首页> 外文会议>2009年中国控制与决策会议(2009 Chinese Control and Decision Conference)论文集 >Vibration Fault Diagnosis of Mine Ventilator Based on Intelligent Method
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Vibration Fault Diagnosis of Mine Ventilator Based on Intelligent Method

机译:基于智能方法的矿井通风机振动故障诊断

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Based on the analysis of the vibration fault features of mine ventilator, the paper established a fuzzy wavelet neural network model which can diagnose the faults of mine ventilator. The fuzzy wavelet neural network model unify fuzzy logic and BP neural network, using wavelet basis function as membership function. Furthermore, a hybrid learning algorithm based on self organized and supervised learning is also proposed. Through training the displacement factors, the dilation factors of wavelet basis function and the connection weight values of fuzzy neural network, the parameters and the structure of the network approximate to global optimization. The experiment results show that it not only raised the efficiency and accuracy of fault diagnosis, but also provide a valid approach to protect the safety of mine ventilator by using this intelligent method.
机译:在分析矿井通风机振动故障特征的基础上,建立了模糊小波神经网络模型,可以对矿井通风机的故障进行诊断。模糊小波神经网络模型以小波基函数为隶属函数,将模糊逻辑与BP神经网络相结合。此外,还提出了一种基于自组织监督学习的混合学习算法。通过训练位移因子,小波基函数的扩张因子和模糊神经网络的连接权重值,使网络的参数和结构近似于全局最优化。实验结果表明,该方法不仅提高了故障诊断的效率和准确性,而且为保护矿井通风机的安全提供了有效的途径。

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