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    吴慕遥

    • 讲师 硕士生导师
    • 教师拼音名称:wumuyao
    • 出生日期:1995-12-08
    • 入职时间:2022-12-27
    • 所在单位:车辆工程系
    • 学历:博士研究生毕业
    • 办公地点:安徽省合肥市屯溪路193号合肥工业大学格物楼515
    • 性别:男
    • 联系方式:18256580186
    • 学位:工学博士学位
    • 在职信息:在职
    • 毕业院校:中国科学技术大学
    • 学科:车辆工程
    • 2022-12-01曾获荣誉当选:博士研究生国家奖学金
    • 2022-05-30曾获荣誉当选:安徽省优秀毕业生
    • 2022-05-30曾获荣誉当选:中国科学技术大学优秀毕业生
    • 2019-12-09曾获荣誉当选:中科大-苏州工业园区奖学金

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    State of health estimation of the lithium-ion power battery based on the principal component analysis-particle swarm optimization-back propagation neural network

    点击次数:

    影响因子:9.0

    DOI码:10.1016/j.energy.2023.129061

    发表刊物:Energy

    关键字:State of health; Lithium-ion power battery; Aging features; Principal component analysis; Particle swarm optimization; Back propagation neural network

    摘要:State of Health (SOH) estimation of the lithium-ion power battery has become the focus of the research and it has important scientific significance for optimizing the battery energy management strategy as well as prolonging the battery life. However, the reaction mechanism of lithium-ion power battery is complex with strong nonlinear and time-varying. Meanwhile, the complex and varied external operating environment and operating conditions increase the uncertainty of the lithium-ion power battery performance decline and further increase the difficulty of SOH estimation. The SOH estimation method of the lithium-ion power battery based on the Principal Component Analysis-Particle Swarm Optimization-Back Propagation Neural Network (PCA-PSO-BPNN) is proposed in this paper. The PCA is adopted to reduce the system input dimension, the PSO is used to optimize the weights of BPNN and the optimized BPNN is applied to estimate SOH accurately. Experimental results on the lithium-ion power battery of the NASA battery aging test data demonstrate the effectiveness of the proposed method and it can reach more excellent SOH estimation results. The Mean Absolute Error is no more than 0.51%, the Root Mean Square Error is no more than 0.65% and the Maximum Absolute Error is no more than 1.86%, respectively.

    备注:中科院1区Top

    合写作者:Yiming Zhong,Ji Wu,Yuqing Wang

    第一作者:Muyao Wu

    论文类型:期刊论文

    通讯作者:Li Wang

    论文编号:129061

    学科门类:工学

    文献类型:J

    卷号:283

    ISSN号:0360-5442

    是否译文:

    发表时间:2023-09-12

    收录刊物:SCI、EI

    发布期刊链接:https://www.sciencedirect.com/science/article/pii/S0360544223024556