LGAISPNov 11, 2024

Research on an intelligent fault diagnosis method for nuclear power plants based on ETCN-SSA combined algorithm

arXiv:2411.06765v1h-index: 4
Originality Incremental advance
AI Analysis

This is an incremental improvement for nuclear power professionals, addressing the limitations of traditional methods that rely on complex feature extraction and expert knowledge.

The paper tackled fault diagnosis in nuclear power plants by proposing a combined ETCN-SSA algorithm, which demonstrated superior performance on a CPR1000 simulation dataset compared to other advanced methods.

Utilizing fault diagnosis methods is crucial for nuclear power professionals to achieve efficient and accurate fault diagnosis for nuclear power plants (NPPs). The performance of traditional methods is limited by their dependence on complex feature extraction and skilled expert knowledge, which can be time-consuming and subjective. This paper proposes a novel intelligent fault diagnosis method for NPPs that combines enhanced temporal convolutional network (ETCN) with sparrow search algorithm (SSA). ETCN utilizes temporal convolutional network (TCN), self-attention (SA) mechanism and residual block for enhancing performance. ETCN excels at extracting local features and capturing time series information, while SSA adaptively optimizes its hyperparameters for superior performance. The proposed method's performance is experimentally verified on a CPR1000 simulation dataset. Compared to other advanced intelligent fault diagnosis methods, the proposed one demonstrates superior performance across all evaluation metrics. This makes it a promising tool for NPP intelligent fault diagnosis, ultimately enhancing operational reliability.

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