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Non-photonic electron identification in the EEMC with the STAR detector

mag(2008)

Cited 23|Views28
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monte carlo simulation
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要点】:本文提出了一种在STAR探测器的电磁量能器中用于非光子电子识别的新方法,旨在提升高能物理实验中的粒子识别准确度。

方法】:研究利用了机器学习技术,通过分析非光子电子在EEMC中的能量沉积模式来区分非光子电子与其他粒子。

实验】:实验在STAR探测器的EEMC设备上进行,使用的是RHIC collider产生的数据集,实验结果表明新方法在非光子电子识别上具有显著的准确率提升。