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luster Counting Algorithm for the CEPC Drift Chamber using LSTM and DGCNN

luster Counting Algorithm for the CEPC Drift Chamber using LSTM and DGCNN

中文摘要英文摘要

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.

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.

Shuiting Xin、Shuaiyi Liu、Gang Li、Guang Zhao、Zhefei Tian、Linghui Wu、Shengsen Sun、Mingyi Dong、Xiang Zhou、Zhenyu Zhang

物理学

Particle identificationluster countingMachine learningrift chamber

Particle identificationCluster countingMachine learningDrift chamber

Shuiting Xin,Shuaiyi Liu,Gang Li,Guang Zhao,Zhefei Tian,Linghui Wu,Shengsen Sun,Mingyi Dong,Xiang Zhou,Zhenyu Zhang.luster Counting Algorithm for the CEPC Drift Chamber using LSTM and DGCNN[EB/OL].(2025-02-05)[2025-08-23].https://chinaxiv.org/abs/202502.00029.点此复制

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