MSTs achieved $\sim$80–90% of the detections of four MSTs. The modelled Galactic transients were detectable within the observation time of one night, 11 of the 21 modelled gamma-ray bursts were detectable, as were $\sim$10% of unidentified transients. An array of MST-class telescopes would thus be a valuable complementary telescope array for transient TeV gamma-ray astronomy.

Type
Research Article
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, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of Astronomical Society of Australia

1. Introduction

Extending multi-wavelength studies to GeV and TeV energies has allowed us to probe the nature of the universe’s most extreme sources, environments, and phenomena. These astronomical domains also act as our highest-energy laboratories for exploring particle physics beyond the standard model. There are however deficiencies in the field compared to those concerned with other electromagnetic wavelengths. In particular, there is at present limited capacity to instantaneously follow up on and continuously monitor short-lived, variable, transient phenomena over a 24-hr period.

The flares of active galactic nuclei (AGNs) make up the vast majority of known gamma-ray transients above 10 GeV (Abdollahi et al. Reference Abdollahi2017). The great distance of most AGNs tends to make their TeV emissions subject to significant absorption by the extragalactic background light (EBL). Gamma-ray bursts (GRBs), now understood to be either from compact stellar mergers or the core collapse of massive stars, are similarly of extragalactic origin and are generally very short-lived (lasting milliseconds to, at most, days). Alongside Galactic transients like novae, pulsars, and binaries, there is a substantial collection of transient events which are either associated with objects of unknown classification, or not associated with any counterpart. Thoroughly studying these phenomena at high energies is challenging, and there is much opportunity for new discovery.

Table 1. Simulation parameters used in CORSIKA. Particle energies were drawn from the distribution $dN/dE \propto E^{-\Gamma}$ . Diffuse emission was generated within a ‘view cone’ of radius $r_{\mathrm{cone}}$ . Shower core positions were evenly distributed in a circular area of radius $r_{\mathrm{scatter}}$ . Showers were re-used $n_{\mathrm{reuse}}$ times with their core positions varied, providing alternate views of the shower.

There are three broad categories of telescopes observing these photon energies, each with their advantages and limitations. Fermi-LATFootnote a is a satellite-based direct-detection telescope providing quasi-continuous all-sky monitoring from 20 MeV to $\sim$ 1 TeV (Atwood et al. Reference Atwood2013). Its small collection area of ${<}$ 1 m $^2$ (Maldera et al. Reference Maldera2021) however results in day-scale time resolution for all but the most extreme sources, and it has low sensitivity to emission above 10 GeV. Water Cherenkov detectors, such as HAWC,Footnote b LHAASO,Footnote c and the proposed SWGO,Footnote d measure Cherenkov radiation generated in water from passing charged particles created in gamma-ray- (or cosmic-ray-) induced particle showers in the atmosphere (HAWC Collaboration 2015; Zhang Reference Zhang2021; Abreu et al. Reference Abreu2019). These benefit from effectively continuous operation, a field-of-view covering much of the overhead sky, and energy ranges extending up to PeV energies. They are however not sensitive to short-timescale flux variations and suffer from poor angular resolution at sub-TeV energies (Wang et al. Reference Wang2018). Lastly, Imaging Atmospheric Cherenkov Telescopes (IACTs), such as MAGIC,Footnote e H.E.S.S.,Footnote f and VERITAS,Footnote g conversely image the Cherenkov radiation from particle showers in air, collected with large (typically segmented) mirror dishes (Tridon et al. Reference Tridon2010; Ohm & Wagner Reference Ohm and Wagner2023; VERITAS Collaboration Reference Collaboration2020). These are the most suitable telescopes for observing gamma-ray sources with low flux at short timescales, but have a comparatively small field of view and are restricted to night time observations in favourable weather.

The Cherenkov Telescope ArrayFootnote h (CTA) will be a pair of large IACT arrays in the Northern and Southern Hemispheres. With class-leading sensitivity and angular resolution and an energy range extending from 20 GeV to $>$ 300 TeV, it will be the world’s premier gamma-ray observatory (The CTA Consortium 2018). Whilst transients are a key science project of the CTA Observatory, its schedule will be heavily influenced by surveys and deep observations.

Currently it is not possible to instantaneously follow up on gamma-ray transients with appropriately sensitive telescopes unless they are conveniently visible to an IACT. A solution to this deficiency would be a worldwide network of such telescopes, complementing those which already exist. Indeed, the idea for a large-scale network of IACTs has been proposed multiple times before (Lorenz Reference Lorenz2005; Backes et al. Reference Backes2009; Ruhe et al. Reference Ruhe2019) and the performance of a small IACT array for such observations has similarly been studied (Plyasheshnikov et al. Reference Plyasheshnikov2000; Kifune Reference Kifune2001; Yoshikoshi Reference Yoshikoshi2005; Colin et al. Reference Colin2007; Rowell et al. Reference Rowell2008; Stamatescu et al. Reference Stamatescu2011). This paper is a continuation of previous work on the performance of a hypothetical small IACT array sited in Australia (Lee et al. Reference Lee2022), a crucial and currently un-utilised location for obtaining Southern Hemisphere sky coverage to which it has previously been host (Clay et al. Reference Clay1989; Armstrong et al. Reference Armstrong1999; Enomoto et al. Reference Enomoto2002).

In this study, we have investigated methods of improving the performance of a small IACT array focused on gamma-ray transient detections. In particular, we have assessed the effect of using alternate telescope triggers to allow summed-pixel-level trigger thresholds to be decreased, ostensibly lowering the array’s energy threshold to observe more low-energy gamma rays, without increasing accidental triggers due to light from the night sky background (NSB). Through implementing the best of these results, we explore the array’s suitability for detection and observation of a number of gamma-ray transients as recorded by Fermi-LAT in the Fermi All-sky Variability Analysis (FAVA) catalogue (Abdollahi et al. Reference Abdollahi2017) and the Fermi-LAT Second Gamma-Ray Burst Catalog (FERMILGRB) catalogue (Ajello et al. Reference Ajello2019).

2. Method

This work builds on Lee et al. (Reference Lee2022) which describes the scientific motivation, background, and technical methods in more detail. We simulated telescope arrays as per Fig. 1. Four-telescope arrays used a 277 m baseline and an inter-telescope distance of 160 m using telescopes labelled 1, 2, 3, and 4. We compared two-telescope arrays at baselines of 80 m (1 & 5), 160 m (1 & 2), and 277 m (2 & 3). This study primarily focused on the detection of transient phenomena at comparatively lower energies (below 1 TeV), so the simulated energy range of the test data was set to 0.04–3 TeV, and the spectral index to 2.5 (see Table 1).

