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False alarm reducing in PCA method for sensor fault detection in a nuclear power plant

机译:PCA方法中减少虚警的核电厂传感器故障检测方法

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Principal component analysis (PCA) is applied for fault detection of sensors in a nuclear power plant (NPP) in this paper. In order to reduce the false alarms of T-2 and Q statistics during fault detection, two different methods are further proposed in this paper. One is statistics-based method which generates second confidence limits for T-2 and Q statistics, and then false alarms are reduced based on the second confidence limit during test. The other is iteration-based method which reduces false alarms during modeling. Measurements beyond the first confidence limit of T-2 or Q statistics are successively removed from the training data through iteration process. Finally, sensor measurements from a real NPP are acquired to train and test the proposed methods. On one hand, simulation results show that the proposed PCA model is capable of detecting the faulty sensors no matter with small or major failures. On the other hand, simulations also indicate that the PCA model combined with statistics-based and iteration-based methods simultaneously makes more contribution to the timeliness and effectiveness of sensor fault detection compared with the PCA model only with statistics-based or iteration-based method. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文将主成分分析(PCA)应用于核电站(NPP)中的传感器故障检测。为了减少故障检测过程中T-2和Q统计信息的误报,本文提出了两种不同的方法。一种是基于统计的方法,该方法为T-2和Q统计生成第二个置信度限制,然后根据测试期间的第二个置信度限制减少误报。另一种是基于迭代的方法,可减少建模期间的错误警报。通过迭代过程,从训练数据中连续删除超出T-2或Q统计量的第一个置信度限制的测量。最后,获取来自实际NPP的传感器测量值,以训练和测试所提出的方法。一方面,仿真结果表明,所提出的PCA模型能够检测故障传感器,无论是小故障还是大故障。另一方面,仿真还表明,与仅基于统计或基于迭代的方法相比,PCA模型与基于统计和基于迭代的方法相结合同时对传感器故障检测的及时性和有效性做出了更大的贡献。 。 (C)2018 Elsevier Ltd.保留所有权利。

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