首页> 外文会议>International Conference on Advanced Computer Control;ICACC 2010 >Application of Wavelet Packets and GA-BP algorithm in Fault Diagnosis for Diesel Valve Gap Abnormal Fault
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Application of Wavelet Packets and GA-BP algorithm in Fault Diagnosis for Diesel Valve Gap Abnormal Fault

机译:小波包和GA-BP算法在柴油机气门间隙异常故障诊断中的应用

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Analysing vibration signal is an effective important method for diesel engine fault diagnosis, and its key techniques are feature extraction and pattern recognition. In this paper, wavelet packet decomposition algorithm as an effective method for fault feature extraction is used to decompose the vibration signals, and its percentage of energy band wavelet packet and wavelet packet energy spectrum entropy are regarded as diagnostic feature vectors. At the same time, in the process of pattern recognition, a mixedneural network training algorithm——GA-BP algorithm wasused to recognize the fault pattern in fault diagnosis of valve gap abnormal fault. This method can effectively and reliably be used in the fault diagnosis of valve gap abnormal fault by comparing the two algorithms and analyzing the results of real examples. This method can also effectively be used in other fields.
机译:分析振动信号是一种有效的柴油机故障诊断重要方法,其关键技术是特征提取和模式识别。本文将小波包分解算法作为一种有效的故障特征提取方法,对振动信号进行分解,并将其能带小波包的百分比和小波包的能谱熵作为诊断特征向量。同时,在模式识别过程中,采用混合神经网络训练算法——GA-BP算法识别气门间隙异常故障的故障模式。通过比较两种算法并分析实例结果,该方法可以有效,可靠地用于气门间隙异常故障的故障诊断。该方法也可以有效地用于其他领域。

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