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A State of Charge Estimation Method Based on APSO-PF for Lithium-ion Battery

机译:基于APSO-PF的锂离子电池的电荷估计方法

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This paper proposes an improved method for estimating the state of charge (SOC) of lithium-ion battery. Firstly, a first-order resistor and capacitance (RC) model is introduced. Secondly, the SOC and open-circuit voltage (OCV) relationship is identified through the constant current charge-discharge test, and the least-squares algorithm is used to identify the model parameters. Thirdly, an improved adaptive approach is proposed to solve the problems of particle swarm optimization (PSO), and adaptive particle swarm optimized particle filtering (APSO-PF) is proposed to estimate the SOC of li-ion battery Finally, two dynamic operation conditions are given to show the efficiency of APSO-PF by comparing with the application of particle filter (PF), particle swarm optimized particle filtering (PSO-PF) and APSO-PF in SOC estimation.
机译:本文提出了一种估算锂离子电池的充电状态(SOC)的改进方法。 首先,介绍了一阶电阻器和电容(RC)模型。 其次,通过恒流充电 - 放电测试识别SOC和开路电压(OCV)关系,并且使用最小二乘算法来识别模型参数。 第三,提出了一种改进的自适应方法来解决粒子群优化(PSO)的问题,并且提出了自适应粒子群优化颗粒滤波(APSO-PF)来估计Li离子电池的SOC最终,两个动态操作条件 通过与粒子滤波器(PF)的应用,粒子群优化粒子滤波(PSO-PF)和SoC估计中的APSO-PF进行比较,展示APSO-PF的效率。

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