Knowledge-based and Data-driven Approach based Fault Diagnosis for Power-Electronics Energy Conversion System

Chuang Liu, Lei Kou, G. Cai, Jia-ning Zhou, Yi-qun Meng, Yunhui Yan
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引用次数: 5

Abstract

Recently, power electronic converters have been widely used since more renewable energy systems have been interconnected with the power grid, among which three-phase PWM rectifier is one of the most widely used in drives of electrical motors, AC and DC transmission, and other energy conversion fields. Like any other power electronic converter, three-phase PWM rectifier may be affected by various faults like open-circuit faults. Therefore, fault diagnosis is extremely important to reduce the maintenance costs and improve the stability of the system. A novel open-circuit faults diagnosis method is proposed. The fault diagnosis method only requires the three-phase AC currents, and then Concordia transform is used to calculate the slopes of the current trajectories (knowledge-based). After that the data-driven method of random forest algorithm is used to train the fault diagnosis classifier with slopes data. Finally the knowledge-based and data-driven fault diagnosis methods are combined to achieve fault diagnosis and location. Experiments are carried out and the experimental results are presented to validate effectiveness, robustness of the proposed fault diagnosis method. Furthermore, the proposed method is suitable for vast majority of three-phase energy conversion systems.
基于知识和数据驱动的电力电子能量转换系统故障诊断
近年来,随着越来越多的可再生能源系统接入电网,电力电子变流器得到了广泛的应用,其中三相PWM整流器在电机驱动、交直流输电等能量转换领域的应用最为广泛。与其他电力电子变换器一样,三相PWM整流器也会受到开路故障等各种故障的影响。因此,故障诊断对于降低维护成本,提高系统的稳定性具有极其重要的意义。提出了一种新的开路故障诊断方法。故障诊断方法只需要三相交流电流,然后使用Concordia变换计算电流轨迹的斜率(基于知识)。然后利用随机森林算法的数据驱动方法对坡度数据进行故障诊断分类器的训练。最后将基于知识的故障诊断方法和数据驱动的故障诊断方法相结合,实现故障诊断与定位。实验结果验证了所提故障诊断方法的有效性和鲁棒性。此外,该方法适用于绝大多数三相能量转换系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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