基于IDRSN和BiGRU的锂离子电池充电状态估计

IF 2.7 4区 工程技术 Q3 ELECTROCHEMISTRY Journal of Electrochemical Energy Conversion and Storage Pub Date : 2023-10-05 DOI:10.1115/1.4063173
Jiahao Zhang, Jiadui Chen, Ling He, Dan Liu, Kai Yang, Qinghua Liu
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引用次数: 0

摘要

摘要在电动汽车动力电池能量管理中,荷电状态(SOC)估计是一个关键问题。然而,目前SOC估算方法的精度还不能满足实际应用的要求。因此,本研究提出了一种改进的锂离子电池荷电状态估计方法,该方法将深度剩余收缩网络(DRSN)和双向门控循环单元(BiGRU)相结合,以提高荷电状态估计精度。首先,在深度残余收缩网络的全局平均池化层和输出全连接层之间插入双向门控循环单元神经网络。这种改进增强了模型的表现力、鲁棒性和数据学习效果。其次,我们开发了一个新的激活函数“∂_swish”来取代深度剩余收缩网络中原来的ReLU激活函数。∂_swish激活函数利用其正则化效果,提高了深度网络模型的精度,降低了过拟合的风险。最后,我们使用FUDS驾驶循环数据集和DST-US06-FUDS连续驾驶循环数据集在三种不同温度下进行了实验测试。通过与其他模型的比较,验证了算法模型的收敛速度。结果表明,与其他模型相比,该方法显著提高了三种不同温度下的SOC估计精度。此外,该方法具有较快的收敛速度。
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State of charge estimation of lithium–ion battery based on IDRSN and BiGRU
Abstract The estimation of state of charge (SOC) is a critical issue in the energy management of electric vehicle (EV) power batteries. However, the current accuracy of SOC estimation methods does not meet the requirements of practical applications. Therefore, this study proposes an improved lithium-ion battery SOC estimation method that combines deep residual shrinkage network (DRSN) and bidirectional gated recurrent unit (BiGRU) to enhance the SOC estimation accuracy. First, we insert the bidirectional gated recurrent unit neural network between the global average pooling layer and the output fully connected layer of the deep residual shrinkage network. This improvement enhances the model’s expressiveness, robustness, and data learning effect. Second, we develop a new activation function called “∂_swish” to replace the original ReLU activation function in the deep residual shrinkage network. The ∂_swish activation function improves the accuracy of the deep network model and reduces the risk of overfitting by utilizing its regularization effect. Finally, we conduct experimental tests at three different temperatures using the FUDS driving cycle dataset and the DST-US06-FUDS continuous driving cycle dataset. The algorithm model’s convergence speed is verified by comparing it with other models. The results show that compared to other models, the proposed method significantly improves SOC estimation accuracy at three different temperatures. In addition, the method demonstrates a high convergence speed.
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来源期刊
CiteScore
4.90
自引率
4.00%
发文量
69
期刊介绍: The Journal of Electrochemical Energy Conversion and Storage focuses on processes, components, devices and systems that store and convert electrical and chemical energy. This journal publishes peer-reviewed archival scholarly articles, research papers, technical briefs, review articles, perspective articles, and special volumes. Specific areas of interest include electrochemical engineering, electrocatalysis, novel materials, analysis and design of components, devices, and systems, balance of plant, novel numerical and analytical simulations, advanced materials characterization, innovative material synthesis and manufacturing methods, thermal management, reliability, durability, and damage tolerance.
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