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Main Authors: Yu, Longkun, Zhang, Chenxing, Guo, Dongya, Liu, Yaqing, Peng, Wenxi, Wang, Zhigang, Lu, Bing, Qiao, Rui, Gong, Ke, Wang, Jing, Yang, Shuai, Li, Yongye
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.18301
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author Yu, Longkun
Zhang, Chenxing
Guo, Dongya
Liu, Yaqing
Peng, Wenxi
Wang, Zhigang
Lu, Bing
Qiao, Rui
Gong, Ke
Wang, Jing
Yang, Shuai
Li, Yongye
author_facet Yu, Longkun
Zhang, Chenxing
Guo, Dongya
Liu, Yaqing
Peng, Wenxi
Wang, Zhigang
Lu, Bing
Qiao, Rui
Gong, Ke
Wang, Jing
Yang, Shuai
Li, Yongye
contents The High Energy cosmic-Radiation Detection (HERD) facility is a dedicated high energy astronomy and particle physics experiment planned to be installed on the Chinese space station, aiming to detect high-energy cosmic rays (GeV $\sim$ PeV) and high-energy gamma rays ($>$ 500 MeV). The Plastic Scintillator Detector (PSD) is one of the sub-detectors of HERD, with its main function of providing real-time anti-conincidence signals for gamma-ray detection and the secondary function of measuring the charge of cosmic-rays. In 2023, a prototype of PSD was developed and tested at CERN PS&SPS. In this paper, we investigate the position response of the PSD using two reconstruction algorithms: the classic dual-readout ratio and the deep learning method (KAN & MLP neural network). With the latter, we achieved a position resolution of 2 mm (1$σ$), which is significantly better than the classic method.
format Preprint
id arxiv_https___arxiv_org_abs_2412_18301
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Position reconstruction using deep learning for the HERD PSD beam test
Yu, Longkun
Zhang, Chenxing
Guo, Dongya
Liu, Yaqing
Peng, Wenxi
Wang, Zhigang
Lu, Bing
Qiao, Rui
Gong, Ke
Wang, Jing
Yang, Shuai
Li, Yongye
Instrumentation and Methods for Astrophysics
The High Energy cosmic-Radiation Detection (HERD) facility is a dedicated high energy astronomy and particle physics experiment planned to be installed on the Chinese space station, aiming to detect high-energy cosmic rays (GeV $\sim$ PeV) and high-energy gamma rays ($>$ 500 MeV). The Plastic Scintillator Detector (PSD) is one of the sub-detectors of HERD, with its main function of providing real-time anti-conincidence signals for gamma-ray detection and the secondary function of measuring the charge of cosmic-rays. In 2023, a prototype of PSD was developed and tested at CERN PS&SPS. In this paper, we investigate the position response of the PSD using two reconstruction algorithms: the classic dual-readout ratio and the deep learning method (KAN & MLP neural network). With the latter, we achieved a position resolution of 2 mm (1$σ$), which is significantly better than the classic method.
title Position reconstruction using deep learning for the HERD PSD beam test
topic Instrumentation and Methods for Astrophysics
url https://arxiv.org/abs/2412.18301