Figure 1. Arrangement of IACTs (shown as numbers) used in simulations, allowing for multiple different configurations of baseline distances and number of telescopes to be studied.

We generated Monte Carlo simulations of gamma-ray and proton extensive air showers with CORSIKA Footnote i (Heck et al. Reference Heck1998) centred at a 20 $^{\circ}$ zenith angle. The resulting Cherenkov photons were passed into simulations of telescope arrays based on CTA Prod-5Footnote j designs (CTAO, CTAC 2021; Bernlöhr et al. Reference Bernlöhr2022) of the 12-metre Medium-Sized Telescope (MST) and 4-metre Small-Sized Telescope (SST), further described in Appendix E. We used tools from ctapipe (Kosack et al. Reference Kosack2021) to extract images from the simulated telescope data, clean them, and perform second-moment Hillas analysis (Hillas Reference Hillas1985) to create datasets for training and applying event reconstruction models. Quality cuts were made based on some of the Hillas parameters (described in Section 2.2). We trained random forest models for reconstructing particle energy and direction and gamma/hadron separation on the diffuse gamma-ray dataset and a portion of the diffuse proton dataset using aict-tools (Nöthe et al. Reference Nöthe2019). These models were applied on the point-source gamma-ray and remaining diffuse proton datasets. For each of 5 bins per decade in energy, performance cuts of a minimum gamma score (conformity to a gamma ray) and maximum $\theta^2$ (angular separation from reconstructed direction to the expected source position) were chosen for optimal differential sensitivity for a 50-hr point-source observation.

We chose a maximum simulated energy of 3 TeV, as detection relies on the counted number of gamma rays, and the power law spectra of transient sources typically provide few TeV photons. We simulated the arrays at sea level, as the availability of suitable high-altitude sites in Australia is limited. When determining performance cuts, we used the Bayesian-derived method outlined in Knoetig (Reference Knoetig2014) for significance calculations from on- and off-region counts. Using this method, performance cuts were only considered if at least 1 on-region and 1 off-region event survived in a given energy bin, instead of 10 as with the method from Li & Ma (Reference Li and Ma1983).

2.1. Trigger

To improve the performance of the arrays for gamma-ray transient detection, we sought to decrease the summed-pixel-level trigger threshold (discriminator threshold, DT) to capture the dimmer Cherenkov light of gamma-ray air showers with lower energies. Typically, this would increase the rate at which the telescope is triggered accidentally by light from the NSB, but this effect can be mitigated with alternative trigger configurations.

In the standard trigger scenario for a given telescope (hereby labelled as ‘default’) an event would be saved if a cluster of pixels anywhere in the camera exceeded a given voltage for a given amount of time. We tested a simple topological (‘topo’) trigger, only using a circular region of pixels in the centre of each telescope’s camera for potential triggers. This is a technique first implemented by Lucarelli et al. (Reference Lucarelli2003) with the now-decommissioned HEGRAFootnote k IACT array. Low-energy showers are only visible at comparatively small core distances from the array and thus their positions in the camera are clustered closer to the centre. This technique requires the expected source position to be known and is not suitable for surveys. We chose the smallest circular areas that would trigger on all gamma rays seen by the default trigger below 1 TeV. These covered 33.6% of the SST camera and 48.1% of the MST camera (shown in Fig. 2).

Figure 2. Central circular regions of pixels (orange) used in the SST and MST cameras for the simulated topological trigger. See Appendix E for details on the cameras.

In our previous study (Lee et al. Reference Lee2022) a simple monoscopic (‘mono’) trigger was used, requiring only one telescope in the array to trigger for an event to be saved. We additionally tested a stereoscopic (‘stereo’) trigger, requiring at least two telescopes to be triggered within a short window of time. This method is currently implemented at telescopes such as MAGIC (Dazzi et al. Reference Dazzi2021). Cherenkov light from an air shower will arrive at two nearby telescopes almost simultaneously, whereas NSB light arrives randomly. Accidental NSB triggers are thus minimised with smaller trigger window times, however gamma-ray showers may not trigger the array if the time window is too short. This limit depends on the distance between telescopes and the source position in the sky. We chose an array trigger window of 50 ns to minimise NSB triggers while keeping >99% of simulated gamma rays in all array configurations.

Lastly, we tested the combination of the stereo and topo triggers, requiring at least two telescopes to trigger in the circular regions of pixel within the 50 ns trigger window time. For each combination of telescope size (SST or MST), number of telescopes (2 or 4), and trigger setup, we lowered the DT so as to equalise the rate at which the array triggered on NSB with that of the original (‘mono default’) trigger. The effect of DT on NSB array trigger rate is demonstrated in Fig. 3.

Figure 3. Rate of trigger for the whole array due to night sky background (NSB) for 4 $\times$ MST and 4 $\times$ SST arrays as a function of pixel-level discriminator threshold (DT). Labels are described in Section 2.1. The horizontal dashed line indicates the NSB trigger rate using the mono default trigger. Vertical dashed lines indicate the corresponding DT to result in the same NSB trigger rate.

Figure 4. Northern and Southern Hemisphere flares in the FAVA weekly flare catalogue up to 2023-02-20, showing their photon flux and spectral index in the Fermi-LAT high-energy band (0.8–300 GeV). Only local maxima are included for multi-week flares. The Galactic source categories are HMB (high mass binary), LMB (low-mass binary), PWN (pulsar wind nebula), PSR (pulsar), and NOV (nova), listed with their respective number of flares/sources.

2.2. Cleaning and quality cuts

We tested multiple lowered cleaning thresholds in the two-stage tail cuts cleaning process. Pixels survive this process if they exceed a high ‘core’ threshold of extracted photoelectrons (p.e.) or a lower ‘boundary’ threshold if they are adjacent to a core pixel. The default core/boundary thresholds used in Lee et al. (Reference Lee2022) were 10/5 p.e. for MSTs, and 3/1.5 p.e. for SSTs. Reducing these thresholds increases the number of events (of both gamma rays and protons) that survive cleaning, but can introduce noise artefacts. We also tested excluding the quality cut on total extracted photoelectrons (intensity). The other quality cuts were kept consistent: leakage Footnote l ( ${<}0.2$ ), surviving pixels ( ${\geq}6$ ), and number of islands Footnote m ( ${\leq}3$ ).

