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Fuzzy C-Means Clustering of Signal Functional Principal Components for Post-Processing Dynamic Scenarios of a Nuclear Power Plant Digital Instrumentation and Control System

机译:核电厂数字仪表和控制系统后处理动态方案的信号功能主成分的模糊C均值聚类

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This paper addresses the issue of the classification of accident scenarios generated in a dynamic safety and reliability analyses of a Nuclear Power Plant (NPP) equipped with a Digital Instrumentation and Control system (I&C). More specifically, the classification of the final state reached by the system at the end of an accident scenario is performed by Fuzzy C-Means clustering the Functional Principal Components (FPCs) of selected relevant process variables. The approach allows capturing the characteristics of the process evolution determined by the occurrence, timing, and magnitudes of the fault events. An illustrative case study is considered, regarding the fault scenarios of the digital I&C system of the Lead Bismuth Eutectic eXperimental Accelerator Driven System (LBE-XADS). The results obtained are compared with those of the Kth Nearest Neighbor (KNN), and Classification and Regression Tree (CART) classifiers.
机译:本文讨论了在配备了数字仪表和控制系统(I&C)的核电厂(NPP)的动态安全性和可靠性分析中生成的事故场景的分类问题。更具体地说,在事故场景结束时,系统达到的最终状态的分类是通过对所选相关过程变量的功能主成分(FPC)进行聚类的Fuzzy C均值进行的。该方法允许捕获由故障事件的发生,时间和大小确定的过程演变的特征。考虑了有关铅铋共晶电子加速器驱动系统(LBE-XADS)的数字I&C系统的故障情况的说明性案例研究。将获得的结果与第K最近邻(KNN)以及分类和回归树(CART)分类器的结果进行比较。

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