摘要: Particle identification (PID) of hadrons plays a crucial role in particle physics experiments, especially for flavor physics and jet tagging. The cluster counting method, which measures the number of primary ionizations in gaseous detectors, represents a promising breakthrough in PID. However, developing an effective reconstruction algorithm for cluster counting remains a major challenge. In this study, we address this challenge by proposing a cluster counting algorithm based on long short-term memory and dynamic graph convolutional neural networks for the CEPC drift chamber. Leveraging Monte Carlo simulated samples, our machine learning-based algorithm surpasses traditional methods. Specifically, it achieves a remarkable 10% improvement in K/pi separation for PID performance, which meets the necessary PID requirements for CEPC.
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来自:
田喆飞
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分类:
核科学技术
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辐射物理与技术
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说明:
All authors contributed to the study conception and design. Material preparation, data collection and analysis were performed by Zhe-Fei Tian and Guang Zhao. The first draft of the manuscript was written by Zhe-Fei Tian and all authors commented on previous versions of the manuscript. All authors read and approved the final manuscript.
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投稿状态:
已被期刊接收
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引用:
ChinaXiv:202502.00029
(或此版本
ChinaXiv:202502.00029V1)
DOI:10.12074/202502.00029
CSTR:32003.36.ChinaXiv.202502.00029
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科创链TXID:
89f2282a-699c-4c00-a595-f8b43b1417f9
- 推荐引用方式:
Zhefei Tian,Guang Zhao,Linghui Wu,Zhenyu Zhang,Xiang Zhou,Shuiting Xin,Shuaiyi Liu,Gang Li,Mingyi Dong,Shengsen Sun.Cluster Counting Algorithm for the CEPC Drift Chamber using LSTM and DGCNN.中国科学院科技论文预发布平台.[DOI:10.12074/202502.00029]
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