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Attention-based BILSTM for the degradation trend prediction of lithium battery

机译:基于注意力的BILSTM锂电池退化趋势预测

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摘要

There is an irreversibility in the decline of Li-ion batteries, and the performance of individual cells in the battery pack will gradually decline as the number of times the on-board Li-ion battery is charged and discharged increases This situation can significantly affect the daily use of electric vehicles, for example by shortening the driving range, and in addition, the deterioration of the battery performance increases the probability of electric vehicle breakdowns. Very little work has been done on the prediction of lithium battery performance degradation in long-mileage states, accurate prediction of future battery performance degradation can significantly reduce the probability of EV failure, making battery performance prediction very important. In this paper, we propose a BILSTM network based on an attention mechanism and utilize grey relation analysis and empirical modal decomposition in the input link of the network to address the shortcomings exposed by deep learning in the work on temporal prediction. The adopted approach can effectively address the impact of data noise and redundant features on the prediction work that occurs in deep learning. According to the experimental results, the prediction performance of the model proposed in this paper is found to be higher than other networks in both types of data sets (c) 2023 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
机译:锂离子电池的衰落存在不可逆性,电池组中单个电芯的性能会随着车载锂离子电池充放电次数的增加而逐渐下降,这种情况会显着影响电动汽车的日常使用,例如缩短续航里程,此外, 电池性能的恶化增加了电动汽车故障的可能性。在锂电池在长里程状态下的性能下降预测方面所做的工作很少,准确预测未来电池性能下降可以显著降低电动汽车故障的概率,使得电池性能预测变得非常重要。本文提出了一种基于注意力机制的BILSTM网络,并利用灰色关系分析和网络输入链路中的经验模态分解,解决了深度学习在时间预测工作中暴露的不足。所采用的方法可以有效地解决数据噪声和冗余特征对深度学习中预测工作的影响。根据实验结果,发现本文提出的模型在两种类型的数据集中都高于其他网络 (c) 2023 作者.由以下开发商制作:Elsevier Ltd.这是一篇在 CC BY-NC-ND 许可 (http://creativecommons.org/licenses/by-nc-nd/4.0/)。

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