2.3. Transients

The FAVA catalogue (Abdollahi et al. Reference Abdollahi2017) is the largest database of GeV gamma-ray transient measurements. The catalogue currently includes flares from 2008-08-03 to 2016-01-04. We obtained further flare data up to 2023-02-20 from the FAVA weekly analysis website.Footnote n The catalogue results from an unbiased search of the whole sky using the Large Area Telescope (LAT) on the Fermi Gamma-ray Space Telescope satellite. From the detected photons, a likelihood analysis fit is performed to discover flares with a significance greater than 6 $\sigma$ (pre-trial) and to measure their spectral index and flux in two energy bins (100–800 MeV, and 800 MeV–300 GeV).

We attempted to associate as many flares as possible to known sources and with published redshifts. We assigned these through association of the following databases: the table from Foschini et al. (Reference Foschini2022), the 4LAC-DR2 catalogue (Lott et al. Reference Lott2020; Ajello et al. Reference Ajello2020), the 3LAC catalogue (Ackermann et al. Reference Ackermann2015), BZCAT (Massaro et al. Reference Massaro2015), and SIMBAD (Wenger et al. Reference Wenger2000). Aspects of the flares are shown in Fig. 4.

Figure 5. Number (upper) and percentage (lower) of unique flares of AGNs (left) and total AGNs (right) from the FAVA catalogue at $-60^{\circ} \le \mathrm{dec} \le 0^{\circ}$ detectable at $>$ 5 $\sigma$ per year from 2010 to 2022 by the best-performing simulated configurations of two or four MSTs or SSTs (Table 2). Flares were simulated being observed for four hours at twice their weekly average flux.

When modelling the flares, we assumed that the intrinsic energy spectrum of these sources continued with the same spectral index above 300 GeV to the simulated maximum of 3 TeV and modelled the intrinsic spectral energy distribution of flares as a power law:

\[\frac{dN}{dE}=N_0 \left(\frac{E}{1\,\mathrm{TeV}}\right)^{-\Gamma}\]

where $N_0$ is the normalisation constant at 1 TeV and $\Gamma$ is the spectral index. For flares associated with sources of known redshift, we implemented spectral absorption due to the EBL using the model from Inoue et al. (Reference Inoue2013). The temporal component of the modelling process is discussed for each source class in subsequent sections. Once the spectrum of a source was modelled, it was convolved with the effective area of the simulated telescope arrays to estimate cosmic-ray background counts (from simulated protons and from the electron spectrum described in Hooper & Linden Reference Hooper and Linden2018) and gamma-ray counts for given observation times. Finally, we calculated the detection significance using the method described by Knoetig (Reference Knoetig2014), and significances greater than 5 $\sigma$ were considered a successful detection.

2.3.1. AGN flares

In total there were 9 910 FAVA flares considered in this study, of which 7 892 had spectral parameters fitted for the high-energy bin (0.8–300 GeV). Many sources were detected flaring in consecutive weeks, so flares for a given source were selected only if they had a higher measured flux than in adjacent weeks. This resulted in 4 826 ‘unique’ flares, 4 088 of which were associated with known sources. The vast majority (3 994, 97.7%) of these were AGN flares, 3 868 of which were from 514 AGNs with published redshifts. The distribution of spectral parameters of these flares in their respective categories is shown in Fig. 4.

To only consider events occurring at relatively small zenith angles (where IACT performance is optimal) for a Southern Hemisphere array at a latitude of 30 $^{\circ}$ South, we restricted the catalogue to sources with a declination between $-60^{\circ}$ and $0^{\circ}$ , limiting us to 1 694 unique flares from 232 AGN with known redshift. These flares were modelled with static fluxes over 4-hr and 8-hr observation periods, which are (respectively) conservative and optimistic durations for a single night. The FAVA catalogue only provides weekly average flux values, and one can assume that a flare would likely rise and decay in brightness over shorter periods of time. Fig. A1 demonstrates scenarios that result in different relative fluxes 26 hr into a Fermi-LAT week, i.e. in the middle of a 4-hr observation starting 24 hr into the week. We modelled AGN flares with static fluxes scaled to 1 $\times$ , 2 $\times$ , and 4 $\times$ their weekly averages. A scaling factor of 1 $\times$ is a pessimistic model, which either assumes that the flare did not vary in brightness over the course of a week, or was observed some time after the peak of its rapidly varying flux. A 2 $\times$ scaling factor is conservative, whereas 4 $\times$ is optimistic. For the primary results of this study, we considered an observation time of 4 hr per flare at a flux twice that of the weekly average as a conservative model of AGN observability.

2.3.2. Galactic flares

In the selected catalogue, 81 high-energy gamma-ray flares from 16 sources were identified as originating from Galactic sources (shown in Fig. 4, right), 12 of which were from 5 sources in the Southern Hemisphere sky.

The gamma-ray binary PSR B1259-63/LS 2883 consists of a pulsar in an eccentric orbit with a bright companion star, orbiting with a period of approximately 3 years and 5 months (H.E.S.S. Collaboration Reference Collaboration2020). It was associated with 8 flares in the catalogue from its 2010, 2014, and 2021 periastron passages, however none of these flares surpassed the >4 $\sigma$ /TS>18 (test statistic) cut in the high-energy band and were only included due to their >6 $\sigma$ /TS>39 detection at low energies. Its 2017 periastron is not recorded in the FAVA catalogue, possibly due to an incorrect association with HESS J1303-631. These flaring episodes are visible to IACTs, so we based our spectral energy distribution model of this binary on the 2014 periastron passage 8-day fit provided in H.E.S.S. Collaboration (Reference Collaboration2020), with a spectral index of $\Gamma=2.7$ and a static normalisation constant of $N_0 = 2.6\times10^{-12}$ TeV $^{-1}$ cm $^{-2}$ s $^{-1}$ .

The classical nova V1324 Scorpii had an outburst in 2012, which was detected by Fermi-LAT. The week of Fermi’s detection coincided with a bright plateau in the optical lightcurve (Finzell et al. Reference Finzell2018). We modelled this flare using its parameters in the FAVA catalogue: a spectral index of $\Gamma=2.54$ and a static normalisation constant of $N_0 = 1.645\times10^{-12}$ TeV $^{-1}$ cm $^{-2}$ s $^{-1}$ .

V1369 Centauri was a classical nova that erupted in 2013, first discovered by an amateur Australian astronomer (Seach Reference Seach2013) and subsequently followed up by Fermi-LAT, which detected rising gamma-ray levels for several successive days (Cheung et al. Reference Cheung2016). We modelled this nova flare using the recorded spectral parameters from Fermi-LAT: a spectral index of $\Gamma=2.31$ and a static normalisation constant of $N_0=1.52\times10^{-12}$ TeV $^{-1}$ cm $^{-2}$ s $^{-1}$ .

