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Wavelet Entropy-Based Traction Inverter Open Switch Fault Diagnosis in High-Speed Railways

机译:基于小波熵的牵引力逆变器开路故障诊断

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In this paper, a diagnosis plan is proposed to settle the detection and isolation problem of open switch faults in high-speed railway traction system traction inverters. Five entropy forms are discussed and compared with the traditional fault detection methods, namely, discrete wavelet transform and discrete wavelet packet transform. The traditional fault detection methods cannot efficiently detect the open switch faults in traction inverters because of the low resolution or the sudden change of the current. The performances of Wavelet Packet Energy Shannon Entropy (WPESE), Wavelet Packet Energy Tsallis Entropy (WPETE) with different non-extensive parameters, Wavelet Packet Energy Shannon Entropy with a specific sub-band (WPESE 3,6 ), Empirical Mode Decomposition Shannon Entropy (EMDESE), and Empirical Mode Decomposition Tsallis Entropy (EMDETE) with non-extensive parameters in detecting the open switch fault are evaluated by the evaluation parameter. Comparison experiments are carried out to select the best entropy form for the traction inverter open switch fault detection. In addition, the DC component is adopted to isolate the failure Isolated Gate Bipolar Transistor (IGBT). The simulation experiments show that the proposed plan can diagnose single and simultaneous open switch faults correctly and timely.
机译:本文提出了一种诊断方案,以解决高速铁路牵引系统牵引逆变器断路故障的检测和隔离问题。讨论了五种熵形式,并将它们与传统的故障检测方法进行了比较,即离散小波变换和离散小波包变换。传统的故障检测方法由于分辨率低或电流突然变化,无法有效地检测牵引逆变器的开路开关故障。小波包能量香农熵(WPESE),具有不同非扩展参数的小波包能量Tsallis熵(WPETE),特定子带的小波包能量香农熵(WPESE 3,6),经验模态分解香农熵的性能(EMDESE)和经验模态分解Tsallis熵(EMDETE)在评估开路开关故障时具有非广泛参数,通过评估参数进行评估。进行比较实验以选择最佳的熵形式用于牵引逆变器开路开关故障检测。另外,采用直流分量隔离故障隔离栅双极晶体管(IGBT)。仿真实验表明,该方案能够正确,及时地诊断出单,同时开路故障。

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