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首页> 外文期刊>Nuclear Instruments & Methods in Physics Research. Section A, Accelerators, Spectrometers, Detectors and Associated Equipment >Pulse pileup rejection methods using a two-component Gaussian Mixture Model for fast neutron detection with pulse shape discriminating scintillator
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Pulse pileup rejection methods using a two-component Gaussian Mixture Model for fast neutron detection with pulse shape discriminating scintillator

机译:脉冲堆叠抑制方法,使用双组分高斯混合模型进行脉冲形状辨别闪烁体的快节中子检测

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摘要

Pulse shape discriminating scintillator materials in many cases allow the user to identify two basic kinds of pulses arising from two kinds of particles: neutrons and gammas, respectively. An uncomplicated solution for building a classifier consists of a two-component mixture model learned from mixtures of pulses from neutrons and gammas at a range of energies. Depending on the conditions of data gathered to be classified, multiple classes of events besides neutrons and gammas may occur, most notably pileup events. All these kinds of events that are neither neutron nor gamma are anomalous and, in cases where the class of the particle is in doubt, it is preferable to remove them from the analysis. This study compares the performance of two analytical methods for using the scores from the two-component model to identify anomalous events and in particular to remove pileup events. This study further benchmarks the analytical methods against supervised machine learning methods. This study also presents a means of assessing performance of pileup removal using ROC curves and precision-recall curves. A specific outcome of this study is to propose a novel anomaly score, denoted by G, from an unsupervised two-component model that is conveniently distributed on the interval [-1,1].
机译:脉冲形状在许多情况下识别闪烁体材料允许用户识别两种颗粒产生的两种基本种类的脉冲:中子和伽马。用于构建分类器的简单解决方案包括从中子和伽马脉的混合物中学到的双组分混合物模型在一系列能量中获知。根据收集的数据的条件,除了中子和伽马之外,可能发生多种事件,最符合堆叠事件。既不是中子也不是γ的所有这些事件都是异常的,并且在颗粒的类疑问的情况下,优选从分析中取出它们。本研究比较了两种分析方法的性能,用于使用双组分模型的分数来识别异常事件,特别是去除堆积事件。本研究进一步基准对监督机器学习方法的分析方法进行了基准。本研究还介绍了使用ROC曲线和精密召回曲线评估堆叠去除性能的手段。本研究的特定结果是提出一种由G的新型异常评分来自无监督的双组分模型,其方便地分布在间隔[-1,1]上。

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