I. S. Heng’s research while affiliated with Scottish Universities Physics Alliance and other places

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Publications (688)


Can Transformers help us perform parameter estimation of overlapping signals in gravitational wave detectors?
  • Preprint

May 2025

Lucia Papalini

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Federico De Santi

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Massimiliano Razzano

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[...]

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Overlapping signals represent one of the major data analysis challenges in next-generation gravitational wave detectors. We leverage Transformers and Normalizing Flows, state-of-the-art machine learning algorithms, to address the parameter estimation of overlapping binary black hole mergers in the Einstein Telescope (ET). Our proposed model combines a Transformer-based "Knowledge Extractor Neural Network" (KENN) with a Normalizing Flow (HYPERION) to perform rapid and unbiased inference over multiple overlapping black hole binary events. The choice of architecture leverages the strength of Transformers in capturing complex and long-range temporal structures in the strain time series data, while Normalizing Flows provide a powerful framework to sample posterior distributions. We demonstrate the effectiveness and robustness of our model over simulated gravitational wave signals, showing that it maintains the same level of accuracy regardless of the correlation level in the data. Moreover our model provides estimates of chirp mass and coalescence times within <10-20% from the true simulated value. The results obtained are promising and show how this approach might represent a first step toward a deep-learning based inference pipeline for ET and other future gravitational wave detectors.


Search for Continuous Gravitational Waves from Known Pulsars in the First Part of the Fourth LIGO-Virgo-KAGRA Observing Run

April 2025

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60 Reads

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1 Citation

The Astrophysical Journal

Continuous gravitational waves (CWs) emission from neutron stars carries information about their internal structure and equation of state, and it can provide tests of general relativity. We present a search for CWs from a set of 45 known pulsars in the first part of the fourth LIGO–Virgo–KAGRA observing run, known as O4a. We conducted a targeted search for each pulsar using three independent analysis methods considering single-harmonic and dual-harmonic emission models. We find no evidence of a CW signal in O4a data for both models and set upper limits on the signal amplitude and on the ellipticity, which quantifies the asymmetry in the neutron star mass distribution. For the single-harmonic emission model, 29 targets have the upper limit on the amplitude below the theoretical spin-down limit. The lowest upper limit on the amplitude is 6.4 × 10 ⁻²⁷ for the young energetic pulsar J0537−6910, while the lowest constraint on the ellipticity is 8.8 × 10 ⁻⁹ for the bright nearby millisecond pulsar J0437−4715. Additionally, for a subset of 16 targets, we performed a narrowband search that is more robust regarding the emission model, with no evidence of a signal. We also found no evidence of nonstandard polarizations as predicted by the Brans–Dicke theory.


FIG. 1: The multi-detector network JSD (J ) distributions for background and signal triggers. The top panel shows the distributions for the LH network, and the bottom panel shows the distributions for the LHV network.
FIG. 4: Distributions of J for different adhoc waveforms for the LH network (top panel) and the LHV network (bottom panel). The y-axis shows J in the log scale. The x-axis shows the waveforms. The different waveform groups are represented by different colors. The GAs are shown in blue, the SGs are shown in chrome, and the WNBs are shown in green.
FIG. 5: Distributions of J for different CCSN simulations for the LH network (top panel) and the LHV network (bottom panel). The y-axis shows J in the log scale. The x-axis shows the simulations.
Leveraging cross-detector parameter consistency measures to enhance sensitivities of gravitational wave searches
  • Preprint
  • File available

