基于神经网络的超前相牵引供电系统开路故障诊断

Xiaoqiong He, Haijun Ren, Pengcheng Han, Yang Chen, Zeliang Shu, Xiaoqiong He
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引用次数: 5

摘要

超前相牵引供电系统中使用了大量的电源开关,电源开关的断路故障严重影响了供电系统的可靠性。由于电源开关的多样性及其非线性特性,建立系统的数学模型来诊断开路故障是很困难的。提出了一种基于BP神经网络的故障诊断方法。首先,分析了级联系统发生开路故障时输出电平变化的机理;然后,根据调制策略,分析了当模块内或模块间发生开路故障时,输出电压谐波的变化规律;提取所有故障的特征量作为训练样本,利用训练好的三层神经网络结构,对系统的开路故障进行实时诊断。仿真结果表明,神经网络故障诊断方法能够准确、可靠地诊断出电源开关在0范围内的断路故障。在不增加额外传感器的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open Circuit Fault Diagnosis of Advanced Cophase Traction Power Supply System Based on Neural Network
Lots of power switch are used in advanced cophase traction power supply system, the open fault of power switch are bad for the reliability of the power supply system. Due to the variety of power switch and their non-linear characteristics, it is difficult to establish a mathematical model of the system to diagnose the open faults. This paper presents a fault diagnosis method based on Back propagation (BP) neural network. Firstly, the mechanism that the output level of the cascaded system will change when an open circuit fault occurs is analyzed. Then, According to the modulation strategy, the variation law of the harmonic of output voltage is analyzed, when the open-circuit fault occurs within the module or between modules. The feature quantities of all faults is extracted as training samples, with the trained three-layer neural network structure, the open circuit fault of the system can be diagnosed in real time. The simulation result shows that neural network fault diagnosis method can accurately and reliably diagnose the open fault of the power switch within 0. 02s without adding additional sensor.
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