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Support vector ensemble for incipient fault diagnosis in nuclear plant components

机译:支持向量集合用于核电站组件的早期故障诊断

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The randomness and incipient nature of certain faults in reactor systems warrant a robust and dynamic detection mechanism. Existing models and methods for fault diagnosis using different mathematical/statistical inferences lack incipient and novel faults detection capability. To this end, we propose a fault diagnosis method that utilizes the flexibility of data-driven Support Vector Machine (SVM) for component-level fault diagnosis. The technique integrates separately-built, separately-trained, specialized SVM modules capable of component-level fault diagnosis into a coherent intelligent system, with each SVM module monitoring sub-units of the reactor coolant system. To evaluate the model, marginal faults selected from the failure mode and effect analysis (FMEA) are simulated in the steam generator and pressure boundary of the Chinese CNP300 PWR (Qinshan I NPP) reactor coolant system, using a best-estimate thermal-hydraulic code, RELAP5/SCDAP Mod4.0. Multiclass SVM model is trained with component level parameters that represent the steady state and selected faults in the components. For optimization purposes, we considered and compared the performances of different multiclass models in MATLAB, using different coding matrices, as well as different kernel functions on the representative data derived from the simulation of Qinshan I NPP. An optimum predictive model - the Error Correcting Output Code (ECOC) withTenaryCompletecoding matrix - was obtained from experiments, and utilized to diagnose the incipient faults. Some of the important diagnostic results and heuristic model evaluation methods are presented in this paper.
机译:反应堆系统中某些故障的随机性和初期性质保证了可靠而动态的检测机制。现有的使用不同数学/统计推论进行故障诊断的模型和方法缺乏早期和新颖的故障检测能力。为此,我们提出一种故障诊断方法,该方法利用数据驱动的支持向量机(SVM)的灵活性进行组件级故障诊断。该技术将能够进行组件级故障诊断的分别构建,单独训练的专用SVM模块集成到一个连贯的智能系统中,每个SVM模块都监视反应堆冷却剂系统的子单元。为了评估该模型,使用最佳估计的热工水力代码在中国CNP300 PWR(秦山核电厂)反应堆冷却剂系统的蒸汽发生器和压力边界中模拟了从失效模式和影响分析(FMEA)中选择的边际故障。 ,RELAP5 / SCDAP Mod4.0。使用代表组件中的稳态和选定故障的组件级参数训练多类SVM模型。出于优化目的,我们对不同的多类模型在MATLAB中的性能进行了比较,并使用了不同的编码矩阵以及对秦山I NPP的模拟得出的代表性数据使用了不同的内核函数。通过实验获得了最佳的预测模型-具有十进制完整编码矩阵的纠错输出码(ECOC),并将其用于诊断早期故障。本文介绍了一些重要的诊断结果和启发式模型评估方法。

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