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Cluster statistics based normalization for online fault diagnosis of self-powered neutron detectors

机译:基于聚类统计的归一化用于自供电中子探测器的在线故障诊断

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Self Powered Neutron Detector (SPND) is a widely used sensor for measuring neutron flux in a nuclear reactor. In this work we propose a novel cluster statistics based normalization scheme to normalize SPND measurements. These normalized measurements are subsequently used in a recursive Principal Component Analysis (PCA) based approach for detecting faults and identifying faulty SPNDs in an online manner. The motivation behind cluster statistics based normalization is that faults effect only individual sensors, while simultaneous variations in multiple sensors are usually caused by dynamic variations in the reactor operation. The proposed normalization approach is applied on SPND data obtained from an operating nuclear reactor and results compared with existing sensor statistics based normalization approach. The results demonstrate the utility of the proposed normalization approach.
机译:自供电中子探测器(SPND)是一种广泛用于测量核反应堆中子通量的传感器。在这项工作中,我们提出了一种新颖的基于聚类统计的归一化方案来归一化SPND测量。这些归一化的度量随后用于基于递归主成分分析(PCA)的方法中,以在线方式检测故障和识别故障SPND。基于聚类统计的归一化背后的动机是,故障仅影响单个传感器,而多个传感器的同时变化通常是由反应堆运行中的动态变化引起的。拟议的归一化方法应用于从运行中的核反应堆获得的SPND数据,并将结果与​​现有的基于传感器统计的归一化方法进行比较。结果证明了所提出的归一化方法的实用性。

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