Abstract
Abstract
The tracks recorded by a gaseous detector provide a possibility for charged particle identification. For searching the neutrinoless double beta decay events of 136Xe in the PandaX-III experiment, we optimized the convolutional neural network based on the Monte Carlo simulation data to improve the signal-background discrimination power. EfficientNet is chosen as the baseline model and the optimization is performed by tuning the hyperparameters. In particular, the maximum discrimination power is achieved by optimizing the channel number of the top convolutional layer. In comparison with our previous work, the significance of discrimination has been improved by ∼70%.
Funder
CAS Center for Excellence in Particle Physics
Ministry of Science and Technology of China
National Natural Sciences Foundation of China
Subject
Nuclear and High Energy Physics
Cited by
1 articles.
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