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首页> 外文期刊>IEEE transactions on control systems technology: A publication of the IEEE Control Systems Society >Online Capacity Estimation for Lithium-Ion Battery Cells via an Electrochemical Model-Based Adaptive Interconnected Observer
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Online Capacity Estimation for Lithium-Ion Battery Cells via an Electrochemical Model-Based Adaptive Interconnected Observer

机译:基于电化学模型的自适应互联观测器锂离子电池电芯容量在线估算

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摘要

Battery aging is a natural process that contributes to capacity and power fade, resulting in a gradual performance degradation over time and usage. State-of-charge (SOC) and state-of-health (SOH) monitoring of an aging battery poses a challenging task to the battery management system (BMS) due to the lack of direct measurements. Estimation algorithms based on an electrochemical model that considers the impact of aging on physical battery parameters can provide accurate information on lithium concentration and cell capacity over a battery’s usable lifespan. A temperature-dependent electrochemical model, the enhanced single particle model (ESPM), forms the basis for the synthesis of an adaptive interconnected observer that exploits the relationship between capacity and power fade, due to the growth of solid electrolyte interphase layer (SEI), to enable combined estimation of states (lithium concentration in both electrodes and cell capacity) and aging-sensitive transport parameters (anode diffusion coefficient and SEI layer ionic conductivity). The practical stability conditions for the adaptive observer are derived using Lyapunov’s theory. Validation results against experimental data show a bounded capacity estimation error within 2% of its true value. Furthermore, the effectiveness of capacity estimation is tested for two cells at different stages of aging. Robustness of capacity estimates under measurement noise and sensor bias is studied.
机译:电池老化是一个自然过程,会导致容量和功率衰减,导致性能随着时间的推移和使用而逐渐下降。由于缺乏直接测量,对老化电池进行充电状态 (SOC) 和健康状态 (SOH) 监测对电池管理系统 (BMS) 提出了一项具有挑战性的任务。基于考虑老化对物理电池参数影响的电化学模型的估计算法可以提供有关电池使用寿命内锂浓度和电池容量的准确信息。增强型单粒子模型 (ESPM) 是一种与温度相关的电化学模型,它构成了合成自适应互连观察器的基础,该观察器利用由于固体电解质界面层 (SEI) 的生长而导致的容量和功率衰减之间的关系,从而能够组合估计状态(电极中的锂浓度和电池容量)和老化敏感传输参数(阳极扩散系数和 SEI 层离子电导率)。利用李雅普诺夫理论推导了自适应观测器的实际稳定性条件。对实验数据的验证结果显示,有界容量估计误差在其真实值的 2% 以内。此外,还测试了两个处于不同老化阶段的电池容量估计的有效性。研究了测量噪声和传感器偏差下容量估计的鲁棒性。

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