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An artificial neural network for proton identification in HERMES data
作者姓名:王思广  冒亚军  叶红学
作者单位:School of Physics and State Key Laboratory of Nuclear Physics & Technology,;Peking University, Beijing 100871, China
基金项目:Supported by National Science Foundation of China (10775006, 10375002, 10675004);;Doctoral Program Foundation of Institutions of Higher Education of China (20070001008);;China Postdoctoral Science Foundation
摘    要:The HERMES time-of-flight (TOF) system is used for proton identification, but must be carefully calibrated for systematic biases in the equipment. This paper presents an artificial neural network (ANN) trained to recognize protons from ∧^0 decay using only raw event data such as time delay, momentum, and trajectory. To avoid the systematic errors associated with Monte Carlo models, we collect a sample of raw experimental data from the year 2000. We presume that when for a positive hadron (assigned one proton mass) and a negative hadron (assigned one π^- mass) the reconstructed invariant mass lies within the ∧^0 resonance, the positive hadron is more likely to be a proton. Such events are assigned an output value of one during the training process; all others were assigned the output value zero.
The trained ANN is capable of identifying protons in independent experimental data, with an efficiency equivalent to the traditional TOF calibration. By modifying the threshold for proton identification, a researcher can trade off between selection efficiency and background rejection power. This simple and convenient method is applicable to similar detection problems in other experiments.

关 键 词:人工神经网络  粒子识别  TOF系统  质子识别
收稿时间:2008-7-3
修稿时间:2008-7-30

An artificial neural network for proton identification in HERMES data
WANG Si-Guang,MAO Ya-Jun,YE Hong-Xue.An artificial neural network for proton identification in HERMES data[J].High Energy Physics and Nuclear Physics,2009,33(3):217-223.
Authors:WANG Si-Guang  MAO Ya-Jun  YE Hong-Xue
Institution:School of Physics and State Key Laboratory of Nuclear Physics & Technology;Peking University;Beijing 100871;China
Abstract:artificial neural network, particle identification, TOF
Keywords:artificial neural network  particle identification  TOF  
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