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Adaptive and Fast State of Health Estimation Method for Lithium-ion Batteries Using Online Complex Impedance and Artificial Neural Network

机译:在线复阻抗和人工神经网络的锂离子电池自适应快速健康状态估计方法

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This paper presents an adaptive state-of-health (SOH) estimation method that utilizes artificial neural network (ANN) and online AC complex impedance. The zero crossing frequency of battery impedance phase can reflect the aging status of battery based on the observation from the aging data. However, the relationship between the zero crossing frequency and SOH is nonlinear. In order to model this nonlinear relationship for SOH prediction, ANN as a powerful nonlinear fitting tool or method is explored in this paper in order to characterize this relationship. The designed ANN can update its parameters based on the feedback data from the operation of the system. This feature makes the proposed method be able to adapt to the changes in the operation conditions and aging conditions of the battery, which enables better SOH prediction accuracy compared with the static SOH model methods when the operation conditions or battery conditions are different from the ones that the static SOH models are derived from. The proposed SOH estimation method also allows for fast prediction compared with the conventional capacity fading methods. This is mainly because the parameter used for SOH prediction, i.e. battery impedance phase, can be obtained within a short time during the online operation of the system. A preliminary experimental prototype is built in the laboratory to verify the proposed method.
机译:本文提出了一种利用人工神经网络(ANN)和在线AC复合阻抗的自适应健康状况(SOH)估计方法。电池阻抗相的过零频率可以根据对老化数据的观察反映出电池的老化状态。但是,过零频率与SOH之间的关系是非线性的。为了对SOH预测的非线性关系进行建模,本文探索了一种作为强大的非线性拟合工具或方法的ANN,以表征这种关系。设计的人工神经网络可以基于系统运行中的反馈数据来更新其参数。该特征使得所提出的方法能够适应电池工作条件和老化条件的变化,与静态SOH模型方法相比,当工作条件或电池条件不同于静态SOH模型方法时,SOH预测精度更高。静态SOH模型是从中得出的。与常规容量衰落方法相比,所提出的SOH估计方法还允许快速预测。这主要是因为可以在系统在线运行期间的短时间内获得用于SOH预测的参数,即电池阻抗相位。在实验室中建立了初步的实验原型,以验证所提出的方法。

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