论文标题

使用机器学习技术的脉冲形状模拟和歧视

Pulse Shape Simulation and Discrimination using Machine-Learning Techniques

论文作者

Dutta, Shubham, Ghosh, Sayan, Bhattacharya, Satyaki, Saha, Satyajit

论文摘要

粒子识别实验质量的基本度量是其统计能力,可以区分信号和背景。在使用闪烁检测器的许多核,高能和罕见的搜索实验中,脉冲形状歧视(PSD)是用于此目的的基本方法。传统技术利用信号和背景事件的脉冲衰减时差异或由不同类型的辐射量子引起的脉冲信号以实现良好的歧视。但是,只有当总的光发射足以获得适当的脉冲轮廓时,这种技术才有效。只有当从探测器上入射粒子引起的电子弹药的核心或闪烁剂材料的核中沉积足够量的能量时。但是,罕见的事实搜索实验(例如直接搜索暗物质)并不总是满足这些条件。因此,必须拥有一种可以在这些情况下提供非常有效歧视的方法。基于神经网络的机器学习算法已用于许多物理领域的分类问题,尤其是在高能实验中,并且与传统技术相比,结果更好。我们介绍了对两种基于网络的方法\ viz密集的神经网络和复发性神经网络的研究结果,用于脉冲形状歧视,并将其与常规方法进行比较。

An essential metric for the quality of a particle-identification experiment is its statistical power to discriminate between signal and background. Pulse shape discrimination (PSD) is a basic method for this purpose in many nuclear, high-energy and rare-event search experiments where scintillation detectors are used. Conventional techniques exploit the difference between decay-times of the pulses from signal and background events or pulse signals caused by different types of radiation quanta to achieve good discrimination. However, such techniques are efficient only when the total light-emission is sufficient to get a proper pulse profile. This is only possible when adequate amount of energy is deposited from recoil of the electrons or the nuclei of the scintillator materials caused by the incident particle on the detector. But, rare-event search experiments like direct search for dark matter do not always satisfy these conditions. Hence, it becomes imperative to have a method that can deliver a very efficient discrimination in these scenarios. Neural network based machine-learning algorithms have been used for classification problems in many areas of physics especially in high-energy experiments and have given better results compared to conventional techniques. We present the results of our investigations of two network based methods \viz Dense Neural Network and Recurrent Neural Network, for pulse shape discrimination and compare the same with conventional methods.

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