基于BP神经网络的钒氧化还原液流电池充电状态预测研究

Hongtao Niu, Jianqiong Huang, Chenguang Wang, Xiaoyan Zhao, Zhifeng Zhang, Wei Wang
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引用次数: 3

摘要

电池的实时容量通常由充电状态(SOC)表示。介绍了钒氧化还原液流电池荷电状态预测方法,并比较了各种方法的优缺点。针对电荷状态的非线性特点,提出了基于BP神经网络的VRB电荷状态预测方法。BP神经网络分别采用Levenberg-Marquardt优化算法和贝叶斯调节算法进行优化。基于贝叶斯调节的神经网络可以在VRB测试过程中实时预测系统的SOC。实验结果表明,经贝叶斯调节算法改进的神经网络能够提高SOC的实时预测精度,具有良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
State of Charge Prediction Study of Vanadium Redox-Flow Battery with BP Neural Network
Real-time capacity of a battery is normally indicated by the state of charge (SOC). In this paper, the SOC prediction methods of vanadium redox-flow battery (VRB) are introduced and the advantages and disadvantages of those are compared. Based on the nonlinear characteristic of SOC, the method of using BP neural network to predict SOC of VRB is proposed. The BP neural network is optimized with Levenberg-Marquardt optimization algorithm and Bayesian regulation algorithm, respectively. The neural network improved with Bayesian regulation can predict SOC in real time during the VRB testing process. The experimental results show that the neural network improved by Bayesian regulation algorithm can improve the real-time prediction accuracy of SOC and has a good application prospect.
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