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Monitoring and diagnosis of roller bearing conditions using neural networks and soft computing

机译:使用神经网络和软计算监测和诊断滚动轴承的状况

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摘要

Roller Bearings have extended use throughout the industry and their proper operation is paramount in insuring quality products. Therefore, an on-line monitoring and diagnostic system is needed to detect faulty bearings. In this work, by applying the feature selection technique to the data obtained from vibration signals, six indices were selected. Artificial neural networks and soft computing were used for nonlinear pattern recognition. An attempt was made to distinguish between normal and defective bearings. Furthermore, classification of roller bearing conditions into six different categories was conducted for the diagnostic purpose. Back propagation neural networks (BPN's), counterpropagation neural networks (CPN's), and adaptive neuro-fuzzy inference systems (ANFIS) were used for on-line monitoring and diagnosis of roller bearing conditions. All of them were able to recognize normal bearings from defective bearings with 100% success rate. In classifying the defect types, BPN obtained a success rate of 20% to 100%; CPN obtained a success rate of 31.7% to 100% while ANFIS achieved a success rate of 5% to 48%. CPN have the best performance among the three intelligent techniques. In order to monitor roller bearing conditions, a 1 x 20 x 1 CPN should be used to distinguish normal bearings from defective bearings. Furthermore, a 6 x 24 x 1 CPN can be used to diagnose the roller bearing conditions into six categories. In this manner, monitoring and diagnosis of roller bearings can be performed successfully.
机译:滚动轴承已在整个行业中得到广泛使用,并且其正确操作对于确保优质产品至关重要。因此,需要一个在线监测和诊断系统来检测轴承故障。在这项工作中,通过将特征选择技术应用于从振动信号获得的数据,选择了六个指标。人工神经网络和软计算用于非线性模式识别。试图区分正常轴承和有缺陷轴承。此外,出于诊断目的,将滚动轴承的状况分为六类。反向传播神经网络(BPN),反向传播神经网络(CPN)和自适应神经模糊推理系统(ANFIS)用于滚动轴承状况的在线监测和诊断。他们所有人都能够以100%的成功率从有缺陷的轴承中识别出普通轴承。在对缺陷类型进行分类时,BPN获得的成功率为20%至100%; CPN的成功率为31.7%至100%,而ANFIS的成功率为5%至48%。 CPN在三种智能技术中表现最佳。为了监视滚柱轴承的状况,应使用1 x 20 x 1 CPN来区分普通轴承和有缺陷的轴承。此外,可以使用6 x 24 x 1 CPN将滚子轴承状况诊断为六类。以这种方式,可以成功地进行滚动轴承的监视和诊断。

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