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Robust sliding mode observer using RBF neural network for lithium-ion battery state of charge estimation in electric vehicles

机译:使用RBF神经网络使用RBF神经网络进行电动汽车电荷估计的鲁棒滑动模式观察者

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A robust sliding mode observer (SMO) based on a radial basis function (RBF) neural network (NN) is presented for battery state of charge (SOC) estimation. Comparing with an ordinary SMO for the SOC estimation, the robust SMO employs the RBF NN to learn the upper bound of system uncertainties caused by the discrepancy between a battery equivalent circuit model (BECM) and a battery. The output of the RBF NN is then used as an adaptive switching gain in the sense that the effects of the system uncertainties can be compensated so that asymptotic SOC estimation error convergence can be attained by the robust SMO. The experiments are conducted on a lithium-ion (Li-ion) battery for extracting parameters of the BECM and verifying the effectiveness of the proposed scheme for the SOC estimation.
机译:基于径向基函数(RBF)神经网络(NN)的鲁棒滑动模式观察者(SMO)用于电池充电状态(SOC)估计。 与SOC估计的普通SMO相比,强大的SMO采用RBF NN来学习由电池等效电路模型(BECM)和电池之间的差异引起的系统不确定性的上限。 然后,RBF NN的输出在感觉中用作自适应切换增益,即可以补偿系统不确定性的效果,从而可以通过鲁棒的SMO实现渐近SOC估计误差会聚。 实验在锂离子(锂离子)电池上进行,用于提取BECM的参数并验证所提出的SOC估计方案的有效性。

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