April 2025

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1 Read

All-sky searches for generic short-duration astrophysical GW transients are often challenging because of noise transients. Developing novel signal-noise discriminators is crucial for GW transient searches with LIGO Scientific, Virgo, and KAGRA (LVK) detectors. In this work, we adapt a recently developed Jensen Shannon divergence (JSD)-based measure, which assesses the cross-detector parameter consistency to distinguish between weakly modeled or unmodelled astrophysical GW signals and loud noise triggers. We first extend a 2-detector JSD-based measure, developed in an earlier work, to a 3-detector network. We leverage this to modify the test statistic of the existing Coherent Waveburst (cWB)-Gaussian Mixture Modelling (GMM) algorithm for short-duration transients towards improving the search sensitivity to ad-hoc waveforms like Sine-Gaussians, Gaussian Pulses, and White Noise Bursts. We find that with the new method, which we term cWB-GMM-JSD, the sensitivity to the ad-hoc waveforms, given by hrss50h_{\mathrm{rss50}}, improves by 1020%\sim 10-20 \% at an IFAR of 10 years for the 2-detector network consisting of LHO and LLO detectors, and by 510%\sim 5-10 \% at the same IFAR for the 3-detector network consisting of LHO, LLO and Virgo detectors. Finally, we apply the modified statistic in the revised data analysis pipeline on the publicly available data from the third observing run (O3) of the LIGO and Virgo detectors. Although we do not find any new event in the O3 data, we see a notable rise in the statistical significance of most of the known GW events, which further testifies to the enhancement in sensitivities.

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Strategic White Paper on AI Infrastructure for Particle, Nuclear, and Astroparticle Physics: Insights from JENA and EuCAIF

March 2025

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2 Reads

Artificial intelligence (AI) is transforming scientific research, with deep learning methods playing a central role in data analysis, simulations, and signal detection across particle, nuclear, and astroparticle physics. Within the JENA communities-ECFA, NuPECC, and APPEC-and as part of the EuCAIF initiative, AI integration is advancing steadily. However, broader adoption remains constrained by challenges such as limited computational resources, a lack of expertise, and difficulties in transitioning from research and development (R&D) to production. This white paper provides a strategic roadmap, informed by a community survey, to address these barriers. It outlines critical infrastructure requirements, prioritizes training initiatives, and proposes funding strategies to scale AI capabilities across fundamental physics over the next five years.


The Science of the Einstein Telescope

March 2025

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136 Reads

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1 Citation

Einstein Telescope (ET) is the European project for a gravitational-wave (GW) observatory of third-generation. In this paper we present a comprehensive discussion of its science objectives, providing state-of-the-art predictions for the capabilities of ET in both geometries currently under consideration, a single-site triangular configuration or two L-shaped detectors. We discuss the impact that ET will have on domains as broad and diverse as fundamental physics, cosmology, early Universe, astrophysics of compact objects, physics of matter in extreme conditions, and dynamics of stellar collapse. We discuss how the study of extreme astrophysical events will be enhanced by multi-messenger observations. We highlight the ET synergies with ground-based and space-borne GW observatories, including multi-band investigations of the same sources, improved parameter estimation, and complementary information on astrophysical or cosmological mechanisms obtained combining observations from different frequency bands. We present advancements in waveform modeling dedicated to third-generation observatories, along with open tools developed within the ET Collaboration for assessing the scientific potentials of different detector configurations. We finally discuss the data analysis challenges posed by third-generation observatories, which will enable access to large populations of sources and provide unprecedented precision.


Applications of machine learning in gravitational-wave research with current interferometric detectors

February 2025

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32 Reads

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4 Citations

Living Reviews in Relativity

This article provides an overview of the current state of machine learning in gravitational-wave research with interferometric detectors. Such applications are often still in their early days, but have reached sufficient popularity to warrant an assessment of their impact across various domains, including detector studies, noise and signal simulations, and the detection and interpretation of astrophysical signals. In detector studies, machine learning could be useful to optimize instruments like LIGO, Virgo, KAGRA, and future detectors. Algorithms could predict and help in mitigating environmental disturbances in real time, ensuring detectors operate at peak performance. Furthermore, machine-learning tools for characterizing and cleaning data after it is taken have already become crucial tools for achieving the best sensitivity of the LIGO–Virgo–KAGRA network. In data analysis, machine learning has already been applied as an alternative to traditional methods for signal detection, source localization, noise reduction, and parameter estimation. For some signal types, it can already yield improved efficiency and robustness, though in many other areas traditional methods remain dominant. As the field evolves, the role of machine learning in advancing gravitational-wave research is expected to become increasingly prominent. This report highlights recent advancements, challenges, and perspectives for the current detector generation, with a brief outlook to the next generation of gravitational-wave detectors.


