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Kernel approaches for fault detection and classification in PARR-2

机译:核对Parr-2中的故障检测和分类方法

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Safety and reliability of nuclear power plants is of utmost importance. For that purpose, modern fault detection and classification (FDC) techniques are being devised to compliment the existing hardware redundancy and limit checking techniques. Among these modern techniques, Fisher discriminant analysis (FDA) and support vector machines (SVM) have been shown to be successful for FDC of nuclear reactors. By considering the fact that both FDA and SVM are basically established for linear systems and nuclear reactors are highly nonlinear processes, it becomes more intuitive to utilize some nonlinear FDC technique. To this end, application of kernel based non-linear approaches including kernel FDA (KFDA) and kernel SVM (KSVM) is proposed in this paper for fault detection and classification in Pakistan Research Reactor-2. Control rod withdrawal and accidental external reactivity insertion faults are manually executed at PARR-2, and training data is collected from the reactor based on which KFDA and KSVM models are developed. The online data is subsequently tested using the developed models which resulted into reliable fault classification. (C) 2018 Elsevier Ltd. All rights reserved.
机译:核电站的安全性和可靠性至关重要。为此目的,正在设计现代故障检测和分类(FDC)技术以赞美现有的硬件冗余和限制检查技术。在这些现代技术中,已显示核反应堆的FDC成功的Fisher判别分析(FDA)和支持载体机(SVM)。通过考虑FDA和SVM基本上为线性系统和核反应堆建立了高度非线性过程,利用一些非线性FDC技术变得更加直观。为此,本文提出了基于基于内核的非线性方法,包括内核FDA(KFDA)和核SVM(KSVM),用于巴基斯坦研究反应堆-2的故障检测和分类。控制杆取出和意外外部反应性插入故障在Parr-2手动执行,并且根据该反应器收集训练数据,基于该训练数据是开发的,该kfda和ksvm模型是开发的。随后使用开发的模型测试在线数据,该模型导致可靠的故障分类。 (c)2018年elestvier有限公司保留所有权利。

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