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Remaining useful life prognostics for the rolling bearing based on a hybrid data-driven method

机译:基于混合数据驱动方法的滚动轴承剩余使用的寿命预测

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摘要

Rolling bearing is the core part of rotating mechanical equipment, so developing an effective remaining useful life prognostics method and alarming the impending fault for rolling bearing are of necessity to guarantee the reliable operation of mechanical equipment and schedule maintenance. The relevance vector machine is one of the substantially used methods for remaining useful life prognostics of rolling bearing. However, the accuracy generated by relevance vector machine drops rapidly in the long-term prognostics. To remedy this existing shortcoming of relevance vector machine, a novel hybrid method combining grey model, complete ensemble empirical mode decomposition and relevance vector machine are put forward. In the hybrid prognostics framework, the grey model is applied to gain a “raw” prediction result based on a trained model and produce an original error sequence. Subsequently, a new smoother error sequence reconstructed by complete ensemble empirical mode decomposition method is used to train relevance vector machine model, by which the future prediction error applied to correct the raw prediction results of grey model is projected. Ultimately, the online learning technique is used to implement dynamic updating of the “old” hybrid model, so that the remaining useful life of rolling bearing throughout the run-to-failure data set could be accurately predicted. The experimental results demonstrate the satisfactory prognostics performance.
机译:滚动轴承是旋转机械设备的核心部分,因此开发了有效的剩余使用寿命预测方法,并报警滚动轴承的即将发生的故障是必要的,以保证机械设备的可靠运行和安排维护。相关矢量机是用于剩余滚动轴承使用寿命预测的基本上使用的方法之一。然而,相关矢量机产生的准确性在长期预测中迅速下降。为了解决这种现有的相关矢量机器缺点,提出了一种结合灰色模型的新型混合方法,完整集合经验模式分解和相关矢量机。在混合预后框架中,灰色模型应用于基于训练模型获得“原始”预测结果并产生原始错误序列。随后,通过完整的集合经验模式分解方法重建的新的更新误差序列用于训练相关的矢量机模型,通过该模型,施加校正灰色模型的原始预测结果的未来预测误差。最终,在线学习技术用于实现“旧”混合模型的动态更新,从而可以精确预测在整个碰到故障数据集中滚动轴承的剩余使用寿命。实验结果表明了令人满意的预后性能。

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