Demagnetization Fault Diagnosis of PMSM Using Custom Phase Space Reconstruction Image
Jinping Xie, Zhuo Long, Xiaofei Zhang, Guojun Qin, Fengqin Huang, Zhimeng Rao
Abstract
In traditional one-dimensional signal-based fault diagnosis methods, there are difficulties in signal feature extraction and complexities in adjusting model hyperparameters. Therefore, a demagnetization fault diagnosis method for permanent magnet synchronous motor (PMSM) using custom phase space reconstruction (CPSR) image is proposed, which can be generalized to condition recognition. First, a CPSR method is proposed to reconstruct the magnetic leakage signal into a two-dimensional data image. Second, to overcome the problem of poor diagnosability of high-dimensional shallow features in existing local feature extraction methods, an image feature coding method is proposed, which can improve diagnostic performance through deep feature extraction and coding. Third, the improved autonomous learning multi-model constructs different fault data clouds with coded information, and realizes fault diagnosis according to the fuzzy rules of data cloud. Four kinds of demagnetized fault motors were manufactured for experimental verification. The extensive experimental results demonstrate that the proposed method is effective.