Fault Diagnosis of Circuit Breakers Based on MCF-RPs and Deep Residual Knowledge Incremental Under Distillation Learning

التفاصيل البيبلوغرافية
العنوان: Fault Diagnosis of Circuit Breakers Based on MCF-RPs and Deep Residual Knowledge Incremental Under Distillation Learning
المؤلفون: Sun, Shuguang, Xia, Ziqi, Wang, Jingqin, Wang, Haoyu, Lu, Mengxin
المصدر: IEEE Sensors Journal; November 2024, Vol. 24 Issue: 21 p34862-34878, 17p
مستخلص: The core aspect of online monitoring the health status of low-voltage switching appliances is the fault diagnosis of circuit breakers. Contemporary intelligent fault diagnosis methods primarily focus on improving the accuracy of fault detection. However, the performance of incremental diagnosis in dynamic scenarios faces significant challenges due to the growing volume of data from industrial streaming and the continuous accumulation of new fault data for monitoring. Therefore, a multistage incremental learning (IL) fault diagnosis method is proposed. First, the preprocessed three-channel 1-D vibration signal data is converted to the recurrence plot of multichannel fusion (MCF-RPs) through a process that involves a combination of time-frequency decomposition and nonlinear dynamics analysis. This approach aims to reduce the impact of nonlinear disturbances on the diagnostic model while comprehensively capturing the characteristics of faults. Second, under the framework of distillation learning, the improved ResNeSt18 IL model is constructed by combining the sample retention and transfer recall. This effectively extracts fault characteristics, reducing the occurrence of catastrophic forgetting and knowledge drift. Finally, the results of IL diagnosis experiment on multiphase fault types demonstrate that the suggested approach significantly improves the scalability and intelligence of the diagnostic model. This development holds great promise for tackling practical industrial issues.
قاعدة البيانات: Supplemental Index
الوصف
تدمد:1530437X
15581748
DOI:10.1109/JSEN.2024.3440002