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Residual life predictions for ball bearings based on self-organizing map and back propagation neural network methods

机译:基于自组织映射和反向传播神经网络方法的滚珠轴承剩余寿命预测

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This paper deals with a new scheme for the prediction of a ball bearing's remaining useful life based on self-organizing map (SOM) and back propagation neural network methods. One of the key components needed for effective bearing life prediction is the set-up of an appropriate degradation indicator from a bearing's incipient defect stage to its final failure. This new method is different from the others that have been used in the past, in that it uses the minimum quantisation error (MQE) indicator derived from SOM, which is trained by six vibration features, including a new designed degradation index for performance degradation assessment. Then, using this indicator, back propagation neural networks focusing on the degradation periods can be trained. Thanks to weight application to failure times (WAFT) technology, a useful life prediction model for ball bearings has been developed successfully. Finally, a set of accelerated bearing run-to-failure experiments is carried out, with the experimental results showing that the new proposed methods are greatly superior to those, based on L10 bearing life prediction, currently being used.
机译:本文提出了一种基于自组织图(SOM)和反向传播神经网络方法的滚珠轴承剩余使用寿命的预测新方案。有效预测轴承寿命所需的关键组件之一是设置适当的性能指标,从轴承的初期缺陷阶段到最终失效。此新方法与过去使用的其他方法不同,因为它使用了从SOM派生的最小量化误差(MQE)指标,该指标由六个振动特征进行了训练,其中包括用于性能降级评估的新设计降级指标。然后,使用该指标,可以训练着眼于退化期的反向传播神经网络。由于将重量应用于故障时间(WAFT)技术,因此成功开发了用于滚珠轴承的有用的寿命预测模型。最后,进行了一组加速轴承失效测试,实验结果表明,基于目前使用的L10轴承寿命预测,新提出的方法大大优于那些新方法。

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