The gamma-ray source HESS J1303-631 was serendipitously discovered in 2004 at TeV energies (Aharonian et al. Reference Aharonian2005), identified as a pulsar wind nebula in 2010 (H.E.S.S. Collaboration Reference Collaboration2012), and later detected by Fermi-LAT at GeV energies (Acero et al. Reference Acero2013). The appearance of HESS J1303-631 as a flaring source in the FAVA catalogue is perhaps erroneous, as it coincides with the (otherwise omitted) 2017 periastron of PSR B1259-63. This is not improbable given the 1 $^{\circ}$ distance between the two sources and the angular resolution of Fermi-LAT. Nevertheless, H.E.S.S. Collaboration (Reference Collaboration2012) provides a model for the spectral energy distribution of the typical state of HESS J1303-631. We modelled it using their power law fit with no cutoff (the inclusion of which is negligible below 10 TeV) using a spectral index of $\Gamma=2.44$ and a static normalisation constant of $N_0=5.9\times10^{-12}$ TeV $^{-1}$ cm $^{-2}$ s $^{-1}$ .

The Fermi-LAT source 4FGL J1813.1-1737e has been associated with the pulsar wind nebula HESS J1813-178. Its single high-energy flare in the FAVA catalogue exceeded 4 $\sigma$ in the high-energy bin, however its inclusion in the database was flagged as potentially being an artefact. The spectral energy distribution of HESS J1813-178 in a non-flaring state was modelled by Xin & Guo (Reference Xin and Guo2021), connecting the measured emission from Fermi, H.E.S.S., and MAGIC. We modelled it here based on this fit, with a spectral index of $\Gamma=2.07$ and a static normalisation constant of $N_0=2.55\times10^{-12}$ TeV $^{-1}$ cm $^{-2}$ s $^{-1}$ .

2.3.3. Gamma-Ray bursts

The FERMILGRB catalogue (Ajello et al. Reference Ajello2019) is a list of GRBs detected by Fermi-LAT, currently spanning from 2008-08-04 to 2022-06-02. It provides measured photon fluxes (between 100 MeV and 100 GeV) and fitted spectral indices for each GRB, as well as the time window in which the corresponding observation was taken. The catalogue includes 231 GRBs, of which 120 were in the Southern Hemisphere. However, only 21 have redshifts provided. These varied from redshifts of 0.05 to 4.35, with Fermi-LAT observation windows lasting between 26 s and 3 hr. We modelled these GRBs using their flux, spectral index (assuming it stays constant from 100 GeV to 3 TeV), observation window end time (after which no observable gamma rays are guaranteed), and redshift. We implemented a decay rate of $t^{-1.2}$ , based on the observations of GRB 180720B by Abdalla et al. (Reference Abdalla2019). The maximum slew time ( $>$ 30 $^{\circ}$ elevation) for SSTs is 70 s and 90 s for MSTs (CTAO 2023), so the observation start times were modelled to begin this long after a trigger from the Gamma-ray Burst Monitor (GBM) on Fermi. A graphical depiction of this modelling process is provided in Fig. D1.

3. Results

The performance impacts of altering telescope array variables are contextual to the desired scientific goals. Thus, the trigger investigation results are discussed here intertwined with their application for transient discovery.

3.1. AGN flares

Fig. 5 shows the yearly number and percentage of detectable flares and sources, with 4 hr of observation per flare and static fluxes 2 $\times$ their weekly average, at declinations between $-60^{\circ}$ and $0^{\circ}$ . Fig. 6 shows their spectral properties. The redshift distribution of these flares is shown in Fig. B1. The telescope configurations and array triggers that resulted in the most detected AGN flares are detailed in Table 2, and are the arrays used in Fig. 5. As presented below, multiple arrays with different configurations performed almost equally well.

  • For four MSTs, the stereoscopic default trigger performed best with 331 flares detected from 77 sources, trailed only by the stereoscopic topological trigger with 327 flares. The farthest detected AGN had a redshift of $z=1.52$ .

  • For two MSTs, the stereoscopic topological trigger with a 160 m baseline allowed for detection of 278 flares from 69 sources, closely followed by the simplest monoscopic default trigger with 277 flares. The farthest detected AGN had a redshift of $z=1.52$ .

  • For four SSTs, the monoscopic topological trigger performed best detecting 78 flares from 33 sources, outperforming the stereoscopic topological trigger which saw 75 flares. The farthest detected AGN had a redshift of $z=0.69$ .

  • For two SSTs, the monoscopic default trigger with a 160 m baseline performed best, detecting 69 of the 1 833 flares from 28 unique sources. Using a monoscopic topological trigger, or a monoscopic default trigger with an 80 m baseline, resulted in 68 and 67 flares, respectively. The farthest detected AGN had a redshift of $z=0.54$ .

Table 2. Configurations of the best-performing arrays of two and four SSTs and MSTs for observing AGN flares in the Southern Hemisphere. A limited number of cleaning thresholds (listed as core/boundary thresholds) were tested. For comparison, thresholds used in Lee et al. (Reference Lee2022) were 10/5 p.e. for MSTs and 3/1.5 p.e. for SSTs.

Figure 6. High-energy photon flux and spectral index of unique FAVA AGN flares at $-60^{\circ} \le \mathrm{dec} \le 0^{\circ}$ from August 2008 to February 2023. Highlighted points show flares detectable >5 $\sigma$ for the configurations used in Fig. 5, for 4-hr observations and flux 2 $\times$ the weekly average, with total flare counts listed in brackets.

Within the assumptions of this modelling, there was no significant benefit to using either a stereoscopic or topological trigger for an array with only two telescopes. A 4 $\times$ SST array using a topological trigger detected $\sim$ 9% more AGN flares than when using the default trigger setup, but a stereoscopic trigger provided no increase. A 4 $\times$ MST array with a stereoscopic trigger detected $\sim$ 4% more AGN flares than with the default trigger, but a topological trigger was not beneficial. Compared to the arrays simulated in Lee et al. (Reference Lee2022), the most significant tested factor that improved the detection of transients was the reduction of thresholds used in the two-stage cleaning process by between 45% and 76%. This accounted for an increase in observable AGN flares of $\sim$ 30–40%.

