Signal Pre-Selection for Monitoring and Prediction of Vehicle Powertrain Component Aging

IF 0.3 Q4 ENGINEERING, MULTIDISCIPLINARY
A. Sass, Enes Esatbeyoglu, T. Iwwerks
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引用次数: 1

Abstract

Predictive maintenance has become important for avoiding unplanned downtime of modern vehicles. With increasing functionality the exchanged data between Electronic Control Units (ECU) grows simultaneously rapidly. A large number of in-vehicle signals are provided for monitoring an aging process. Various components of a vehicle age due to their usage. This component aging is only visible in a certain number of in-vehicle signals. In this work, we present a signal selection method for in-vehicle signals in order to determine relevant signals to monitor and predict powertrain component aging of vehicles. Our application considers the aging of powertrain components with respect to clogging of structural components. We measure the component aging process in certain time intervals. Owing to this, unevenly spaced time series data is preprocessed to generate comparable in-vehicle data. First, we aggregate the data in certain intervals. Thus, the dynamic in-vehicle database is reduced which enables us to analyze the signals more efficiently. Secondly, we implement machine learning algorithms to generate a digital model of the measured aging process. With the help of Local Interpretable Model-Agnostic Explanations (LIME) the model gets interpretable. This allows us to extract the most relevant signals and to reduce the amount of processed data. Our results show that a certain number of in-vehicle signals are sufficient for predicting the aging process of the considered structural component. Consequently, our approach allows to reduce data transmission of in-vehicle signals with the goal of predictive maintenance.
汽车动力总成部件老化监测与预测的信号预选
预测性维护对于避免现代车辆的意外停机已经变得非常重要。随着电子控制单元(ECU)功能的不断增加,电子控制单元之间的数据交换也在快速增长。提供大量车载信号用于监测老化过程。车辆的各种部件因其使用而老化。这种元件老化只在一定数量的车载信号中可见。本文提出了一种车载信号的信号选择方法,以确定相应的信号来监测和预测车辆动力总成部件的老化。我们的应用程序考虑了相对于结构部件堵塞的动力总成部件的老化。我们以一定的时间间隔测量构件的老化过程。因此,对非均匀间隔时间序列数据进行预处理以生成可比较的车内数据。首先,我们以一定的间隔汇总数据。因此,减少了动态的车载数据库,使我们能够更有效地分析信号。其次,我们实现了机器学习算法来生成测量老化过程的数字模型。在局部可解释模型不可知论解释(LIME)的帮助下,模型具有可解释性。这使我们能够提取最相关的信号并减少处理的数据量。我们的研究结果表明,一定数量的车载信号足以预测所考虑的结构部件的老化过程。因此,我们的方法可以减少车载信号的数据传输,以实现预测性维护的目标。
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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来源期刊
Science & Technique
Science & Technique ENGINEERING, MULTIDISCIPLINARY-
自引率
50.00%
发文量
47
审稿时长
8 weeks
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