估算锂离子电池SoH的新方法

Palash Jain, Sudipto Saha, V. Sankaranarayanan
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引用次数: 3

摘要

健康状态(SoH)评估是锂离子电池安全可靠运行的保障,是电池管理系统的重要功能之一。通过研究电池在整个工作寿命期间(高达60%的SoH)的充电数据集,建立SoH与Health参数之间的回归模型来估算SoH。健康参数计算为两个选定电压范围之间的充电时间,而不是取整个电压范围。根据回归模型的拟合优度选择SoH预测的电压范围。训练数据集由健康参数组成,以SoH的定期间隔进行评估。用广泛的测试数据对回归线进行了测试,发现其准确度在99%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel method to Estimate SoH of Lithium-Ion Batteries
State of Health (SoH) estimation is one of the most important functions of the Battery Management System as it ensures safe and reliable operation of Lithium-Ion battery. SoH estimation is done by developing a regression model between SoH and Health parameter, by studying the charging dataset of the battery throughout it’s working life (upto 60 % SoH). The health parameter is calculated as the charging time between two selected voltage ranges instead of taking the entire voltage range. The selection of the voltage range for SoH prediction is done based on the goodness of fit of the regression model. The training dataset consists of health parameter evaluated at regular intervals of SoH. The regression line is tested with a wide range of test data and the accuracy is found to be over 99%.
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