A Data-Driven Method for Online Fault Diagnosis in Single-Phase PWM Rectifier

Kun Zhang, Bin Gou
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Abstract

In power electronical traction transformer, the failure of the single-phase PWM rectifier will lead to irreparable degradation of the system. Thus, this article proposes a feasible data-driven method to diagnose both the current sensor faults and insulated gate bipolar transistors (IGBTs) open-circuit faults of single-phase PWM rectifier online. The principle of the method is to construct a signal predictor by combining nonlinear autoregressive exogenous (NARX) model and an advanced learning algorithm, Extreme Learning Machine (ELM). Then the faults are detected based on the residual between the signal output of the predictor and the sensor. Furthermore, the faults are identified by logical judgment based on the system fault performance. Several hardware-in-loop tests are implemented to verify the applicability and effectiveness of the proposed diagnosis method. Test results show that this method has a very fast speed to detect the faults within 1 ms and a high accuracy to classify different faults.
基于数据驱动的单相PWM整流器在线故障诊断方法
在电力电子牵引变压器中,单相PWM整流器的故障将导致系统不可挽回的退化。因此,本文提出了一种可行的数据驱动方法来在线诊断单相PWM整流器的电流传感器故障和绝缘栅双极晶体管(igbt)开路故障。该方法的原理是将非线性自回归外生模型(NARX)与先进的学习算法极限学习机(ELM)相结合,构建信号预测器。然后根据预测器输出的信号与传感器之间的残差进行故障检测。根据系统故障性能,通过逻辑判断识别故障。通过硬件在环测试,验证了所提诊断方法的适用性和有效性。实验结果表明,该方法具有较快的故障检测速度和较高的故障分类精度。
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