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Online State-of-Health Estimation for Li-Ion Battery Using Partial Charging Segment Based on Support Vector Machine

机译:基于支持向量机的部分充电段锂离子电池在线健康状态估计

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摘要

The online estimation of battery state-of-health (SOH) is an ever significant issue for the intelligent energy management of the autonomous electric vehicles. Machine-learning based approaches are promising for the online SOH estimation. This paper proposes a machine-learning based algorithm for the online SOH estimation of Li-ion battery. A predictive diagnosis model used in the algorithm is established based on support vector machine (SVM). The support vectors, which reflects the intrinsic characteristics of the Li-ion battery, are determined from the charging data of fresh cells. Furthermore, the coefficients of the SVMs for cells at different SOH are identified once the support vectors are determined. The algorithm functions by comparing partial charging curves with the stored SVMs. Similarity factor is defined after comparison to quantify the SOH of the data under evaluation. The operation of the algorithm only requires partial charging curves, e.g., 15 min charging curves, making fast on-board diagnosis of battery SOH into reality. The partial charging curves can be intercepted from a wide range of voltage section, thereby relieving the pain that there is little chance that the driver charges the battery pack from a predefined state-of-charge. Train, validation, and test are conducted for two commercial Li-ion batteries with Li(NiCoMn)(1/3) O-2 cathode and graphite anode, indicating that the algorithm can estimate the battery SOH with less than 2% error for 80% of all the cases, and less than 3% error for 95% of all the cases.
机译:电池健康状态(SOH)的在线估计对于自动驾驶电动汽车的智能能源管理一直是一个重大问题。基于机器学习的方法有望用于在线SOH估算。提出了一种基于机器学习的锂离子电池在线SOH估计算法。基于支持向量机(SVM)建立算法中的预测诊断模型。根据新鲜电池的充电数据确定反映锂离子电池固有特性的支持向量。此外,一旦确定了支持向量,就可以确定不同SOH处的细胞的SVM系数。该算法通过将部分充电曲线与存储的SVM进行比较来发挥作用。比较后定义相似因子以量化评估数据的SOH。该算法的操作仅需要部分充电曲线,例如15分钟充电曲线,从而使车载SOH的快速车载诊断成为现实。可以从很宽的电压范围内截取部分充电曲线,从而减轻了驾驶员几乎没有机会从预定义的充电状态为电池组充电的痛苦。对两个带有Li(NiCoMn)(1/3)O-2阴极和石墨阳极的商用锂离子电池进行了培训,验证和测试,表明该算法可估计80电池的SOH误差小于2% %的案例,对于95%的案例,误差小于3%。

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