Simulations of expected signal and background of gamma-ray sources by large field-of-view detectors aboard CubeSats
G\'abor Galg\'oczi, Jakub \v{R}\'ipa, Riccardo Campana, Norbert, Werner, Andr\'as P\'al, Masanori Ohno, L\'aszl\'o M\'esz\'aros, Tsunefumi, Mizuno, Norbert Tarcai, Kento Torigoe, Nagomi Uchida, Yasushi Fukazawa,, Hiromitsu Takahashi, Kazuhiro Nakazawa, Naoyoshi Hirade

TL;DR
This paper presents a simulation framework for gamma-ray detectors on CubeSats, assessing their ability to detect astrophysical gamma-ray sources amidst background noise, and optimizing their design for future missions.
Contribution
It introduces a detailed simulation method incorporating satellite CAD models to predict signal and background, aiding in the design and optimization of CubeSat gamma-ray detectors.
Findings
CubeSats can detect gamma-ray bursts with high confidence
Simulations predict effective detection of SGRs and TGFs
Design optimization improves signal-to-noise ratio for astrophysical sources
Abstract
In recent years the number of CubeSats (U-class spacecrafts) launched into space has increased exponentially marking the dawn of the nanosatellite technology. In general these satellites have a much smaller mass budget compared to conventional scientific satellites which limits shielding of scientific instruments against direct and indirect radiation in space. In this paper we present a simulation framework to quantify the signal in large field-of-view gamma-ray scintillation detectors of satellites induced by X-ray/gamma-ray transients, by taking into account the response of the detector. Furthermore, we quantify the signal induced by X-ray and particle background sources at a Low-Earth Orbit outside South Atlantic Anomaly and polar regions. Finally, we calculate the signal-to-noise ratio taking into account different energy threshold levels. Our simulation can be used to optimize…
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