Universe (Sep 2021)

A Bayesian Inference Framework for Gamma-ray Burst Afterglow Properties

  • En-Tzu Lin,
  • Fergus Hayes,
  • Gavin P. Lamb,
  • Ik Siong Heng,
  • Albert K. H. Kong,
  • Michael J. Williams,
  • Surojit Saha,
  • John Veitch

DOI
https://doi.org/10.3390/universe7090349
Journal volume & issue
Vol. 7, no. 9
p. 349

Abstract

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In the field of multi-messenger astronomy, Bayesian inference is commonly adopted to compare the compatibility of models given the observed data. However, to describe a physical system like neutron star mergers and their associated gamma-ray burst (GRB) events, usually more than ten physical parameters are incorporated in the model. With such a complex model, likelihood evaluation for each Monte Carlo sampling point becomes a massive task and requires a significant amount of computational power. In this work, we perform quick parameter estimation on simulated GRB X-ray light curves using an interpolated physical GRB model. This is achieved by generating a grid of GRB afterglow light curves across the parameter space and replacing the likelihood with a simple interpolation function in the high-dimensional grid that stores all light curves. This framework, compared to the original method, leads to a ∼90× speedup per likelihood estimation. It will allow us to explore different jet models and enable fast model comparison in the future.

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