Litcius/Paper detail

Small‐batch‐size convolutional neural network based fault diagnosis system for nuclear energy production safety with big‐data environment

Yuantao Yao, Jin Wang, Jin Wang, Pengcheng Long, Min Xie, Jianye Wang, Jianye Wang

2020International Journal of Energy Research61 citationsDOI

Abstract

In nuclear energy production, with the continuous innovations and challenges in the big data and the industry 4.0 era, to guarantee the operation safety without the fault and failure will become more complex and intelligent. In this paper, a novel optimized convolutional neural network with small-batch-size processing (SCNN) was proposed and assembled in the nuclear fault diagnosis system. Eleven kinds of normal and fault conditions that include the whole 316 simulator sensor features were used to evaluate the performance of the proposed diagnosis system. The application of batch normalization with SCNN significantly optimized the model validation accuracy and loss under 100 epochs compared with normal operation and adding drop-out operation in same condition. Besides, outstanding diagnosis accuracy was highlighted by the comparison of traditional binary and multiple classification methods. This proposed diagnosis system has achieved more precise diagnosis accuracy and will provide the useful guidance to operators, assisting them to make accurate and rapid decision to ensure nuclear energy production safety.

Topics & Concepts

Normalization (sociology)Computer scienceConvolutional neural networkFault (geology)Artificial neural networkProduction (economics)Reliability engineeringArtificial intelligenceEngineeringMacroeconomicsEconomicsSeismologyAnthropologyGeologySociologyFault Detection and Control SystemsNon-Destructive Testing TechniquesNuclear reactor physics and engineering