Sliding window-based real-time remaining useful life prediction for milling tool

Chen Tong, Qing Zhu, Yucheng Feng, Yaonan Wang
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Abstract

Traditional remaining useful life (RUL) prediction methods do not make full use of the time-series information of the sensor monitoring data, hence the prediction accuracy can not be satisfied. To deal with this issue, a real-time RUL prediction method of tool based on sliding windows is proposed in this paper. First, the time-frequency domain features are extracted from multi-channel signals collected by sensors. Considering the influence of the previous wear value data, the tool wear value data is extracted in the form of sliding windows and being put into the long short-term memory (LSTM) network together with the time-frequency domain features for model training. Finally, in the prediction stage, we similarly extract the tool wear value data using the previous predicted wear values instead of the real wear values. In this manner, the real-time RUL prediction of tools is achieved. IEEE PHM 2010 challenge data has been used to validate the effectiveness of the method. The main advantage of the method is that the time-series characteristic of the data is considered, hence the prediction accuracy is improved and real-time prediction is achieved.
基于滑动窗口的铣刀剩余使用寿命实时预测
传统的剩余使用寿命(RUL)预测方法没有充分利用传感器监测数据的时间序列信息,预测精度不能满足要求。针对这一问题,本文提出了一种基于滑动窗口的刀具RUL实时预测方法。首先,从传感器采集的多通道信号中提取时频域特征;考虑到先前磨损值数据的影响,以滑动窗口的形式提取刀具磨损值数据,并与时频域特征一起输入长短期记忆(LSTM)网络进行模型训练。最后,在预测阶段,我们同样使用先前预测的磨损值而不是实际磨损值提取刀具磨损值数据。通过这种方式,实现了工具RUL的实时预测。利用IEEE PHM 2010挑战数据验证了该方法的有效性。该方法的主要优点是考虑了数据的时间序列特性,提高了预测精度,实现了实时预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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