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Self-supervised Multi-stage Estimation of Remaining Useful Life for Electric Drive Units

机译:电力驱动单元剩余使用寿命的自我监督多阶段估计

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The use of pedelecs as a mobility solution has increased considerably in recent years. One of their main components, the drive unit, consists of several mechanical elements such as bearings and gears, which deteriorate over time and, thus, increasing the probability of a major failure. This work introduces a data-based approach for monitoring the drive unit’s condition and forecasting failures, in order to ensure the reliability of the system. A trustworthy prediction of anomalies requires a vast dataset to train and test the selected algorithms. To this end, we make use of a database consisting of data collected for the past couple of years during endurance tests of almost one hundred drive units. The collected database allow us to test machine learning approaches under more realistic prognosis applications in comparison to existing published works, which brings diverse challenges such as unlabeled and unbalaced data. The focus of the present approach is the data preprocessing through different stages, such as data labeling and undersampling, to reduce the negative impact of the problematics that involve this database. Afterwards, a Gaussian process for regression is trained with these preprocessed data to predict the remaining useful life of the drive unit. The experimental study shows that by performing these preprocessing stages, an accurate estimation of the time to failure of the drive unit can be achieved.
机译:近年来,将脚踏车作为一种移动解决方案的使用已大大增加。驱动单元是它们的主要组件之一,它由多个机械元件(例如轴承和齿轮)组成,这些机械元件会随着时间的流逝而变差,因此增加了发生重大故障的可能性。这项工作引入了一种基于数据的方法来监视驱动器单元的状态并预测故障,以确保系统的可靠性。对异常情况的可靠预测需要庞大的数据集来训练和测试所选算法。为此,我们利用了一个数据库,该数据库由过去几年在将近一百个驱动器单元的耐久性测试中收集的数据组成。与现有的已发表著作相比,收集的数据库使我们能够在更实际的预测应用程序下测试机器学习方法,这带来了诸如未标记和不平衡的数据之类的各种挑战。本方法的重点是通过不同阶段进行数据预处理,例如数据标记和欠采样,以减少涉及该数据库的问题的负面影响。然后,使用这些预处理数据训练回归的高斯过程,以预测驱动单元的剩余使用寿命。实验研究表明,通过执行这些预处理阶段,可以准确估计驱动单元的故障时间。

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