Capacity and Resistance Diagnosis of Batteries with Voltage-Controlled Models

IF 3.1 4区 工程技术 Q2 ELECTROCHEMISTRY Journal of The Electrochemical Society Pub Date : 2024-08-07 DOI:10.1149/1945-7111/ad6938
Wolfgang G. Bessler
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Abstract

Capacity and internal resistance are key properties of batteries determining energy content and power capability. We present a novel algorithm for estimating the absolute values of capacity and internal resistance from voltage and current data. The algorithm is based on voltage-controlled models. Experimentally-measured voltage is used as an input variable to an equivalent circuit model. The simulation gives current as output, which is compared to the experimentally-measured current. We show that capacity loss and resistance increase lead to characteristic fingerprints in the current output of the simulation. In order to exploit these fingerprints, a theory is developed for calculating capacity and resistance from the difference between simulated and measured current. The findings are cast into an algorithm for operando diagnosis of batteries operated with arbitrary load profiles. The algorithm is demonstrated using cycling data from lithium-ion pouch cells operated on full cycles, shallow cycles, and dynamic cycles typical for electric vehicles. Capacity and internal resistance of a “fresh” cell was estimated with high accuracy (mean absolute errors of 0.9% and 1.8%, respectively). For an “aged” cell, the algorithm required adaptation of the model’s open-circuit voltage curve to obtain high accuracies. Highlights Operando diagnosis of capacity and internal resistance of rechargeable batteries. Novel algorithm developed, validated and demonstrated. Use of voltage-controlled models: Voltage as input, current as output. High accuracy achieved for dynamic operation of an NMC-LMO/graphite pouch cell.
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用电压控制模型诊断电池的容量和电阻
容量和内阻是电池的关键特性,决定了电池的能量含量和功率能力。我们提出了一种从电压和电流数据中估算容量和内阻绝对值的新算法。该算法基于电压控制模型。实验测量的电压被用作等效电路模型的输入变量。模拟将电流作为输出,并与实验测量的电流进行比较。我们发现,容量损失和电阻增加会导致模拟输出的电流出现特征指纹。为了利用这些指纹,我们提出了一种理论,用于根据模拟电流和测量电流之间的差值计算容量和电阻。研究结果被转化为一种算法,用于对任意负载情况下运行的电池进行运行诊断。该算法使用锂离子袋式电池的循环数据进行了演示,这些数据来自电动汽车典型的全循环、浅循环和动态循环。对 "新鲜 "电池的容量和内阻进行了高精度估算(平均绝对误差分别为 0.9% 和 1.8%)。对于 "老化 "电池,该算法需要对模型的开路电压曲线进行调整,以获得高精度。亮点:充电电池容量和内阻的 Operando 诊断。新算法的开发、验证和演示。使用电压控制模型:电压作为输入,电流作为输出。实现了 NMC-LMO/ 石墨袋电池动态运行的高精度。
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来源期刊
CiteScore
7.20
自引率
12.80%
发文量
1369
审稿时长
1.5 months
期刊介绍: The Journal of The Electrochemical Society (JES) is the leader in the field of solid-state and electrochemical science and technology. This peer-reviewed journal publishes an average of 450 pages of 70 articles each month. Articles are posted online, with a monthly paper edition following electronic publication. The ECS membership benefits package includes access to the electronic edition of this journal.
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