Swift-BAT GUANO Follow-up of Gravitational-wave Triggers in the Third LIGO–Virgo–KAGRA Observing Run

February 2025

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75 Reads

The Astrophysical Journal

We present results from a search for X-ray/gamma-ray counterparts of gravitational-wave (GW) candidates from the third observing run (O3) of the LIGO–Virgo–KAGRA network using the Swift Burst Alert Telescope (Swift-BAT). The search includes 636 GW candidates received with low latency, 86 of which have been confirmed by the offline analysis and included in the third cumulative Gravitational-Wave Transient Catalogs (GWTC-3). Targeted searches were carried out on the entire GW sample using the maximum-likelihood Non-imaging Transient Reconstruction and Temporal Search pipeline on the BAT data made available via the GUANO infrastructure. We do not detect any significant electromagnetic emission that is temporally and spatially coincident with any of the GW candidates. We report flux upper limits in the 15–350 keV band as a function of sky position for all the catalog candidates. For GW candidates where the Swift-BAT false alarm rate is less than 10 ⁻³ Hz, we compute the GW–BAT joint false alarm rate. Finally, the derived Swift-BAT upper limits are used to infer constraints on the putative electromagnetic emission associated with binary black hole mergers.


Table 2 (continued)
Figure 4. 95% credible upper limits on ellipticity ε 95% and mass quadrupole Q 95% 22
Figure 6. Blue stars show the ratio between the O4a h0 upper limits for the analyzed targets (excluding the glitching pulsars) assuming the single-harmonic model divided by the corresponding h0 upper limits in Abbott et al. (2022) for the Bayesian method as a function of the corresponding frequency at twice the rotation frequency (red circles refer instead to the C21 parameter at the rotation frequency assuming the dual-harmonic model). Blue filled stars show the h0 upper limit ratios considering the targets (J0205+6449, J0737−3039A, J1813−1246, J1831−0952, J1837−0604) analyzed using O2 (Abbott et al. 2019c) and O1 data (blue asterisk for J1826−1334, Abbott et al. (2017b)).
Table of the results for the targeted search on the set of 45 known pulsars for the three considered pipelines described in Section 3.
Search for continuous gravitational waves from known pulsars in the first part of the fourth LIGO-Virgo-KAGRA observing run

January 2025

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186 Reads

Continuous gravitational waves (CWs) emission from neutron stars carries information about their internal structure and equation of state, and it can provide tests of General Relativity. We present a search for CWs from a set of 45 known pulsars in the first part of the fourth LIGO--Virgo--KAGRA observing run, known as O4a. We conducted a targeted search for each pulsar using three independent analysis methods considering the single-harmonic and the dual-harmonic emission models. We find no evidence of a CW signal in O4a data for both models and set upper limits on the signal amplitude and on the ellipticity, which quantifies the asymmetry in the neutron star mass distribution. For the single-harmonic emission model, 29 targets have the upper limit on the amplitude below the theoretical spin-down limit. The lowest upper limit on the amplitude is 6.4 ⁣× ⁣10276.4\!\times\!10^{-27} for the young energetic pulsar J0537-6910, while the lowest constraint on the ellipticity is 8.8 ⁣× ⁣1098.8\!\times\!10^{-9} for the bright nearby millisecond pulsar J0437-4715. Additionally, for a subset of 16 targets we performed a narrowband search that is more robust regarding the emission model, with no evidence of a signal. We also found no evidence of non-standard polarizations as predicted by the Brans-Dicke theory.


Applications of machine learning in gravitational wave research with current interferometric detectors

December 2024

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54 Reads

This article provides an overview of the current state of machine learning in gravitational-wave research with interferometric detectors. Such applications are often still in their early days, but have reached sufficient popularity to warrant an assessment of their impact across various domains, including detector studies, noise and signal simulations, and the detection and interpretation of astrophysical signals. In detector studies, machine learning could be useful to optimize instruments like LIGO, Virgo, KAGRA, and future detectors. Algorithms could predict and help in mitigating environmental disturbances in real time, ensuring detectors operate at peak performance. Furthermore, machine-learning tools for characterizing and cleaning data after it is taken have already become crucial tools for achieving the best sensitivity of the LIGO--Virgo--KAGRA network. In data analysis, machine learning has already been applied as an alternative to traditional methods for signal detection, source localization, noise reduction, and parameter estimation. For some signal types, it can already yield improved efficiency and robustness, though in many other areas traditional methods remain dominant. As the field evolves, the role of machine learning in advancing gravitational-wave research is expected to become increasingly prominent. This report highlights recent advancements, challenges, and perspectives for the current detector generation, with a brief outlook to the next generation of gravitational-wave detectors.


