虚拟健康指数轴承的无监督剩余使用寿命预测

Gilbert Cheng, Sean Lau, Nicholas Tam, Zekai Wu, Adah Hu, Y. Law, E. Lai, Ming Ge
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引用次数: 0

摘要

科学界和工业界对实现轴承的预测健康管理(PHM)特别感兴趣,因为它们是发电机和涡轮机的关键部件。大多数用于预测剩余使用寿命(RUL)的最先进的方法需要大量的运行到故障数据进行训练。虽然这些方法提供了准确的预测,但由于需要大量的数据,对于小规模的下游行业公司来说,使用障碍特别高。本文的目标是展示一种新的无监督方法来解决这个问题。该算法利用卷积神经网络(CNN)编解码器来推断代表退化模式的虚拟健康指数(VHI)。此外,这些指标的阈值仅由寿命终止(EOL)数据确定,从而无需进行运行到失败的实验。然后通过VHI的推断得到RUL。该方法在各种基准数据集上进行了测试,特别是XJTU-SY轴承数据集,提供了有希望的预测结果,减少了RUL算法的使用障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Remaining Useful Life Prediction for Bearings with Virtual Health Index
A particular interest in achieving Prognostics Health Management (PHM) for bearings has been developed in the scientific community and the industry, as they are critical components in generators and turbines. Majority of state-of-the-art methods used in prediction of Remaining Useful Life (RUL) require large amounts of run-to-failure data for training. While these methods offer accurate prediction, the usage barrier is particularly high to small-scale, downstream sector companies due to the significant amount of data needed. The goal of this paper is to demonstrate a novel unsupervised method to address this problem. The algorithm takes advantage of Convolution Neural Network (CNN) encoder-decoder to infer Virtual Health Indices (VHI) which are representative of the degradation pattern. Additionally, thresholds for these indices are determined with only End-of-Life (EOL) data, removing the need for run-to-failure experiments. The RUL is then obtained through the inference of the VHI. The suggested method is tested on various benchmark datasets, particularly the XJTU-SY bearing dataset, offering promising prediction results to reduce the barrier of usage for RUL algorithms.
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