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A comparative study of model-based capacity estimation algorithms in dual estimation frameworks for lithium-ion batteries under an accelerated aging test

机译:加速老化测试中锂离子电池双重估算框架中基于模型的容量估算算法的比较研究

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摘要

The actual capacity of a battery is an essential indicator for calculating both the state of health and the remaining electric driving range. Numerous model-based techniques employing adaptive filters have been proposed for the online capacity estimation. However, in these filter-based methods, the impacts of filter configurations and the algorithm effectiveness at various aging stages have not yet been fully investigated. To address this gap and to evaluate the performance of three most popular algorithms, i.e. the extended Kalman filter, the particle filter, and the least-squares-based filter, they are coupled with an SOC estimator in dual frameworks. The characterization and accelerated aging tests have been carried out on a lithium-ion battery. After investigating the possible impacts from the configurations, the tracking accuracy, the robustness against the uncertainty of the initial capacity and the long-term performance of the three algorithms are compared. Furthermore, their computational efforts are extensively assessed regarding complexity, simulation runtime as well as compiled code size utilizing an automotive prototype hardware. The results show that the extended Kalman filter is the least sensitive to model degradation with the lowest computational effort; the particle filter shows the fastest convergence speed but has the highest computational effort; and the least-squares-based filter has an intermediate behavior in both long-term performance and computational effort.
机译:电池的实际容量是计算健康状态和剩余电动行驶里程的重要指标。已经提出了许多采用自适应滤波器的基于模型的技术用于在线容量估计。但是,在这些基于过滤器的方法中,尚未充分研究过滤器配置和算法有效性在各个老化阶段的影响。为了解决这一差距并评估三种最受欢迎​​的算法(即扩展的卡尔曼滤波器,粒子滤波器和基于最小二乘的滤波器)的性能,它们在双框架中与SOC估计器结合使用。表征和加速老化测试已经在锂离子电池上进行。在调查了配置可能带来的影响之后,比较了三种算法的跟踪精度,针对初始容量不确定性的鲁棒性和长期性能。此外,利用汽车原型硬件对它们的计算工作进行了广泛的评估,包括复杂性,仿真运行时间以及编译后的代码大小。结果表明,扩展卡尔曼滤波器对模型降级的敏感度最低,计算量最少。粒子滤波器的收敛速度最快,但计算量最大。基于最小二乘的滤波器在长期性能和计算工作量上都具有中间行为。

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