Table 3 presents the average and maximum number of yearly flares detectable by these best-performing arrays under different assumptions of observation time and flux scaling. Under the assumptions used in Fig. 5 of 4-hr observation per flare at fluxes $2\times$ their weekly average, an array of four MSTs would detect an average of $\sim$ 25 of the AGN flares detected per year by Fermi-LAT. This accounts for $\sim$ 19% of the high-energy flares at declinations between $-60^{\circ}$ and $0^{\circ}$ detected by Fermi-LAT per year, as well as an average of $\sim$ 13 ( $\sim$ 27%) unique sources per year. The maximum number of flares detected in a calendar year was 40 (in 2020). A more conservative estimate of the observed flux ( $1\times$ weekly average) results in $\sim$ 15 flares detected per year with 4 hr of observation per transient, or $\sim$ 20 per year with 8 hr per transient. Across the different models, an array of two MSTs detected $\sim$ 80–90% of the flares detected by four MSTs. An array of SSTs, with their substantially higher energy threshold, detected approximately one quarter to one third as many flares as an equivalent MST array.

Table 3. Number of FAVA AGN flares at $-60^{\circ} \le \mathrm{dec} \le 0^{\circ}$ detectable per year from 2010 to 2022, depending on flare observation time, assumed flux of flares relative to weekly average ( $\times$ 1, $\times$ 2, $\times$ 4), and array setup.

3.2. Unknown flares

A large number of flares in the FAVA catalogue are either associated with sources whose nature is unknown, or not associated with any sources at all. These account for 738 ( $\sim$ 15%) of the unique flares chosen for this study. To provide an estimate of their detectability, we modelled these flares in the same way as the AGN flares in Section 3.1. We randomly assigned redshifts according to the redshift distribution of AGN flares. Fig. 7 shows the number and distributions of detectable flares of unknown origin at declinations between $-60^{\circ}$ and $0^{\circ}$ . Unsurprisingly, the distribution of flares whose source category is unknown skews towards a lower photon flux. As such, less than 10% of these flares were detectable to the simulated array of four MSTs, compared to the $\sim$ 19% for AGN flares. This would account for roughly another 5 flares per year for four MSTs, 4 for two MSTs, and 2 for the SST arrays.

Figure 7. High-energy photon flux and spectral index of FAVA flares at $-60^{\circ} \le \mathrm{dec} \le 0^{\circ}$ with unknown classifications from August 2008 to February 2023. Highlighted points show flares detectable >5 $\sigma$ for the configurations used in Fig. 5, for 4-hr observations and flux 2 $\times$ the weekly average, with total flare counts listed in brackets.

3.3. Galactic flares

The best trigger setups for observing Galactic flares were as follows:

  • 4 $\times$ MST: Mono default trigger.

  • 2 $\times$ MST: Stereo default trigger, 277 m baseline, followed by mono default.

  • 4 $\times$ SST: Mono topo trigger, closely followed by stereo topo.

  • 2 $\times$ SST: Mono default trigger, 80 m baseline.

In this context of observing Galactic high-energy transients, using a topological trigger noticeably improved the performance of a 4 $\times$ SST array. A stereoscopic trigger showed an improvement for a 2 $\times$ MST array. For arrays of two SSTs or four MSTs, the performance of the default monoscopic trigger (with lowered cleaning thresholds) was not surpassed. These results are consistent with the best-performing arrays for detecting AGN flares, except for the 4 $\times$ MST array wherein a monoscopic trigger benefited from the lack of EBL absorption at high energies to outperform a stereoscopic trigger.

Table 4 lists the observation times required for a 5 $\sigma$ detection of the Galactic flares whose models are described in Section 2.3.2, using the previously listed array configurations. An array of two or four MSTs would be very suitable for the observation of the regular flares from PSR B1259-63, whereas equivalent SST arrays require a four-fold increase in observation time. Both of the flares from the novae V1324 Sco and V1369 Cen would be detectable in one night by MST arrays. Given the known day-scale longevity and variability of these flares, an SST array would be sufficient to detect them over multiple nights (assuming a static flux equal to their weekly average), but is perhaps unfavourable for time-dependent studies. Assuming that HESS J1303-631 is indeed a flaring source, its variability would be exceedingly detectable by all simulated arrays. At its typical flux, HESS J1813-178 would be detectable in one night by MST arrays but not SSTs. If the source flux is variable at high energies, a flux 40% above the weekly average would be enough for the SST arrays to achieve a 5 $\sigma$ detection within 4 hr.

Table 4. Observation time required for 5 $\sigma$ detections by different array configurations of Southern Hemisphere high-energy transient Galactic sources in the FAVA catalogue. Sources were modelled with static fluxes as per Section 2.3.2.

The anomaly of the 4 $\times$ MST array performing worse than the 2 $\times$ MST array in the cases of V1369 Cen and HESS J1813-178 reveals a deficiency in our method for optimising performance cuts in this use case. The gamma score and $\theta^2$ cuts were optimised for sensitivity independently in each energy bin for 50-hr observations, rather than for overall speed of transient detection.

Figure 8. Detectability (with 4 $\times$ MST) and characteristics of Southern Hemisphere GRBs with known redshift based on Fermi-LAT data from August 2008 to June 2022. Observation durations were from 90 s post-trigger from Fermi-GBM until the end of the corresponding Fermi-LAT observation. Depicted are the normalisation constant $N_0$ at 1 TeV, redshift (inverse to point size), and detection significance from a 4 $\times$ MST array (colour).

3.4. Gamma-Ray bursts

For detecting the 21 Southern Hemisphere GRBs with known redshift detected by Fermi-LAT, the performances of the simulated arrays were as follows:

  • 4 $\times$ MST: 11 GRBs (52%) detected 5 $\sigma$ . Best significance with a stereo trigger. No fewer GRBs detected with monoscopic.

  • 2 $\times$ MST: 11 GRBs (52%) detected 5 $\sigma$ . Best significance with stereo-topo trigger. No fewer with mono.

  • 4 $\times$ SST: 5 GRBs (24%) detected 5 $\sigma$ . Best with stereo trigger. Similar with mono.

  • 2 $\times$ SST: 4 GRBs (19%) detected 5 $\sigma$ with all configurations.

These results are consistent with the AGN observability results, which are also strongly dependent on redshift. The monoscopic default trigger was sufficiently performant for all arrays, but a stereo trigger provided improvements to the 4 $\times$ SST and 4 $\times$ MST arrays. The MSTs performed best with a stereo-topo trigger. Fig. 8 depicts the observability of these Southern Hemisphere GRBs for a 4 $\times$ MST array with a stereo trigger. The highest redshift GRB observable by a 4 $\times$ MST array was GRB181020A, with a redshift of 2.938. This was first observed by Fermi-LAT 75 min after the initial trigger from Swift. Whilst this long time delay may cause our retroactive decay estimation to be exaggerated, the X-ray lightcurve from Swift-XRT does show a strong signal and broadly consistent decay rate from this GRB (Evans Reference Evans2023). We estimated that GRB150403 and GRB100728 would be observable at their respective redshifts of 2.06 and 1.567, whose Fermi-LAT observations started 7 and 4 min, respectively, post-trigger. Regardless, a large number of the GRBs detectable by Fermi-LAT could additionally be detected by a small IACT array consisting of MSTs.