Figure 2. Radio energy versus luminosity distance for the SGR 1935+2154 FRBs investigated in this work (dark orange, U. Giri et al. 2023) and for 749 other public FRBs published by CHIME/FRB and others (E. Petroff et al. 2016; K. M. Rajwade et al. 2020; CHIME/FRB Collaboration et al. 2021) (blue). The FRB sample and the calculation of distances and radio energies is described in G. Principe et al. (2023) (with the exception of the FRBs studied in R. Abbott et al. 2023, for which we use the lower bound 90% distances from that analysis). Note that the radio energies from CHIME/ FRB (derived from fluxes and fluences) should be interpreted as lower limits (CHIME/FRB Collaboration et al. 2021; B. C. Andersen et al. 2023). We show the radio energy required to produce a flare as bright as that of the brighest FRB from SGR 1935+2154, FRB20200428D, as a function of distance.
Parameters for Waveforms Injected into Off-source Data for Recovery to Quantify each Search's Sensitivity
A Search Using GEO600 for Gravitational Waves Coincident with Fast Radio Bursts from SGR 1935+2154

December 2024

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99 Reads

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4 Citations

The Astrophysical Journal

The magnetar SGR 1935+2154 is the only known Galactic source of fast radio bursts (FRBs). FRBs from SGR 1935+2154 were first detected by the Canadian Hydrogen Intensity Mapping Experiment (CHIME)/FRB and the Survey for Transient Astronomical Radio Emission 2 in 2020 April, after the conclusion of the LIGO, Virgo, and KAGRA Collaborations’ O3 observing run. Here, we analyze four periods of gravitational wave (GW) data from the GEO600 detector coincident with four periods of FRB activity detected by CHIME/FRB, as well as X-ray glitches and X-ray bursts detected by NICER and NuSTAR close to the time of one of the FRBs. We do not detect any significant GW emission from any of the events. Instead, using a short-duration GW search (for bursts ≤1 s) we derive 50% (90%) upper limits of 10 ⁴⁸ (10 ⁴⁹ ) erg for GWs at 300 Hz and 10 ⁴⁹ (10 ⁵⁰ ) erg at 2 kHz, and constrain the GW-to-radio energy ratio to ≤10 ¹⁴ −10 ¹⁶ . We also derive upper limits from a long-duration search for bursts with durations between 1 and 10 s. These represent the strictest upper limits on concurrent GW emission from FRBs.


Citations (59)


... Recent advances in observational technology have provided new insights into NS properties, driving intense scientific interest and activity [18][19][20][21][22][23][24]. Recycled millisecond pulsars undergoing starquakes show a sudden increase in gravitational wave amplitude, providing a unique signature of NS matter at high densities [25][26][27][28]. These breakthroughs have inspired innovative research spanning multiple disciplines, leveraging collaborative and interdisciplinary approaches development. ...

Reference:

Inferring the Equation of State from Neutron Star Observables via Machine Learning
Search for Continuous Gravitational Waves from Known Pulsars in the First Part of the Fourth LIGO-Virgo-KAGRA Observing Run
  • Citing Article
  • April 2025

The Astrophysical Journal

... Generative models such as Gengli have been developed to create realistic glitches, helping to create synthetic datasets that more closely resemble real detector data [54]. A broader overview of ML applications in GW astronomy can be found in [55]. ...

Applications of machine learning in gravitational-wave research with current interferometric detectors

Living Reviews in Relativity

... The post-glitch spin-down rate remains approximately four times higher than the long-term value, and the spectra have been confirmed to only have slight variability (Ibrahim et al. 2024). The LIGO-Virgo-KAGRA collaborations have searched for possible gravitational wave signals from these glitches and estimated a 50% upper limit of energy release of approximately 10 50 erg (Abac et al. 2024). As a follow-up research of Hu et al. (2024), we focus on the timing and spectral properties of short X-ray bursts and persistent emission detected during the activity in 2022. ...

