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A Study on Spiral Bevel Gear Fault Detection Using Artificial Neural Networks and Wavelet Transform

机译:使用人工神经网络和小波变换研究螺旋锥齿轮故障检测

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Based on normal and defective gears of spiral bevel gear pair test, a study is represented to develop the performance of gear fault detection with artificial neural networks and wavelet transform. In order to research the relevant studies of gear failures, a gear fault test rig is designed and constructed, with which vibration test are processed for collecting the signals of a gearbox from this rig. The noise is removed from the original time-domain vibration signals by application of wavelet analysis threshold technique. The extracted energy features from those preprocessed signals are implemented by the wavelet transform, which are used as inputs to the artificial neural networks for two-pattern (normal or fault) recognition. The results show that the represented recognition accuracy of the ANN and WT method for gear fault diagnosis is 100% that is much higher compared with the results of application of ANN separately.
机译:基于螺旋锥齿轮对试验的正常和有缺陷的齿轮,代表了一种研究,以利用人工神经网络和小波变换来发展齿轮故障检测的性能。为了研究齿轮故障的相关研究,设计和构造了齿轮故障试验台,处理振动测试以收集来自该钻机的齿轮箱的信号。通过应用小波分析阈值技术,从原始时域振动信号中除去噪声。来自那些预处理信号的提取的能量特征由小波变换实现,该小波变换被用作两种模式(正常或故障)识别的人工神经网络的输入。结果表明,与齿轮故障诊断的ANN和WT方法的代表识别准确度为100%,与分别的ANN施加结果相比要高得多。

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