基于长短期记忆神经网络维纳过程的剩余使用寿命预测模型

A long short-term memory neural network based Wiener process model for remaining useful life prediction

Reliability Engineering and System Safety · 2022
被引 108 · 同刊同年前 7%
ABS 3

中文导读

提出一种自适应学习退化趋势的维纳过程模型,用LSTM神经网络替代传统趋势函数,结合迁移学习和最大似然估计,在电池数据集上优于现有模型。

Abstract

An unsuitable type of degradation trend function in the Wiener process-based degradation model will negatively influence its performance when calculating remaining useful life (RUL) predictions. To solve this problem, we propose a Wiener process-based degradation model that can adaptively learn the degradation trend in different degradation data, which avoids the selection of degradation trend function. First, based on the degradation trends extracted by empirical mode decomposition, a long short-term memory (LSTM) neural network is trained and used as the degradation trend function of a Wiener process-based degradation model. Then, transfer learning is used to update the parameters of the LSTM neural network online. Concurrently, the diffusion coefficient of the Wiener process-based degradation model is obtained via maximum likelihood estimation. Finally, using the concept of first hitting time, the analytical formulation to the probability density function of RUL can be derived in a closed form. Two numerical examples are presented to demonstrate the implementation and the achieved parameter estimation accuracy of the proposed model. In addition, a real battery dataset is used to demonstrate the superior performance of the proposed model against previous Wiener process-based degradation models in RUL prediction.

剩余使用寿命预测维纳过程长短期记忆神经网络退化建模迁移学习