过度拟合
颗粒过滤器
循环神经网络
计算机科学
电池(电)
人工神经网络
概率逻辑
辍学(神经网络)
人工智能
数据建模
锂离子电池
机器学习
可靠性工程
深度学习
期限(时间)
卡尔曼滤波器
工程类
物理
功率(物理)
数据库
量子力学
作者
Yongzhi Zhang,Rui Xiong,Hongwen He,Michael Pecht
出处
期刊:IEEE Transactions on Vehicular Technology
[Institute of Electrical and Electronics Engineers]
日期:2018-02-12
卷期号:67 (7): 5695-5705
被引量:1150
标识
DOI:10.1109/tvt.2018.2805189
摘要
Remaining useful life (RUL) prediction of lithium-ion batteries can assess the battery reliability to determine the advent of failure and mitigate battery risk. The existing RUL prediction techniques for lithium-ion batteries are inefficient for learning the long-term dependencies among the capacity degradations. This paper investigates deep-learning-enabled battery RUL prediction. The long short-term memory (LSTM) recurrent neural network (RNN) is employed to learn the long-term dependencies among the degraded capacities of lithium-ion batteries. The LSTM RNN is adaptively optimized using the resilient mean square back-propagation method, and a dropout technique is used to address the overfitting problem. The developed LSTM RNN is able to capture the underlying long-term dependencies among the degraded capacities and construct an explicitly capacity-oriented RUL predictor, whose long-term learning performance is contrasted to the support vector machine model, the particle filter model, and the simple RNN model. Monte Carlo simulation is combined to generate a probabilistic RUL prediction. Experimental data from multiple lithium-ion cells at two different temperatures is deployed for model construction, verification, and comparison. The developed method is able to predict the battery's RUL independent of offline training data, and when some offline data is available, the RUL can be predicted earlier than in the traditional methods.
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