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基于混合机器学习方法的PMSM驱动系统多故障检测与诊断
Fault Detection and Diagnosis for Multi‐Faults of PMSM‐Drive Systems Using a Hybrid Machine Learning Method
| 作者 | Hüseyin Tayyer Canseven · Evin Şahin Sadık · Merve Cömert · Abdurrahman Ünsal |
| 期刊 | IET Power Electronics |
| 出版日期 | 2026年2月 |
| 卷/期 | 第 19 卷 第 1 期 |
| 技术分类 | 智能化与AI应用 |
| 技术标签 | 故障诊断 机器学习 PMSM 逆变器 |
| 相关度评分 | ★★★★ 4.0 / 5.0 |
| 关键词 |
语言:
中文摘要
本文提出一种基于低频相电流信号的无侵入式PMSM驱动系统故障检测与诊断方法,聚焦逆变器功率器件相关故障。通过Clarke变换、成对特征融合与三阶段特征选择,结合随机森林、梯度提升与KNN的晚期融合模型,实现93.3%准确率和95.91%宏F1分数。
English Abstract
ABSTRACT
This paper presents a non‐invasive fault detection and diagnosis (FDD) methodology for permanent magnet synchronous machine (PMSM) drives, using low‐frequency phase current signals. Specifically, this work focuses on the detection and diagnosis of power electronics‐related inverter faults, which are a common source of system failures. The proposed framework introduces a pairwise feature fusion technique to enhance class separability and employs a three‐stage selection process to distil a compact, discriminative feature set from Clarke‐transformed current data. Diagnosis is performed by a hybrid machine learning model that ensembles the predictions of random forest, histogram‐based gradient boosting, and k‐nearest neighbours classifiers via a late‐fusion strategy. The performance of the proposed method is evaluated on a publicly available experimental dataset containing nine operational states (one healthy and eight distinct inverter faults). The proposed method achieves an overall accuracy of 93.3% and a macro F1‐score of 95.91%. The results demonstrate that the proposed approach can accurately diagnose multiple inverter faults without requiring high‐frequency data acquisition or additional sensors, offering a cost‐effective solution for enhancing the reliability of PMSM drives.
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SunView 深度解读
该方法可直接迁移应用于阳光电源ST系列PCS、组串式逆变器及PowerTitan储能系统的IGBT模块健康状态监测,无需额外传感器,显著降低运维成本。建议在iSolarCloud平台中集成轻量化故障诊断模型,支持逆变器早期失效预警;尤其适用于工商业光伏+储能场景中高频启停导致的功率器件退化监测。