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Strategy for Fault Diagnosis on Train Plug Doors Using Audio Sensors

机译:使用音频传感器对火车车门进行故障诊断的策略

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摘要

As the only entry/exit for passengers getting on and off a train, the train plug door is of great importance to keep train operation safe and reliable. As signal processing technologies develop rapidly, taking the easy acquisition advantages of sound signals, a novel fault diagnosis method for train plug doors using multi-scale normalized permutation entropy (MNPE) and an improved particle swarm optimization based multi-class support vector machine (IPSO-MSVM) is proposed. Firstly, sound samples are collected using high-precision audio sensor. In the features extraction process, a hybrid method blending empirical mode decomposition (EMD), multi-scale permutation entropy (MNPE) with Fisher discrimination criterion is utilized. First, EMD is used to decompose each sound signal into several intrinsic mode functions (IMFs) and a residue for stationary processing. Then, MNPE features are extracted from the IMFs. To obtain the most significant features, the Fisher discrimination criterion is further applied. To address the time-consuming defects of traditional grid based method for selecting the optimal parameters of multi-class SVM, an improved PSO (IPSO) is proposed. The superiority of the IPSO-MSVM model and the hybrid feature extraction method was tested on the collected sound samples by comparing to commonly applied methods. Results indicate the identification accuracy of the proposed method is highest, which reaches 90.54%, demonstrating its feasibility.
机译:作为乘客上下火车的唯一进出通道,火车插板门对于确保火车运行的安全性和可靠性至关重要。随着信号处理技术的飞速发展,利用声音信号的轻松获取优势,一种使用多尺度归一化置换熵(MNPE)的新型火车厢门故障诊断方法以及一种基于粒子群优化的改进多类支持向量机(IPSO) -MSVM)。首先,使用高精度音频传感器收集声音样本。在特征提取过程中,采用了将经验模式分解(EMD),多尺度置换熵(MNPE)与Fisher判别准则相结合的混合方法。首先,EMD用于将每个声音信号分解为几个固有模式函数(IMF)和用于平稳处理的残差。然后,从IMF中提取MNPE功能。为了获得最重要的特征,进一步应用了Fisher判别标准。为了解决传统的基于网格的多类支持向量机最优参数选择方法的耗时缺陷,提出了一种改进的PSO(IPSO)。通过与常用方法进行比较,对收集的声音样本测试了IPSO-MSVM模型和混合特征提取方法的优越性。结果表明,该方法的识别准确率最高,达到90.54%,证明了该方法的可行性。

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