首页> 外文期刊>Nuclear Instruments & Methods in Physics Research. B, Beam Interactions with Materials and Atoms >Advanced pulse shape discrimination via machine learning for application in thermonuclear fusion
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Advanced pulse shape discrimination via machine learning for application in thermonuclear fusion

机译:通过机器学习在热核融合中进行高级脉冲形状辨别

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摘要

Pulse shape discrimination, to distinguish between neutrons and gamma rays, is a very important classification task in thermonuclear fusion. Gaussian Mixture Models and probabilistic Support Vector Machines have been applied to hundreds of thousands of pulses obtained with a counter based on the NE213 liquid scintillator. The results of the two completely independent mathematical methods are in very good agreement, the maximum discrepancy being of the order of 2%. The achieved classification also shows an excellent value for the figure of merit, a Mahalanobis type of distance, implemented to quantify statistically the separation between the two particle distributions. These two machine learning tools provide also the probability of each example being a neutron or a gamma ray, allowing more detailed studies of the distribution of pulses. The proposed methodology therefore clearly outperforms previous techniques in practically all aspects of the classification.
机译:脉冲形状辨别,区分中子和伽马射线,是热核融合中的一个非常重要的分类任务。高斯混合模型和概率支持向量机已应用于使用基于NE213液体闪烁体的计数器获得的数百千次脉冲。两种完全独立的数学方法的结果非常良好,最大差异为2%的差异。实现的分类还显示了优异的价值,Mahalanobis距离类型,实现了统计上的两个粒子分布之间的分离。这两种机器学习工具还提供了每个示例是中子或伽马射线的概率,从而允许更详细地研究脉冲的分布。因此,所提出的方法在实际上在分类的所有方面都明确地优于先前的技术。

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