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首页> 外文期刊>IEEE Transactions on Power Electronics >Accurate State of Charge Estimation With Model Mismatch for Li-Ion Batteries: A Joint Moving Horizon Estimation Approach
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Accurate State of Charge Estimation With Model Mismatch for Li-Ion Batteries: A Joint Moving Horizon Estimation Approach

机译:锂离子电池模型不匹配的准确充电状态估计:联合移动视野估计方法

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摘要

The accurate state of charge (SOC) estimation plays a significant role in charge/discharge control, balance control, and safe management of lithium-ion batteries (LIBs). However, due to the model mismatch issues, either from battery inconsistency or battery dynamic characteristics difference, the accuracy of the model-based SOC estimation method is usually unsatisfactory. To solve this problem, a joint moving horizon estimation (joint-MHE) approach that can simultaneously estimate the model parameter and state is proposed here. In this paper, the circuit-equivalent battery model is first constructed by parameterizing the circuit parameters as polynomial function of SOC. Then, by the sensitivity analysis, the update parameters are selected and added to the statespace model as additional states. Finally, the joint-MHE strategy is conducted for the simultaneous parameter and SOC estimation. To investigate the performance of the proposed method thoroughly, threemodel mismatch conditions are considered, including battery inconsistency, battery dynamic characteristics difference, and the combination of both. The results demonstrate that the joint-MHE approach is an effective way to solve the model mismatch problem. Moreover, compared to joint extended Kalman filtering, the proposed approach can offer a more reliable, robust, and accurate SOC estimation of LIBs under various model mismatch conditions.
机译:准确的充电状态(SOC)估计在锂离子电池(LIB)的充电/放电控制,平衡控制和安全管理中起着重要作用。然而,由于模型不匹配的问题,无论是由于电池不一致还是由于电池动态特性差异,基于模型的SOC估算方法的准确性通常都不令人满意。为了解决这个问题,本文提出了一种可以同时估计模型参数和状态的联合移动视界估计(joint-MHE)方法。在本文中,首先通过将电路参数参数化为SOC的多项式函数来构造等效电路电池模型。然后,通过敏感性分析,选择更新参数并将其作为附加状态添加到状态空间模型中。最后,针对参数和SOC的同时估计,采用联合MHE策略。为了彻底研究该方法的性能,考虑了三种模型失配条件,包括电池不一致,电池动态特性差异以及两者的组合。结果表明,联合MHE方法是解决模型不匹配问题的有效方法。此外,与联合扩展卡尔曼滤波相比,所提出的方法可以在各种模型失配条件下提供更可靠,鲁棒和准确的LIB SOC估计。

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