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Research on Predicting Remaining Useful Life of Equipment Based on Health Index

机译:基于健康指标的设备剩余寿命预测研究

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Intelligent maintenance strategies based on effective Remaining Useful Life (RUL) prediction can significantly reduce the waste of maintenance resources. In recent years, RUL prediction of equipment has been a hot topic and a huge challenge for many experts. In this paper, a prediction method of RUL for equipment based on health index is proposed. Firstly, the health factors of the equipment were obtained through feature screening and Principal Component Analysis (PCA) dimension reduction, and the health status of the equipment was evaluated. Then, based on the input data and labels constructed by Health Index (HI), the prediction model is obtained through Long Short Time Memory (LSTM) network training. The vibration signals from accelerated degradation tests of rolling bearings are used to verify the proposed method. Compared with the existing literature, the proposed method is proved to be effective in predicting RUL of equipment.
机译:基于有效剩余使用寿命(RUL)预测的智能维护策略可以显着降低维护资源的浪费。 近年来,RUL的设备预测是许多专家的热门话题和巨大挑战。 本文提出了一种基于健康指标的RUL预测方法。 首先,通过特征筛选和主要成分分析(PCA)尺寸减少获得设备的健康因素,并评估设备的健康状况。 然后,基于由健康索引(HI)构建的输入数据和标签,通过长短的短时间内存储器(LSTM)网络训练获得预测模型。 来自加速滚动轴承的降解测试的振动信号用于验证所提出的方法。 与现有文献相比,已证明该方法有效地预测设备rul。

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