Abstract:In order to accurately estimate the state of health (SOH) of lithium-ion batteries, this paper proposes a new estimation method based on improved grid search (GS) and generalized regression neural network (GRNN). Firstly, data processing is performed on the data set, and effective characteristic data including voltage and current are extracted through correlation analysis method. Secondly, a regression model based on improved grid search and generalized regression neural network is proposed to estimate the health of the battery. Finally, two public data sets of lithium-ion batteries are used to verify the proposed estimation method. Experimental results prove that this method has the advantages of accuracy, generalization performance and reliability compared with other estimation methods.
姚远, 陈志聪, 吴丽君, 程树英, 林培杰. 一种基于改进网格搜索和广义回归神经网络的锂离子电池健康状态估计方法[J]. 电气技术, 2021, 22(7): 32-37.
YAO Yuan, CHEN Zhicong, WU Lijun, CHENG Shuying, LIN Peijie. A health state estimation method for lithium-ion battery based on improved grid rearch and generalized regression neural network. Electrical Engineering, 2021, 22(7): 32-37.
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