机械系统剩余使用寿命预测中深度学习的不确定性估计与利用

Jackson Cornelius, Blake Brockner, Seong Hyeon Hong, Yi Wang, K. Pant, J. Ball
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引用次数: 4

摘要

预测和健康管理领域的许多研究人员已经开始探索使用深度神经网络预测机械系统的剩余使用寿命(RUL)。这些模型在通用基准(如NASA C-MAPSS飞机发动机数据集)上持续重建了最先进的RUL预测性能。然而,他们并没有试图抓住其预测中固有的多种不确定性来源。本文提出了一种估计在深度神经网络模型中出现的认知和异方差任意不确定性的方法,这些模型是为RUL预测而训练的,并证明了量化它们对预测的总体影响在现实世界系统中是非常有价值的,在现实世界系统中,决策有时是在不确定的操作条件下做出的。首先,提出了一种新的深度神经网络架构,在NASA C-MAPSS FD001和FD003数据集上展示了具有竞争力的性能。然后,将该网络应用于RUL预测问题中的认知不确定性和异方差任意不确定性估计。最后,进行了一项研究,以观察增加RUL真值数据,即利用分段线性真值曲线代替实际真值数据,对系统中感知不确定性的影响。对C-MAPSS FD001数据集的案例研究将表明,利用实际的RUL真值数据可以产生更有意义的不确定性估计,并更深入地了解传感器数据与发动机故障前时间之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating and Leveraging Uncertainties in Deep Learning for Remaining Useful Life Prediction in Mechanical Systems
Many researchers in the prognostics and health management community have begun exploring the use of deep neural networks for predicting remaining useful life (RUL) of mechanical systems. These models have consistently reestablished the state-of-the-art in RUL prediction performance on common benchmarks, such as the NASA C-MAPSS Aircraft Engine dataset. However, they do not attempt to capture the multiple sources of uncertainty that are inherent in their predictions. This paper presents an approach for estimating both epistemic and heteroscedastic aleatoric uncertainties that emerge in deep neural network models that are trained for RUL prediction and demonstrates that quantifying their overall impact on predictions can be extremely valuable in real-world systems, where decisions are sometimes made during uncertain operating conditions. First, a novel deep neural network architecture is proposed that demonstrates competitive performance on the NASA C-MAPSS FD001 and FD003 datasets. Then, this network is adapted to estimate epistemic and heteroscedastic aleatoric uncertainties in the RUL prediction problem. Finally, a study is carried out to observe the effects that augmenting the RUL truth data, i.e. utilizing piecewise linear truth curves in place of the actual truth data, have on the perceived uncertainties in the system. Case studies on the C-MAPSS FD001 dataset will show that utilizing the actual RUL truth data can yield more meaningful uncertainty estimates and more insight into the relationship between sensor data and an engine's time-to-failure.
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