热环境下锂离子电池退化建模与实验研究

Z. Almutairi, A. Eltamaly, A. E. Khereiji, A. Nassar, A. A. Rished, N. A. Saheel, A. A. Marqabi, S. A. Hamad, M. A. Harbi, R. Sherif, G. Almutairi, F. Al‐Amri, N. Hassanain
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摘要

锂离子电池(LIB)由于具有高充放电效率、低放电率、高功率和能量密度、长寿命和持续降低成本等突出性能,成为可再生能源系统和电动汽车等不同应用中最重要的储能系统(ESS)。精确的降解模型是提高锂离子电池在不同工况下性能的关键。在对锂离子电池进行建模时,考虑了温度、电荷状态和其他因素的影响。讨论了两种不同的建模策略,一种是基于理论寿命方程的建模策略,另一种是基于经验寿命方程的建模策略。目前提出的模型为基于经验寿命方程估计锂电池的退化提供了一种新的方法。对能量为2.4 kWh、容量为50Ah的两种不同型号的锂离子电池磷酸铁(LFP)进行了不同运行条件下加速健康状态的实验研究。利用改进的粒子群优化算法确定了模型的参数估计。与原粒子群算法相比,该算法通过迭代逐步减少粒子数,增强全局搜索能力,缩短收敛时间。对所研究的所有电池和不同运行条件下的储能成本进行了估算。为了比较,本研究中使用了两种不同的锂电池和一种阀控铅酸电池。与铅酸电池相比,LIB电池的成本大幅降低。两个lib中的一个不受温度的影响,而另一个则随着温度的升高而表现出明显的性能下降。
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Modeling and Experimental Determination of Lithium-Ion Battery Degradation in Hot Environment
Lithium-ion batteries (LIB) became the most important energy storage systems (ESS) for different applications such as renewable energy systems and electric vehicles due to their outstanding performance such as the high charging/discharging efficiencies, low discharge rate, high power, and energy densities, long lifetime, and continued cost reduction. An accurate degradation model for LIBs is a crucial issue to improve their performance in different operating conditions. The effect of temperature, state of charge, and other factors have been considered in modeling the LIB. Two different modeling strategies have been discussed, the first one is based on the theoretical lifetime equation, meanwhile, the other one is based on empirical lifetime equations. The current proposed model provides a novel approach for estimating the degradation of LIB batteries based on empirical lifespan equations. Many experimental efforts with an accelerated profile of the state of health under different operating conditions have been conducted for two different models of LIB Iron Phosphate (LFP) with 2.4 kWh energy and 50Ah capacity. Parameters estimation of the modeling has been determined using the modified particle swarm optimization (MPSO) algorithm. In this algorithm, the number of particles will be reduced gradually with iterations to enhance the global search and reduce the convergence time compared to the original PSO algorithm. Cost estimations of storage have been deduced for all batteries under study and for different operating conditions. For comparison, two different LIBs and one valve-regulated lead acid battery are used in this study. The LIB batteries are showing a substantial reduction in cost compared to lead acid batteries. One of the two LIBs is not substantially affected by the temperature meanwhile the other one is showing substantial deterioration in performance with temperature increase.
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