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Cluster Counting Algorithm for the CEPC Drift Chamber Using LSTM and DGCNN

Nuclear Science and Techniques(2025)

Wuhan University

Cited 0|Views37
Abstract
The particle identification(PID)of hadrons plays a crucial role in particle physics experiments,especially in flavor physics and jet tagging.The cluster counting method,which measures the number of primary ionizations in gaseous detectors,is a promising breakthrough in PID.However,developing an effective reconstruction algorithm for cluster counting remains challenging.To address this challenge,we propose a cluster counting algorithm based on long short-term memory and dynamic graph convolutional neural networks for the CEPC drift chamber.Experiments on Monte Carlo simulated samples demonstrate that our machine learning-based algorithm surpasses traditional methods.It improves the K/π separation of PID by 10%,meeting the PID requirements of CEPC.
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Key words
Particle identification,Cluster counting,Machine learning,Drift chamber
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