基于T-S模糊神经网络的磷酸铁锂电池荷电状态估计

Shuxiang Song, Z. Wei, Haiying Xia, Mingcan Cen, Chaobo Cai
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引用次数: 5

摘要

锂电池虽然具有高充放电率和能量密度的特点,但其化学活性非常高。针对锂电池荷电状态无法直接测试的问题,提出了一种利用T-S模糊神经网络回归估计电池荷电状态的方法。首先,建立了T-S模糊神经网络回归模型。将电池电压、电池电流、电池温度作为模型的训练输入,将相应的SOC作为模型的训练输出。然后,采用T-S模糊神经网络算法对模型进行训练。最后,将训练模型应用于电池荷电状态估计。实验结果表明,该方法可以有效地估计SOC,提高了估计精度,并且具有较高的计算效率。该模型可为未来电池电量估算系统的模型构建提供理论参考。
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State-of-charge (SOC) estimation using T-S Fuzzy Neural Network for Lithium Iron Phosphate Battery
Although lithium battery has the characteristics of high charge and discharge rate and energy density, its chemical activity is very high. Since the SOC of lithium battery cannot be directly tested, this paper presents a method of estimating the SOC of the battery by the T-S fuzzy neural network regression. Firstly, a T-S fuzzy neural network regression model was constructed. Take the battery voltage, battery current and battery temperature as the training input of the model, and take the corresponding SOC as the training output of the model. And then, used the T-S fuzzy neural network algorithm for model training . Finally, the training model was applied to the battery SOC estimation. The experimental results show that this method can estimate the SOC effectively, improve the estimation accuracy, and has high computational efficiency. This model may provide a theoretical reference for the model construction of future battery charge estimation system.
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