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基于免疫遗传算法的动力电池SOC估计研究 被引量:7

Optimal Estimation of State of Charge for Power Battery Based on IGA-BP Algorithm
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摘要 锂离子动力电池SOC (电池荷电状态)难以直接测量且由于高度非线性所导致估计误差较大;为了减少动力电池SOC估计误差,提高估算精度;在分析了锂离子动力电池电压、温度、电流和放电电量对电池SOC影响后,提出一种新颖的免疫遗传算法(Immune Genetic Algorithm,IGA)和BP神经网络相结合的锂离子动力电池SOC值联合估计方法,该方法首次使用在锂离子动力电池SOC值估计中,采用新颖的免疫遗传算法通过对BP神经网络进行参数寻优,优化网络结构模型,增强神经网络自适应学习效率;通过仿真和动力电池实际工况下实验,结果表明使用新颖的联合估计算法提高了网络的运行效率和电池SOC值估计精度,估计均方根误差控制在2%以内,验证了这一联合估计算法的可行性和有效性,解决了动力电池SOC值估计误差较大的问题。 It is difficult to directly measure the SOC value(battery state of charge)of a lithium ion battery,and a large estimation error is caused due to high nonlinearity.In order to reduce the battery SOC estimation error,improve the SOC estimation accuracy.After analyzing the effect of voltage,temperature,current and discharge electricity of lithium-ion battery on battery SOC,a novel Immune Genetic Algorithm(IGA)combined with BP neural network was proposed for SOC value of lithium-ion battery.This method is used for the first time in the estimation of SOC value of lithium-ion battery,using a novel immune genetic algorithm to optimize parameters of BP neural network,optimize the network model,and effectively improve the network learning efficiency and battery SOC value.Finally,through simulations and experiments under the actual conditions of the power battery,the results show that the use of a novel joint estimation algorithm improves the network operating efficiency and the battery SOC value estimation accuracy,estimates the root mean square error control within2%,and validates this joint estimation algorithm.The feasibility and effectiveness of the solution to the problem of large error in battery SOC estimation.
作者 杨云龙 徐自强 吴孟强 张大庆 Yang Yunlong;Xu Ziqiang;Wu Mengqiang;Zhang Daqing(School of Materials and Energy, University of Electronic Science and Technology, Chengdu 611731, China;Chengdu Automobile Industry Academy, Chengdu 610101, China)
出处 《计算机测量与控制》 2018年第12期220-224,共5页 Computer Measurement &Control
基金 国家自然科学基金(61301052) 四川省科技计划重点研发项目(18ZDYF1590 2016GZ0025 2017GZ0102 2017GZ0106 2017GZ0143 2017GZ0020) 成都市电动乘用车产业集群协同创新项目(2017-XT00-00002-GX) 中央高校基本科研业务费(ZYGX2015J095 2016J035)
关键词 锂离子动力电池 SOC估计 免疫遗传算法IGA 联合估计 lithium-ion power battery SOC estimate immune genetic algorithm joint estimation
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