Nuclear Power Plant Thermocouple Sensor Fault Detection and Classification using Deep Learning and Generalized Likelihood Ratio Test

Mandal, Shyamapada and Santhi, B. and Sridhar, S. and Vinolia, K. and Swaminathan, P. (2017) Nuclear Power Plant Thermocouple Sensor Fault Detection and Classification using Deep Learning and Generalized Likelihood Ratio Test. IEEE Transactions on Nuclear Science. p. 1. ISSN 0018-9499

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Abstract

In this paper, an online fault detection and classification method is proposed for thermocouples used in nuclear power plants. In the proposed method, the fault data are detected by the classification method, which classifies the fault data from the normal data. Deep belief network (DBN), a technique for deep learning, is applied to classify the fault data. The DBN has a multilayer feature extraction scheme, which is highly sensitive to a small variation of data. Since the classification method is unable to detect the faulty sensor; therefore, a technique is proposed to identify the faulty sensor from the fault data. Finally, the composite statistical hypothesis test, namely generalized likelihood ratio test, is applied to compute the fault pattern of the faulty sensor signal based on the magnitude of the fault. The performance of the proposed method is validated by field data obtained from thermocouple sensors of the fast breeder test reactor.

Item Type: Article
Subjects: Computer Science Engineering > Cloud Computing
Divisions: Computer Science Engineering
Depositing User: Mr IR Admin
Date Deposited: 03 Oct 2024 10:26
Last Modified: 03 Oct 2024 10:26
URI: https://ir.vistas.ac.in/id/eprint/8488

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