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A New Predictive Model for the State-of-Charge of a High-Power Lithium-Ion Cell Based on a PSO-Optimized Multivariate Adaptive Regression Spline Approach

机译:基于PSO优化的多元自适应回归样条方法的大功率锂离子电池荷电状态预测模型

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Batteries play a key role in achieving the target of universal access to reliable affordable energy. Despite their relevant importance, many challenges remain unsolved with regard to the characterization and management of batteries. One of the major issues in any battery application is the estimation of the state-of-charge (SoC). SoC, which is expressed as a percentage, indicates the amount of energy available in a battery. An accurate SoC estimation under realistic conditions improves battery performance, reliability, and lifetime. This paper proposes an SoC estimation method based on a new hybrid model that combines multivariate adaptive regression splines (MARS) and particle swarm optimization (PSO). The proposed hybrid PSO–MARS-based model uses data obtained from a high-power load profile (dynamic stress test) specified by the United States Advanced Battery Consortium (USABC). The results provide comparable accuracy to other more sophisticated techniques but at a lower computational cost.
机译:电池在实现普遍获得可靠的负担得起的能源这一目标中起着关键作用。尽管它们具有相关的重要性,但在电池的特性和管理方面仍未解决许多挑战。任何电池应用中的主要问题之一是充电状态(SoC)的估算。 SoC以百分比表示,表示电池中的可用电量。在实际条件下进行准确的SoC估计可改善电池性能,可靠性和使用寿命。本文提出了一种基于新的混合模型的SoC估计方法,该模型结合了多元自适应回归样条(MARS)和粒子群优化(PSO)。提议的基于PSO-MARS的混合模型使用从美国高级电池协会(USABC)指定的高功率负载曲线(动态应力测试)获得的数据。结果提供了与其他更先进的技术相当的精度,但计算成本较低。

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