Exploring the Key Features of Repeating Fast Radio Bursts with Machine Learning

Wan-Peng Sun, Ji-Guo Zhang, Yichao Li, Wan-Ting Hou, Fu-Wen Zhang, Jing-Fei Zhang, Xin Zhang
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Abstract

Fast radio bursts (FRBs) are enigmatic high-energy events with unknown origins, which are observationally divided into two categories, i.e., repeaters and non-repeaters. However, there are potentially a number of non-repeaters that may be misclassified, as repeating bursts are missed due to the limited sensitivity and observation periods, thus misleading the investigation of their physical properties. In this work, we propose a repeater identification method based on the t-distributed Stochastic Neighbor Embedding (t-SNE) algorithm and apply the classification to the first Canadian Hydrogen Intensity Mapping Experiment Fast Radio Burst (CHIME/FRB) catalog. We find that the spectral morphology parameters, specifically spectral running ($r$), represent the key features for identifying repeaters from the non-repeaters. Also, the results suggest that repeaters are more biased towards narrowband emission, whereas non-repeaters are inclined toward broadband emission. We provide a list of 163 repeater candidates, with $5$ of which are confirmed with an updated repeater catalog from CHIME/FRB. Our findings help to the understanding of the various properties underlying repeaters and non-repeaters, as well as guidelines for future FRB detection and categorization.
利用机器学习探索重复快速无线电脉冲的关键特征
快速射电暴(FRBs)是起源不明的神秘高能事件,观测上将其分为两类,即重复暴和非重复暴。然而,由于灵敏度和观测周期的限制,重复爆发被遗漏,从而误导了对其物理特性的研究,因此可能有许多非重复爆发被错误分类。在这项工作中,我们提出了一种基于 t 分布随机邻域嵌入(t-SNE)算法的中继器识别方法,并将其应用于第一个加拿大氢强度绘图实验快速射电暴(CHIME/FRB)目录。我们发现,光谱形态参数,特别是光谱运行($r$),是识别中继器和非中继器的关键特征。同时,结果表明中继器更偏向于窄带发射,而非中继器则倾向于宽带发射。我们提供了一份 163 个中继器候选者名单,其中有 5 美元是通过 CHIME/FRB 更新的中继器目录确认的。我们的发现有助于理解中继器和非中继器的各种基本特性,并为未来的FRB探测和分类提供指导。
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