基于深度学习的灵活锂离子电池健康状态估计,从部分充电曲线中提取特征

IF 4.6 4区 化学 Q2 ELECTROCHEMISTRY Batteries Pub Date : 2024-05-16 DOI:10.3390/batteries10050164
Rucong Lai, Xiaoyu Li, Jie Wang
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引用次数: 0

摘要

健康状态是一种关键状态,表明锂离子电池在一定功率水平下的储能和再充电能力,电池管理系统应对此进行仔细监控。然而,电池的健康状态是不可测量的,目前通常是在整个充电数据的特定区域内进行估算,由于用户充电行为的不完整性和随机性,这种估算在实际应用中非常有限。在本文中,我们打算根据八块 0.74 Ah 电池的衰减数据,利用灵活的部分充电曲线和普通多层感知器来估计电池的健康状态。为了使估算更具适应性和灵活性,我们从部分充电曲线中提取了几个特征。对提取的特征与健康状态之间关系的分析表明,提取的特征在估算中非常有用。随着部分充电曲线长度的增加,提取的特征仍能很好地发挥作用,测试集的均方根误差低于 1.5%。在其他两类电池上的进一步验证表明,即使采样和工作条件不同,所提出的方法也能达到很高的精度。所提出的方法为准确估计电池的健康状况提供了一种简单易行的方法。
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Flexible Deep Learning-Based State of Health Estimation of Lithium-Ion Batteries with Features Extracted from Partial Charging Curves
The state of health is a crucial state that suggests the capacity of lithium-ion batteries to store and restitute energy at a certain power level, which should be carefully monitored in the battery management system. However, the state of health of batteries is unmeasurable and, currently, it is usually estimated within a specific area of the whole charging data, which is very limited in practical application because of the incomplete and random charging behaviors of users. In this paper, we intend to estimate the state of health of batteries with flexible partial charging curves and normal multi-layer perceptron based on the degradation data of eight 0.74 Ah batteries. To make the estimation more adaptive and flexible, we extract several features from partial charging curves. Analysis of the relationship between extracted features and the state of health shows that the extracted features are useful in estimation. As the length of the partial charging curve increases, the extracted features still function well, and the root mean square error of the test set is lower than 1.5%. Further validation on the other two types of batteries reveals that the proposed method achieves high accuracy even with different sampling and working conditions. The proposed method offers an easy-to-implement way to achieve an accurate estimation of a battery’s state of health.
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来源期刊
Batteries
Batteries Energy-Energy Engineering and Power Technology
CiteScore
4.00
自引率
15.00%
发文量
217
审稿时长
7 weeks
期刊最新文献
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