A Search Using GEO600 for Gravitational Waves Coincident with Fast Radio Bursts from SGR 1935+2154

The Astrophysical Journal

... Rapid inference of signal parameters has also been demonstrated through neural posterior estimation, offering speedups of about 10 3 − 10 4 times over traditional Bayesian methods while maintaining agreement with them [49][50][51]. In addition, methods such as gradient boosting and Gaussian Mixture Modelling have also been used as postprocessing steps for cWB leading to an improved detection efficiency [52,53]. Generative models such as Gengli have been developed to create realistic glitches, helping to create synthetic datasets that more closely resemble real detector data [54]. ...

Enhancing search pipelines for short gravitational-wave transients with Gaussian mixture modeling

Physical Review D

... Searches for eccentric subsolar binaries have also been performed [49,50]. Unmodeled [51,52] and modeled [53] searches have been performed for eccentric stellar-mass BBH systems. While these searches did not yield any new candidates, they constrained the local merger rate to be less than: 1700 mergers Gpc −3 yr −1 for BNS systems with e 10 ≤ 0.43 and 0.33 mergers Gpc −3 yr −1 for BBH systems with total mass M ∈ ½70M ⊙ ; 200M ⊙ and e 15 < 0.3 at 90% confidence. ...

Search for Eccentric Black Hole Coalescences during the Third Observing Run of LIGO and Virgo
  • Citing Article
  • September 2024

The Astrophysical Journal

... The lower-end mass regime is particularly difficult to explore due to the particle's vanishing mass and is less tested with experiments. In recent years, searches for ultralight dark matter have been proposed or carried out with experiments on various scales, ranging from atomic clocks [10,11], optomechanical cavities and laser interferometers [12][13][14][15][16][17][18][19], including kilometer-scale groundbased gravitational-wave detectors [20][21][22][23][24][25][26][27] and LISA Pathfinder [28], torsion-balance accelerometers [29][30][31][32], and astrophysical approaches with black hole superradiance and pulsar timing [33][34][35][36]. ...

Ultralight vector dark matter search using data from the KAGRA O3GK run
  • Citing Article
  • August 2024

Physical Review D

... This poses a significant challenge for the identification of lensed GW events. For the case of subthreshold searching [72], the amplitude of the second image is significantly de-magnified. This may lead to an inaccurate parameter estimation of the source [73,74], and the weaker signal from the second image may be buried in the noise and therefore overlooked [46]. ...

Search for Gravitational-lensing Signatures in the Full Third Observing Run of the LIGO–Virgo Network

The Astrophysical Journal

... In this context, exotic-compact objects arise as a possible alternative explanation to hierarchical formation channels [32] which, while more plausible than ECOs, require restrictive merger configurations that lead to small gravitational recoils that prevent remnant black holes from leaving their host environments [33][34][35]. Similarly, ECOs shall also offer alternative explanations [36] to low-mass objects that are slightly above the expected neutron-star mass and below that of stellar-born black holes [37][38][39]. ...

Observation of Gravitational Waves from the Coalescence of a 2.5–4.5 M ⊙ Compact Object and a Neutron Star

The Astrophysical Journal Letters

... From the perspective of gravitational wave astronomy, a first round of studies is performed to quantitatively assess TianQin's ability to different astronomical sources [12][13][14][15][16][17]22]. Data analysis studies are also undergoing to ensure the reliable detections and parameter estimations [23][24][25][26][27][28][29][30][31][32][33][34] TianQin can significantly advance our understanding across a very wide scale of masses as well as distances. Within our Galaxy, millions of compact binaries are predicted to emit gravitational waves simultaneously. ...

Searching for gravitational-wave bursts with space-borne detectors
  • Citing Article
  • May 2024

Physical Review D

... Previous work has performed targeted searches for sources observed electromagnetically or through neutrinos (e.g., Abbott et al. 2024Abbott et al. , 2022aAbbasi et al. 2023;Abbott et al. 2022b). There are also all-sky and all-time searches to ensure that no gravitationalwave burst event is missed if there are no electromagnetic counterparts (Abbott et al. 2021d,c). ...

Search for Gravitational-wave Transients Associated with Magnetar Bursts in Advanced LIGO and Advanced Virgo Data from the Third Observing Run

The Astrophysical Journal