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Comparison of SOC Estimation Performance with Different Training Functions Using Neural Network

机译:神经网络在不同训练功能下SOC估计性能的比较

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The estimation of State Of Charge (SOC) of battery pack attracts wide attention in battery manufacture and application, which is a key issue in Battery Management System (BMS). A practical three-layer BP neural network is proposed and used to estimate the SOC of LiFePO4 lithium-ion battery pack, which consists of three series groups with each group of 8 series modules. Sample data are obtained with different discharging scenarios to train the network with different training functions. And the trained neural networks are used to estimate the SOC. Results of experiments show that the performances of neural networks trained by different training functions differ in estimation accuracy and training speed. The Levenberg-Marquardt (L-M) algorithm achieves the best performance compared with the other two algorithms.
机译:电池组充电状态(SOC)的估计在电池制造和应用中引起了广泛关注,这是电池管理系统(BMS)中的关键问题。提出了一种实用的三层BP神经网络,用于估计LiFePO4锂离子电池组的SOC,它由三个串联组组成,每组8个串联模块。在不同的放电场景下获得样本数据,以不同的训练功能训练网络。训练有素的神经网络用于估计SOC。实验结果表明,不同训练函数训练的神经网络的性能在估计精度和训练速度上存在差异。与其他两种算法相比,Levenberg-Marquardt(L-M)算法实现了最佳性能。

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