Daniel Walch, Christoph Blechinger, Martin Schellenberger, Maximilian Hofmann, Bernd Eckardt, Vincent R. H. Lorentz
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引用次数: 0
摘要
转子磁体退磁是永磁同步电机(PMSM)可能出现的一种重要故障模式。及早发现退磁故障有助于改变系统参数,从而降低功率输出或确保安全。本文以无人机电机为例,通过模拟和实验分析了退磁故障的影响。本文研究了一种即使是轻微退磁故障也无需额外传感的检测方法。机器学习 (ML) 技术用于分析直接从逆变器接收的相电流数据,以实现异常检测。为此,通过快速傅立叶变换(FFT)对相电流进行转换,然后降低频谱数据的维度,接着使用单类支持向量机(OC-SVM)进行异常检测算法。为确保简化 ML 模型的初始化,而无需使用受损驱动器的训练集,我们仅使用磁性未受损电机的数据来训练异常检测模型。使用实验数据对不同的谐波选择和不同的指标进行了研究,结果表明精确度高达 99%,特异性高达 98%,准确度高达 90%。
Detection of Demagnetization Faults in Electric Motors by Analyzing Inverter Based Current Data Using Machine Learning Techniques
Demagnetization of the rotor magnets is a significant failure mode that can occur in permanent magnet synchronous machines (PMSMs). Early detection of demagnetization faults can help change system parameters to reduce power output or ensure safety. In this paper, the effects of demagnetization faults were analyzed both in simulation and experiments using the example of drone motors. An approach was investigated to detect even minor demagnetization faults that does not require any additional sensing effort. Machine learning (ML) techniques are used to analyze the phase current data directly received from the inverter to enable anomaly detection. For this purpose, the phase current is transformed by the Fast Fourier Transform (FFT), the spectral data is then reduced in dimensionality, followed by an anomaly detection algorithm using a one-class support vector machine (OC-SVM). To ensure simplified initialization of the ML model without the need for training sets of damaged drives, only data from magnetically undamaged motors was used to train the models for anomaly detection. Different selections of considered harmonics and different metrics were investigated using the experimental data, achieving a precision of up to 99 %, a specificity of up to 98 %, and an accuracy of up to 90 %.