Deep Learning Based Event Reconstruction for Cyclotron Radiation Emission Spectroscopy

回旋加速器 事件(粒子物理) 辐射 光谱学 物理 回旋加速器辐射 核物理学 天文 天体物理学 等离子体
作者
A. Ashtari Esfahani,S. Böser,N. Buzinsky,M. C. Carmona-Benitez,R. Cervantes,C. Claessens,L. de Viveiros,M. Fertl,J. A. Formaggio,J. K. Gaison,L. Gladstone,M. Grando,M. Guigue,J. Hartse,K. M. Heeger,X. Huyan,A. M. Jones,K. Kazkaz,M. Li,A. Lindman
出处
期刊:Cornell University - arXiv 被引量:1
标识
DOI:10.1088/2632-2153/ad3ee3
摘要

The objective of the Cyclotron Radiation Emission Spectroscopy (CRES) technology is to build precise particle energy spectra. This is achieved by identifying the start frequencies of charged particle trajectories which, when exposed to an external magnetic field, leave semi-linear profiles (called tracks) in the time-frequency plane. Due to the need for excellent instrumental energy resolution in application, highly efficient and accurate track reconstruction methods are desired. Deep learning convolutional neural networks (CNNs) - particularly suited to deal with information-sparse data and which offer precise foreground localization - may be utilized to extract track properties from measured CRES signals (called events) with relative computational ease. In this work, we develop a novel machine learning based model which operates a CNN and a support vector machine in tandem to perform this reconstruction. A primary application of our method is shown on simulated CRES signals which mimic those of the Project 8 experiment - a novel effort to extract the unknown absolute neutrino mass value from a precise measurement of tritium $\beta^-$-decay energy spectrum. When compared to a point-clustering based technique used as a baseline, we show a relative gain of 24.1% in event reconstruction efficiency and comparable performance in accuracy of track parameter reconstruction.
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