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Open-circuit fault diagnosis of traction inverter based on compressed sensing theory

机译:基于压缩传感理论的牵引逆变器开放式故障诊断

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摘要

This study proposes a new method of fault diagnosis based on the least squares support vector machine with gradient information (G-LS-SVM) to solve the insulated-gate bipolar transistor(IGBT) open-circuit failure problem of the traction inverter in a catenary power supply system. First, a simulation model based on traction inverter topology is built, and various voltage fault signal waveforms are simulated based on the IGBT inverter open-circuit fault classification. Second, compressive sensing theory is used to sparsely represent the voltage fault signal and make it a fault signal. The new method has a high degree of sparseness and builds an overcomplete dictionary model containing the feature vectors of voltage fault signals based on a double sparse dictionary model to match the sparse signal characteristics. Finally, the space vector transform is used to represent the three-phase voltage scalar in the traction inverter as a composite quantity to reduce the redundancy of the fault signals and data-processing capabilities. A G-LS-SVM fault diagnosis model is then built to diagnose and identify the voltage fault signal feature vector in an overcomplete dictionary. The simulation results show that the accuracy of this method for various types of IGBT tube fault diagnosis is over 98.92%. Moreover, the G-LS-SVM model is robust and not affected by Gaussian white noise.
机译:本研究提出了一种基于基于具有梯度信息(G-LS-SVM)的最小二乘支持向量机的故障诊断方法,以解决关联牵引逆变器的绝缘栅双极晶体管(IGBT)开路故障问题电源系统。首先,构建了基于牵引逆变器拓扑结构的仿真模型,基于IGBT逆变器开路故障分类模拟了各种电压故障信号波形。其次,压缩传感理论用于稀疏地代表电压故障信号并使其成为故障信号。新方法具有高度的稀疏度,并构建超便于普遍的字典模型,其包含基于双稀痕字典模型的电压故障信号的特征向量,以匹配稀疏信号特性。最后,空间矢量变换用于表示牵引逆变器中的三相电压标量作为复合量,以减少故障信号和数据处理能力的冗余。然后构建G-LS-SVM故障诊断模型以诊断和识别过度符合符合字典中的电压故障信号特征向量。仿真结果表明,这种对各类IGBT管故障诊断的这种方法的准确性超过98.92%。此外,G-LS-SVM模型是坚固的,不受高斯白噪声的影响。

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