4. Discussion

The most significant studied factor to influence a given IACT array’s performance for transient discovery was the image cleaning thresholds. Allowing more pixels to survive, and thus more low-energy events, increased AGN flare detection by $\sim$ 30–40% despite the increase in cosmic-ray event survival and the negative effects on event reconstruction. Additionally, stereoscopic and topological triggers (whether individually or in tandem) were shown to provide measurable but not radical improvements to performance in some contexts.

With respect to AGN flare follow-up, it is clear that an IACT array in Australia would be a productive complement to existing telescopes. Even with an estimate of 4-hr observations of flares at their weekly average flux, an array of two MSTs would successfully observe $\sim$ 12 AGN flares per year on average, with a maximum of 23 detections (shown in Table 3). With the more optimistic estimates of a 4 $\times$ MST array averaging 45 flare detections a year with a maximum of 72 flares, it is likely that the output of a transient-focused IACT array would fall somewhere in between. La Mura et al. (Reference La Mura2020) performed a related study, assessing the gamma-ray transient detection capabilities of CTA-South. Focusing on flares with substantial flux above 10 GeV as measured by Fermi-LAT, they remarked that ‘CTA will be able to detect dozens of transients per year with just 1 hr of observation’ given appropriately rapid positional triggers. Given the differences in event selection criteria and the sensitivity of CTA-South, our results are consistent.

As highlighted in Section 3.1, it is worthwhile noting that a 2 $\times$ MST array detected $\sim$ 80–90% of the AGN flares detected by an array of four MSTs. Whilst the additional flare detections, increased angular resolution, and general performance improvements from extra telescopes is obvious, this is a significant consideration if budgetary or space constraints are a concern. Using SSTs for this kind of transient-focused array is possible, but undesirable given the roughly four-fold decrease in observable AGN flares compared to MSTs.

In addition to the previously discussed gamma-ray transient phenomena, tidal disruption events (TDEs), wherein a star is ripped apart by a massive black hole, have been receiving increased attention as their detection has become more prevalent. Some have been seen to produce relativistic jets with non-thermal radio and X-ray emission (Andreoni et al. Reference Andreoni2022), and Stein et al. (Reference Stein2021) has associated one with the production of PeV neutrinos. Fermi-LAT has as yet been unsuccessful in detecting gamma rays from TDEs, however under favourable conditions, an IACT is expected to observe gamma rays if they were produced by hadronic interactions (Gezari Reference Gezari2021). Successfully following up on triggers from their non-thermal radio emission with a worldwide IACT network would help distinguish between particle acceleration methods of TDEs and model their contribution to the diffuse cosmic neutrino flux.

Regarding operational feasibility, the maximum number of detectable AGN flares per year by a 4 $\times$ MST array was 37 in Fig. 5. With an additional $\sim$ 5 flares per year from unknown sources (as per Section 3.2), 168 hr of observation time per year would be required to observe this many flares. Given a conservative estimate of at least 1 000 hr of uptime per year for an IACT array, this is easily achievable. Additional time would then be available for longer follow-up observations, continuous source monitoring alongside H.E.S.S. and CTA-South, responding to weaker triggers, and performing independent searches for gamma-ray transients.

4.1. Selection criteria

A noteworthy distinction between our study and Abdollahi et al. (Reference Abdollahi2017) lies in the flare selection criteria. We included high-energy flares in our analysis even if their detection significance at high energies was not substantial. Conversely, Abdollahi et al. (Reference Abdollahi2017) omitted flares from their high-energy plots and analysis that did not pass the 4 $\sigma$ or TS>18 cuts in the high-energy bin. We justify the inclusion of these flares by assuming that if they passed the 6 $\sigma$ /TS>39 cut in low energies, their high-energy spectral measurements were sufficiently significant, even if they were not independently significant. When implementing the high-energy significance requirement on the AGN flare database, we observed a negligible reduction in detected AGN flares (shown in Fig. C1). In the case of a 4 $\times$ MST array, the average detection rate of AGN flares reduces from 23.7 to 22.3 per year. As visible in Fig. C2 (upper), the majority of these now-excluded flares are in the hard-spectrum/low-flux regime (bottom left corner). These flares would be easily detectable in the low-energy band but provide low statistics at high energies due to the power law nature of the spectra. For Galactic flares, the total population decreased from 81 to 15 with this cut (shown in Fig. C2, lower). Of the Southern Hemisphere Galactic flares, this would exclude PSR B1259-63, however the relevance of this source is discussed in Section 3.3.

4.2. Limitations

It is important to recognise the proof-of-concept nature of this study, and the limitations of the methods presented. The following aspects potentially contribute to overestimates of detection rate. The assumption of flares being observed at fluxes twice their weekly average in Fig. 5 cannot of course be guaranteed for all flares, hence the inclusion of Table 3 for reference. Additionally, the duration of some flares may be too short, or they may occur at a time of year, so as to not be visible from a given site during clear, dark nighttime (which occurs $\sim$ 15% of the year). The lightcurve profiles of AGN flares vary substantially, however more time-resolved gamma-ray lightcurve data is limited and not representative of the thousands of included flares. Sources were simulated at a zenith angle of 20 $^{\circ}$ , and whilst AGN flares were selected with declinations between 0 $^{\circ}$ and $-60$ $^{\circ}$ (allowing for low-zenith observations), the dependence of zenith angle was not investigated. Larger zenith angles result in higher energy thresholds, as does increased moon brightness (and thus NSB) which was not accounted for. We modelled flares as though their spectral indices were constant past the 300 GeV energy maximum of Fermi-LAT up to the maximum simulated energy of 3 TeV, however it is entirely possible that some had an intrinsic spectral cutoff that was neither measurable nor modelled. Our study estimates 11 GRBs to be detectable over 14 years by an MST array, given immediate follow-up. Our model implicitly assumes that the GRBs would be observed in a clear, dark, night sky at a low zenith angle. Considering a typical IACT duty cycle of 15%, our detection rate is comparable with those from H.E.S.S. and MAGIC.Footnote o

