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A new ensemble-based classifier for IGBT open-circuit fault diagnosis in three-phase PWM converter

机译:三相PWM转换器中的IGBT开路故障诊断的新合奏分类器

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Three-phase pulse width modulation converters using insulated gate bipolar transistors (IGBTs) have been widely used in industrial application. However, faults in IGBTs can severely affect the operation and safety of the power electronics equipment and loads. For ensuring system reliability, it is necessary to accurately detect IGBT faults accurately as soon as their occurrences. This paper proposes a diagnosis method based on data-driven theory. A novel randomized learning technology, namely extreme learning machine (ELM) is adopted into historical data learning. Ensemble classifier structure is used to improve diagnostic accuracy. Finally, time window is defined to illustrate the relevance between diagnostic accuracy and data sampling time. By this mean, an appropriate time window is achieved to guarantee a high accuracy with relatively short decision time. Compared to other traditional methods, ELM has a better classification performance. Simulation tests validate the proposed ELM ensemble diagnostic performance.
机译:使用绝缘栅双极晶体管(IGBT)的三相脉冲宽度调制转换器已广泛用于工业应用中。然而,IGBT中的故障可能严重影响电力电子设备和负载的操作和安全性。为了确保系统可靠性,必须尽快准确地准确地检测IGBT故障。本文提出了一种基于数据驱动理论的诊断方法。一种新型随机学习技术,即极端学习机(ELM)被采用历史数据学习。合奏分类器结构用于提高诊断准确性。最后,定义了时间窗口以说明诊断准确性和数据采样时间之间的相关性。通过这种方式,实现了适当的时间窗口以保证具有相对较短的决定时间的高精度。与其他传统方法相比,ELM具有更好的分类性能。仿真试验验证提出的ELM合奏诊断性能。

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