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Fault Diagnosis Method to Internal-combustion Engine Based on Integration of Scale-wavelet Power Spectrum, Rough Set and Neural Network

机译:基于尺度小波功率谱,粗糙集和神经网络集成的内燃机故障诊断方法

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In order to diagnose the faults of the valve and the piston-connecting rod of internal-combustion engine (ICE), the vibration signals under normal and abnormal models were measured by experiments. Through continuous wavelet transform (CWT), the scale-wavelet power spectrum (SWPS) of signals was obtained. The wavelet power (WP) distribution on different scales of each model is observed to be similar and mainly concentrated in particular scope of 132. By analyzing the diversity of SWPS distribution, the WP that is most sensitive to the characteristic of each model were extracted by rough set (RS) theory as feature and taken as input to train the back-propagation neural network (BPNN). By the trained BPNN to diagnose the fault signals under detection, the correctness rate is 100%. The fault diagnosis method based on the integration of the SPWS, RS and neural network demonstrates to be efficient and feasible. It has preferable engineering applicability and referenced value to diagnosis for complex machines.
机译:为了诊断内燃机的气门和活塞连杆的故障,通过实验测量了正常和异常模型下的振动信号。通过连续小波变换(CWT),获得了信号的尺度小波功率谱(SWPS)。观察到每个模型在不同尺度上的小波功率(WP)分布相似,并且主要集中在132的特定范围内。通过分析SWPS分布的多样性,可以通过以下方法提取对每个模型的特性最敏感的WP:粗糙集(RS)理论作为特征,并作为输入来训练反向传播神经网络(BPNN)。通过训练有素的BPNN诊断检测到的故障信号,正确率为100%。基于SPWS,RS和神经网络的集成的故障诊断方法被证明是有效和可行的。具有较好的工程适用性,对复杂机器的诊断具有参考价值。

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