SOC Prediction for Lithium Battery Via LSTM-Attention-R Algorithm

Xueguang Li, Menchita F. Dumlao
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Abstract

New energy vehicles are developing rapidly in the world, China and Europe are vigorously promoting new energy vehicles. The State of Charge (SOC) is circumscribed as the remaining charge of the lithium battery (Li-ion), that indicates the driving range of a pure electric vehicle. Additionally, it is the basis for SOH and fault state prediction. Nevertheless, the SOC is incapable of measuring directly. In this paper, an LSTM-Attention-R network framework is proposed. The LSTM algorithm is accustomed to present the timing information and past state information of the lithium battery data. The Attention algorithm is used to extract the global information of features and solve the problem of long-term dependency. To ensure the diversity of feature extraction, the Attention algorithm in this paper uses multi-headed self-attentiveness. The CACLE dataset from the University of Maryland is used in this paper. Through the training of the model and the comparison, it is concluded that the LSTM-Attention-R algorithm networks proposed in this article can predict the value of SOC well. Meanwhile, this paper compares the LSTM-Attention-R algorithm with the LSTM algorithm, and also compares the LSTM-Attention-R algorithm with the Attention algorithm. Finally, it is concluded that the accomplishment of the network framework contrived is superior to the performance of these two algorithms alone. Finally, the algorithm has good engineering practice implications. The algorithm proposed provides a better research direction for future parameter prediction in the field of lithium batteries. It has a better theoretical significance.
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基于LSTM-Attention-R算法的锂电池SOC预测
新能源汽车在世界范围内发展迅速,中国和欧洲都在大力推广新能源汽车。充电状态(SOC)被限定为锂电池(Li-ion)的剩余电量,这表明了纯电动汽车的行驶里程。同时,它也是SOH和故障状态预测的基础。然而,SOC无法直接测量。本文提出了一种LSTM-Attention-R网络框架。LSTM算法用来表示锂电池数据的定时信息和过去状态信息。采用注意力算法提取特征的全局信息,解决特征的长期依赖问题。为了保证特征提取的多样性,本文的注意算法采用多头自注意。本文使用马里兰大学的CACLE数据集。通过对模型的训练和对比,表明本文提出的LSTM-Attention-R算法网络能够较好地预测SOC值。同时,本文将LSTM-Attention- r算法与LSTM算法进行了比较,并将LSTM-Attention- r算法与Attention算法进行了比较。最后得出的结论是,所设计的网络框架的实现优于单独使用这两种算法的性能。最后,该算法具有良好的工程实践意义。该算法为未来锂电池领域的参数预测提供了较好的研究方向。具有较好的理论意义。
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