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Poisson-FOCuS: An efficient online method for detecting count bursts with application to gamma ray burst detection

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arxiv 2208.01494 v1 pith:W36MDBHD submitted 2022-08-02 astro-ph.HE stat.CO

Poisson-FOCuS: An efficient online method for detecting count bursts with application to gamma ray burst detection

classification astro-ph.HE stat.CO
keywords burstsalgorithmgamma-rayacrossalgorithmsburstcomputationalcube
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Gamma-ray bursts are flashes of light from distant exploding stars. Cube satellites that monitor photons across different energy bands are used to detect these bursts. There is a need for computationally efficient algorithms, able to run using the limited computational resource onboard a cube satellite, that can detect when gamma-ray bursts occur. Current algorithms are based on monitoring photon counts across a grid of different sizes of time window. We propose a new algorithm, which extends the recently developed FOCuS algorithm for online change detection to Poisson data. Our algorithm is mathematically equivalent to searching over all possible window sizes, but at half the computational cost of the current grid-based methods. We demonstrate the additional power of our approach using simulations and data drawn from the Fermi gamma-ray burst catalogue.

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