Life prediction of large lithium-ion battery packs with active and passive balancing

Ying Shi, K. Smith, R. Zane, Dyche Anderson
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引用次数: 11

Abstract

Lithium-ion battery packs take a major part of large-scale stationary energy storage systems. One challenge in reducing battery pack cost is to reduce pack size without compromising pack service performance and lifespan. Prognostic life model can be a powerful tool to handle the state of health (SOH) estimate and enable active life balancing strategy to reduce cell imbalance and extend pack life. This work proposed a life model using both empirical and physical-based approaches. The life model described the compounding effect of different degradations on the entire cell with an empirical model. Then its lower-level submodels considered the complex physical links between testing statistics (state of charge level, C-rate level, duty cycles, etc.) and the degradation reaction rates with respect to specific aging mechanisms. The hybrid approach made the life model generic, robust and stable regardless of battery chemistry and application usage. The model was validated with a custom pack with both passive and active balancing systems implemented, which created four different aging paths in the pack. The life model successfully captured the aging trajectories of all four paths. The life model prediction errors on capacity fade and resistance growth were within ±3% and ±5% of the experiment measurements.
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具有主动和被动平衡的大型锂离子电池组寿命预测
锂离子电池组是大型固定式储能系统的主要组成部分。降低电池组成本的一个挑战是在不影响电池组使用性能和寿命的情况下减小电池组尺寸。预后生命模型是处理健康状态(SOH)估计和实施积极的生命平衡策略以减少细胞不平衡和延长包寿命的有力工具。这项工作提出了一个使用经验和物理为基础的方法的生命模型。生命模型用经验模型描述了不同降解对整个细胞的复合效应。然后,其低层子模型考虑了测试统计量(电荷水平状态、c -率水平、占空比等)与降解反应速率之间的复杂物理联系,并考虑了具体的老化机制。混合方法使生命模型通用,稳健和稳定,无论电池化学和应用用途。该模型通过一个定制包进行了验证,该包采用了被动和主动平衡系统,在包中创建了四条不同的老化路径。这个生命模型成功地捕捉到了这四条路径的衰老轨迹。寿命模型对容量衰减和电阻增长的预测误差分别在实验测量值的±3%和±5%以内。
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