基于最小二乘法的锂离子电池容量估计

Shivanshu Kumar, H. S. Bhattacharyya, A. B. Choudhury, C. K. Chanda
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引用次数: 0

摘要

锂离子电池是世界上最流行的电动汽车电池;它也存在容量衰落和功率衰落等缺点。锂离子电池的容量衰减受活性电极材料和活性锂的损耗影响,而功率衰减是由电池内阻升高引起的。在本文中,我们使用各种最小二乘方法来估计锂离子电池的容量,并通过基于教师学习的优化技术最小化平方和误差。为此,选择8个细胞,从中训练退化程度最高和最低的细胞来确定预测容量模型的参数,然后将剩余的细胞与训练的细胞进行测试,使用不同的最小二乘法来估计预测模型的容量。从结果来看,使用所有方法的最大MAPE约为1.5%。
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Capacity Estimation of Lithium-ion Battery with Least Squares Methods
Lithium-ion battery is the most popular battery in the world of electric vehicles; it does have some disadvantages, such as capacity fading and power fading. Capacity fade in a lithium-ion battery is affected by a loss of active electrode material and active lithium, whereas power fade is caused by rise in the battery's internal resistance. In this paper, we use various least square approaches to estimate a lithium-ion batteries capacity and also minimize the sum squared error though Teacher Learning-Based Optimization technique. For this, 8 cells are selected, out of which the most and least degraded cells being trained to determine the parameters of the predicted capacity model, and then the remaining cells being tested against the trained cells to estimate the capacity with that predicted model using different least square methods. From the result, the maximum MAPE has been found to be approximately 1.5 % using all approaches.
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