Adding Gamma-ray Polarimetry to the Multi-Messenger Era
Merlin Kole, Francesco Iacovelli, Michele Mancarella, Nicolas Produit

TL;DR
This paper explores the potential and scientific benefits of joint gamma-ray polarimetry and gravitational wave observations for understanding gamma-ray burst emission models, emphasizing future prospects with advanced detectors.
Contribution
It defines how GW data can enhance gamma-ray polarimetry analysis and provides forecasts for joint detection capabilities with current and future observatories.
Findings
Joint detections can significantly constrain emission models.
Future detectors will improve joint detection prospects.
Even a single joint detection has high scientific value.
Abstract
The last decade has seen the emergence of two new fields within astrophysics: gamma ray polarimetry and GW astronomy. The former, which aims to measure the polarization of gamma rays in the energy range of 10s to 100s of keV, from astrophysical sources, saw the launch of the first dedicated polarimeters such as GAP and POLAR. On the other hand, GW astronomy started with the detection of the first black hole mergers by LIGO in 2015, followed by the first multi messenger detection in 2017. While the potential of the two individual fields has been discussed in detail in the literature, the potential for joint observations has thus far been ignored. In this article, we aim to define how GW observations can best contribute to gamma ray polarimetry and study the scientific potential of joint analyses. In addition we aim to provide predictions on feasibility of such joint measurements in the…
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Taxonomy
TopicsGamma-ray bursts and supernovae · Astrophysics and Cosmic Phenomena · Particle Detector Development and Performance
