基于递归神经过程的不确定性剩余使用寿命预测

Guozhen Gao, Z. Que, Zhengguo Xu
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引用次数: 5

摘要

近年来,基于深度学习的剩余使用寿命预测方法因其可扩展性和泛化能力而受到越来越多的关注。尽管基于深度学习的方法可以获得很好的点预测性能,但它们不容易估计出规则点预测中的不确定性。本文提出了一种基于深度学习的递归神经过程模型来解决预测不确定性问题。与原有的神经过程模型相比,该模型增加了一个循环层,从输入滑动窗口中提取序列信息。RUL预测问题可以看作是找到一个将滑动窗口输入映射到相应RUL的回归函数。通过得到回归函数上的分布,递归神经过程能够模拟RUL的概率分布。作为一个概率模型,采用随机变分推理和重参数化技巧来学习模型的参数。通过C-MAPSS涡扇发动机数据集对该方法进行了验证。
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Predicting Remaining Useful Life with Uncertainty Using Recurrent Neural Process
Recently deep learning based remaining useful life (RUL) prediction approaches have gained increasing attention due to their scalability and generalization ability. Although deep learning based approaches can obtain promising point prediction performance, it is not easy for them to estimate the uncertainty in RUL prediction. In this paper, a recurrent neural process model is proposed to address the prognostics uncertainty problem based on deep learning. Compared with the original neural process model, a recurrent layer is added to extract sequential information from input sliding windows. The RUL prediction problem can be considered as finding a regression function mapping the sliding window input to its corresponding RUL. By obtaining the distribution over the regression functions, the recurrent neural process is able to model the probability distribution of the RUL. As a probabilistic model, stochastic variational inference and reparameterization trick is applied to learn the parameters of the model. The proposed method is validated through the C-MAPSS turbofan engine dataset.
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