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Fault diagnosis for the motor drive system of urban transit based on improved Hidden Markov Model

机译:基于改进隐马尔可夫模型的城市轨道交通电机驱动系统故障诊断

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摘要

Fault diagnosis for the motor drive system of urban rail transit could reduce the hidden danger and avoid the disaster events as far as possible. In this paper, an improved Hidden Markov Model (HMM) algorithm is proposed for fault diagnosis of motors equipment for urban rail transit. In this approach, the initial value for observation matrix B in HMM is selected based on the predictive neural network and intuitionistic fuzzy sets. Firstly, by predictive neural network the observation probability matrix B is described qualitatively based on its mathematical explanation. Then, the quartering approach is introduced to define the rules between non-membership degree and observation probability matrix B, which obtains the matrix B quantitatively. Next, the selection algorithm for matrix B is given. Finally, the experiments about the motor drive system fault diagnosis of the urban rail transit are made to prove the feasibility for the proposed algorithm.
机译:对城市轨道交通电机驱动系统进行故障诊断可以减少隐患,并尽可能避免灾害事件的发生。提出了一种改进的隐马尔可夫模型(HMM)算法,用于城市轨道交通电机设备的故障诊断。在这种方法中,基于预测神经网络和直觉模糊集选择HMM中观察矩阵B的初始值。首先,通过预测神经网络,基于其数学解释,对观测概率矩阵B进行定性描述。然后,采用四分法对非隶属度和观测概率矩阵B之间的规则进行定义,从而定量获得矩阵B。接下来,给出矩阵B的选择算法。最后,通过对城市轨道交通电机驱动系统故障诊断的实验,证明了该算法的可行性。

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