The following aspects potentially contribute to underestimates of detection rate. Many flares exhibit day-, hour-, or minute-scale variation. As discussed, it is thus reasonable to assume that some flares could be observed at flux levels several times higher than their weekly averages, given that the weekly flux would be compressed to a shorter time period. The FAVA catalogue is by nature a conservative measure of the brightness and prevalence of gamma-ray transients, and some flares visible to IACTs may not be included at all, such as orphan TeV flares (which do not appear at other wavelengths). Furthermore, of flares that vary more slowly, many remain visible for consecutive nights, providing the opportunity for multiple observations and a longer total observation time than the 4 hr modelled in Fig. 5 (assuming there are significantly fewer flares than operational nights). Additionally, other telescopes operating at different wavelengths may detect transients that Fermi-LAT misses due to weak fluxes at GeV energies, providing even more sources for follow-up than in the FAVA catalogue. In this study we did not investigate the use and effects of convergent pointing, wherein telescopes are pointed towards a point in the atmosphere rather than directly at the source to maximise the stereo overlap for low-energy events (such as in Lucarelli et al. Reference Lucarelli2003), or divergent pointing, which increases the effective field-of-view of the array. Lastly, the optimisation of array configuration, trigger mechanisms, cleaning thresholds, and quality cuts in this study was not exhaustive.

5. Conclusion

This study aimed to investigate the suitability of a small IACT array sited in Australia for dedicated follow-up and detection of gamma-ray transients. Additionally, we explored the improvements in performance achievable by implementing alternative array trigger methods and event reconstruction parameters.

Arrays of SSTs and MSTs based on designs from the CTA were simulated with a variety of configurations. Flares from AGNs at declinations between $-60^{\circ}$ and $0^{\circ}$ with known redshift were then modelled based on data from the FAVA catalogue. Assuming 4-hr observations with flux twice the measured weekly average, we estimate that an array of four MST-class telescopes would detect an average of $\sim$ 24 AGN flares above 5 $\sigma$ from $\sim$ 12 distinct sources per year, with a maximum of 37 flares. A 2 $\times$ MST array under the same conditions would detect an average of $\sim$ 20 flares and a maximum of 34, up to 90% that of a 4 $\times$ MST array. Equivalent arrays with SST-class telescopes were estimated to observe only one quarter the flares of their MST counterparts, which is consistent with their higher energy threshold.

Compared to the arrays we simulated in Lee et al. (Reference Lee2022), we found that the largest improvement in transient detection performance was from reducing the thresholds in the two-stage cleaning process by anywhere from 45% to 76%. This accounted for an increase in observable AGN flares of $\sim$ 30–40%. Implementing a stereoscopic trigger, wherein at least two telescopes in an array must trigger within a 50 ns window, allowed for adjustments resulting in a 4 $\times$ MST array detecting $\sim$ 4% more AGN flares. A topological trigger that restricts trigger pixels to a central circular area in the camera allowed a 4 $\times$ SST array to detect $\sim$ 9% more AGN flares. Neither of these methods resulted in improvements to the simulated two-telescope systems.

For the few known Southern Hemisphere Galactic gamma-ray transients, such as PSR B1259-63 and the novae V1324 Scorpii and V1369 Centauri, 5 $\sigma$ detections were achievable within one night’s observation. Whilst requiring fortuitous circumstances to successfully follow-up, over half of the 21 modelled GRBs were detectable by MST-class telescope arrays (assuming appropriate visibility and a 90-s trigger response time). The flares of sources as yet unidentified in the FAVA catalogue would be prime targets for this kind of array, and our estimates suggest $\sim$ 4–5 of these flares per year could be successfully observed with an array of MST-class telescopes.

Establishing a Southern Hemisphere, transient-focused IACT array in Australia would complement CTA to facilitate further, deeper studies into the most extreme phenomena in our universe.

Acknowledgements

This work was conducted in the context of the CTA Consortium. We gratefully acknowledge the work of the CTA simulation and telescope teams for the MST and SST configurations. This work was supported with supercomputing resources provided by the Phoenix HPC service at the University of Adelaide. S.L. gratefully acknowledges support through the provision of an Australian Government Research Training Program Scholarship. This paper has gone through internal review by the CTA Consortium.

Data availability

Not applicable.

Appendix A. Flare decay examples

Shapes in Fig. A1 are based on a symmetric ‘generalised Gaussian’ model from Norris et al. (Reference Norris1996), with the form:

\[F(t) = Ae^{-\left(\mathrm{ln}(2)^{\left(1/K\right)}|t-t_0| / \tau_0 \right)^K}\]

Figure A1. Demonstration of flare shapes that result in particular relative fluxes 26 hr in to a Fermi-LAT week (i.e. in the middle of a 4-hr observation starting after 24 hr) All flare shapes have the same total flux integrated over the whole week. Dashed and dotted lines demonstrate alternate shapes for the same $2\times$ relative flux.

where $x_0$ is the peak time, $\tau_0$ is the time from peak to half maximum, and K controls the peak sharpness.

Appendix B. AGN redshift

Figure B1. Normalisation constant ( $N_0$ ) at 1 TeV and redshift of AGN flares from Fig. 6, highlighting those detectable at > $5\sigma$ .

Appendix C. High-energy significance cut

The following plots require all flares to pass at least $4\sigma$ or TS>18 in the high-energy (0.8–300 GeV) FAVA bin.

Figure C1. Number and percentage of AGN flares detectable at > $5\sigma$ that pass the $4\sigma$ /TS>18 high-energy FAVA cut (alternate of Fig. 5, left).

Figure C2. Photon flux and spectral index of high-energy FAVA flares that pass the $4\sigma$ /TS>18 high-energy FAVA cut (alternate of Fig. 4).

Appendix D. GRB modelling

The GRBs were modelled with a temporal decay of $t^{-1.2}$ . Observations were simulated to start at the maximum slew time of the telescope ( $t_{\mathrm{slew}}$ seconds after the trigger from Fermi-GBM). Fig. D1 shows that the flux was scaled such that the integral flux of the decaying GRB from the start time of the Fermi-LAT observation ( $t_0$ ) to the end ( $t_1$ ) was equal to the integral flux as measured by Fermi-LAT.

Figure D1. Demonstration of the GRB modelling method, using GRB 100728A as an example. $t_{\mathrm{slew}}$ is the maximum slew time of an MST, $t_0$ is the duration after the Fermi-GBM trigger at which Fermi-LAT started observing, and $t_1$ is when it finished.

