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An Empirical Investigation on a Multiple Filters-Based Approach for Remaining Useful Life Prediction

机译:一种基于多滤器的剩余寿命预测方法的实证研究

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摘要

Feature construction is critical in data-driven remaining useful life (RUL) prediction of machinery systems, and most previous studies have attempted to find a best single-filter method. However, there is no best single filter that is appropriate for all machinery systems. In this work, we devise a straightforward but efficient approach for RUL prediction by combining multiple filters and then reducing the dimension through principal component analysis. We apply multilayer perceptron and random forest methods to learn the underlying model. We compare our approach with traditional single-filtering approaches using two benchmark datasets. The former approach is significantly better than the latter in terms of a scoring function with a penalty for late prediction. In particular, we note that selecting a best single filter over the training set is not efficient because of overfitting. Taken together, we validate that our multiple filters-based approach can be a robust solution for RUL prediction of various machinery systems.
机译:特征结构对于数据驱动的剩余使用寿命(RUL)预测是机械系统的预测,并且大多数先前的研究都试图找到最好的单滤波方法。但是,没有适合所有机械系统的最佳单层过滤器。在这项工作中,通过组合多个滤波器,通过主成分分析来降低尺寸来设计直接但有效的rul预测方法。我们应用多层的感知和随机森林方法来学习潜在的模型。我们使用两个基准数据集比较了传统的单滤波方法的方法。前一种方法明显优于后者在评分函数方面具有惩罚的惩罚。特别是,我们注意到由于过度装备而不是训练集中的最佳单滤波器是不高效的。我们一起验证了我们的多个基于过滤器的方法可以是各种机器系统的RUL预测的强大解决方案。

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