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Short-Term Cross-Sectional Time-Series Wear Prediction by Deep Learning Approaches

机译:基于深度学习方法的短期横截面时间序列磨损预测

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摘要

Wear is one of the major causes that affect the performance and reliability of tribo-systems. To mitigate its adverse effects, it is necessary to monitor the wear progress so that preventive maintenance can be timely scheduled. An online visual ferrograph (OLVF) apparatus is used to obtain online measurements of wear particle quantities, and monitor the wearing of a four-ball tribometer under different lubrication conditions, and several popular deep learning algorithms are evaluated for their effectiveness in providing maintenance decisions. The obtained data are converted to the cross-sectional time series (CSTS), for its effectiveness in representing the variation trends of multiple variables, and the data are used as the input to the deep learning algorithms. Experimental results indicate that the CSTS together with the bidirectional long short-term memory (Bi-LSTM) architecture outperforms other tested settings in terms of the mean-squared error (MSE). Increased prediction accuracy is observed for tribological pairs with a stochastically changing coefficient of friction.
机译:磨损是影响摩擦优化系统性能和可靠性的主要原因之一。为了减轻其不利影响,有必要监测磨损进展,以便及时安排预防性维护。使用在线视觉铁谱仪(OLVF)装置在线测量磨损颗粒量,监测四球摩擦计在不同润滑条件下的磨损情况,并评估了几种流行的深度学习算法在提供维护决策方面的有效性。将获得的数据转换为横截面时间序列(CSTS),以有效地表示多个变量的变化趋势,并将数据用作深度学习算法的输入。实验结果表明,CSTS与双向长短期记忆(Bi-LSTM)架构在均方误差(MSE)方面优于其他测试设置。观察到摩擦系数随机变化的摩擦学对的预测精度提高。

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