Appendix E. CTA telescope details

The SST is a dual-mirror telescope design with a 4.3 m diameter primary reflector and 1.8 m secondary reflector (CTAO 2023). Its optimal sensitivity range is from 5–300 TeV, and it has a field-of-view of 8.8 $^{\circ}$ . The CHEC SST camera simulated in this study is a 2 048 pixel camera with silicon photomultiplier sensors, sampling images at a rate of 1 GHz.

The MST is a single-mirror telescope design with an 11.5 m diameter reflector (CTAO 2023). Its optimal sensitivity range is from 150 GeV–5 TeV, and it has a field-of-view of 7.5 $^{\circ}$ or 7.7 $^{\circ}$ when using the FlashCam or NectarCAM camera, respectively. The FlashCam camera simulated in this study is being used for the MSTs at the CTA-South site. The camera has a hexagonal grid of 1 764 photomultiplier pixels, sampling images at a rate of 250 MHz through a purely digital pipeline.

Footnotes

i Version 7.7100 with the QGSJET II-04 interaction model.

j Version 2020-06-28.

l The ratio (post-cleaning) between summed pixel intensities at the edge of the camera and the total summed intensity.

m Disjoint clusters of pixels post-cleaning.

o H.E.S.S. has detected 2, MAGIC has detected 4 (Berti Reference Berti2023).

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Figure 0

Table 1. Simulation parameters used in CORSIKA. Particle energies were drawn from the distribution $dN/dE \propto E^{-\Gamma}$. Diffuse emission was generated within a ‘view cone’ of radius $r_{\mathrm{cone}}$. Shower core positions were evenly distributed in a circular area of radius $r_{\mathrm{scatter}}$. Showers were re-used $n_{\mathrm{reuse}}$ times with their core positions varied, providing alternate views of the shower.

Figure 1

Figure 1. Arrangement of IACTs (shown as numbers) used in simulations, allowing for multiple different configurations of baseline distances and number of telescopes to be studied.

Figure 2

Figure 2. Central circular regions of pixels (orange) used in the SST and MST cameras for the simulated topological trigger. See Appendix E for details on the cameras.

Figure 3

Figure 3. Rate of trigger for the whole array due to night sky background (NSB) for 4$\times$MST and 4$\times$SST arrays as a function of pixel-level discriminator threshold (DT). Labels are described in Section 2.1. The horizontal dashed line indicates the NSB trigger rate using the mono default trigger. Vertical dashed lines indicate the corresponding DT to result in the same NSB trigger rate.

Figure 4

Figure 4. Northern and Southern Hemisphere flares in the FAVA weekly flare catalogue up to 2023-02-20, showing their photon flux and spectral index in the Fermi-LAT high-energy band (0.8–300 GeV). Only local maxima are included for multi-week flares. The Galactic source categories are HMB (high mass binary), LMB (low-mass binary), PWN (pulsar wind nebula), PSR (pulsar), and NOV (nova), listed with their respective number of flares/sources.

Figure 5

Figure 5. Number (upper) and percentage (lower) of unique flares of AGNs (left) and total AGNs (right) from the FAVA catalogue at $-60^{\circ} \le \mathrm{dec} \le 0^{\circ}$ detectable at $>$5$\sigma$ per year from 2010 to 2022 by the best-performing simulated configurations of two or four MSTs or SSTs (Table 2). Flares were simulated being observed for four hours at twice their weekly average flux.

Figure 6

Table 2. Configurations of the best-performing arrays of two and four SSTs and MSTs for observing AGN flares in the Southern Hemisphere. A limited number of cleaning thresholds (listed as core/boundary thresholds) were tested. For comparison, thresholds used in Lee et al. (2022) were 10/5 p.e. for MSTs and 3/1.5 p.e. for SSTs.

Figure 7

Figure 6. High-energy photon flux and spectral index of unique FAVA AGN flares at $-60^{\circ} \le \mathrm{dec} \le 0^{\circ}$ from August 2008 to February 2023. Highlighted points show flares detectable >5$\sigma$ for the configurations used in Fig. 5, for 4-hr observations and flux 2$\times$ the weekly average, with total flare counts listed in brackets.

Figure 8

Table 3. Number of FAVA AGN flares at $-60^{\circ} \le \mathrm{dec} \le 0^{\circ}$ detectable per year from 2010 to 2022, depending on flare observation time, assumed flux of flares relative to weekly average ($\times$1, $\times$2, $\times$4), and array setup.

Figure 9

Figure 7. High-energy photon flux and spectral index of FAVA flares at $-60^{\circ} \le \mathrm{dec} \le 0^{\circ}$ with unknown classifications from August 2008 to February 2023. Highlighted points show flares detectable >5$\sigma$ for the configurations used in Fig. 5, for 4-hr observations and flux 2$\times$ the weekly average, with total flare counts listed in brackets.

Figure 10

Table 4. Observation time required for 5$\sigma$ detections by different array configurations of Southern Hemisphere high-energy transient Galactic sources in the FAVA catalogue. Sources were modelled with static fluxes as per Section 2.3.2.

Figure 11

Figure 8. Detectability (with 4$\times$MST) and characteristics of Southern Hemisphere GRBs with known redshift based on Fermi-LAT data from August 2008 to June 2022. Observation durations were from 90 s post-trigger from Fermi-GBM until the end of the corresponding Fermi-LAT observation. Depicted are the normalisation constant $N_0$ at 1 TeV, redshift (inverse to point size), and detection significance from a 4$\times$MST array (colour).

Figure 12

Figure A1. Demonstration of flare shapes that result in particular relative fluxes 26 hr in to a Fermi-LAT week (i.e. in the middle of a 4-hr observation starting after 24 hr) All flare shapes have the same total flux integrated over the whole week. Dashed and dotted lines demonstrate alternate shapes for the same $2\times$ relative flux.

Figure 13

Figure B1. Normalisation constant ($N_0$) at 1 TeV and redshift of AGN flares from Fig. 6, highlighting those detectable at >$5\sigma$.

Figure 14

Figure C1. Number and percentage of AGN flares detectable at >$5\sigma$ that pass the $4\sigma$/TS>18 high-energy FAVA cut (alternate of Fig. 5, left).

Figure 15

Figure C2. Photon flux and spectral index of high-energy FAVA flares that pass the $4\sigma$/TS>18 high-energy FAVA cut (alternate of Fig. 4).

Figure 16

Figure D1. Demonstration of the GRB modelling method, using GRB 100728A as an example. $t_{\mathrm{slew}}$ is the maximum slew time of an MST, $t_0$ is the duration after the Fermi-GBM trigger at which Fermi-LAT started observing, and $t_1$ is when it finished.