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Fault diagnosis for jointless track circuit based on intrinsic mode function energy moment and optimized LS-SVM

机译:基于内在函数能量矩和优化LS-SVM的无接缝轨道电路故障诊断

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The track circuit electrical insulated joint faults will lead to the false acceptance of control information for trains and it will affect the safe operation of trains. In this paper the locomotive signal induced voltage model is established based on uniform transmission line theory and the amplitude envelopes of the induced voltage when the electrical insulated joint has malfunctioned are simulated. The fault features extraction is achieved through empirical mode decomposition (EMD) method because of its adaptive advantage. The induced voltage amplitude envelope signals are decomposed into several intrinsic mode functions (IMFs) and the IMF energy moments are used as fault characteristics. The least squares support vector machines (LS-SVMs) are built to realize the multi-class classification. Moreover, the optimal parameters of LS-SVM model are obtained by using the improved PSO algorithm. The experiment shows that the fault diagnosis method for track circuit proposed in this paper is effective and the accuracy is higher than the conventional track circuit fault diagnosis approaches.
机译:轨道电路电气绝缘接头故障将导致错误接受列车的控制信息,并影响列车的安全运行。本文基于均匀传输线理论建立了机车信号感应电压模型,并对电绝缘接头发生故障时的感应电压幅度包络进行了仿真。由于具有自适应优势,因此可以通过经验模式分解(EMD)方法实现故障特征的提取。感应的电压幅度包络信号被分解为几个固有模式函数(IMF),并且将IMF能量矩用作故障特征。建立最小二乘支持向量机(LS-SVM)以实现多类分类。此外,使用改进的PSO算法获得了LS-SVM模型的最优参数。实验表明,本文提出的轨道电路故障诊断方法是有效的,其准确度要高于传统的轨道电路故障诊断方法。

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