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首页> 外文期刊>IEEE Control Systems Letters >A Local Polynomial Approach to Nonparametric Estimation of the Best Linear Approximation of Lithium-Ion Battery From Multiple Datasets
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A Local Polynomial Approach to Nonparametric Estimation of the Best Linear Approximation of Lithium-Ion Battery From Multiple Datasets

机译:基于多个数据集的锂离子电池最佳线性逼近的非多项式估计的局部多项式方法

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摘要

Battery short-term electrical impedance behavior varies between linear, linear time-varying, or nonlinear at different operating conditions. Data-based electrical impedance modeling techniques often model the battery as a linear time-invariant system at all operating conditions. In addition, these techniques require extensive and time consuming experimentation. Often due to sensor failures during experiments, constraints in data acquisition hardware, varying operating conditions, and the slow dynamics of the battery, it is not always possible to acquire data in a single experiment. Hence, multiple experiments must be performed. In this letter, a local polynomial approach is proposed to estimate nonparametrically the best linear approximation of the electrical impedance affected by varying levels of nonlinear distortion, from a series of input current and output voltage data subrecords of arbitrary length.
机译:电池的短期电阻抗行为在不同的工作条件下在线性,线性时变或非线性之间变化。基于数据的电阻抗建模技术通常在所有工作条件下将电池建模为线性时不变系统。另外,这些技术需要大量且费时的实验。通常由于实验过程中的传感器故障,数据采集硬件的限制,运行条件​​的变化以及电池的缓慢动力,并非总是能够在单个实验中采集数据。因此,必须执行多个实验。在这封信中,提出了一种局部多项式方法,用于从一系列任意长度的输入电流和输出电压数据子记录中,非参数地估计受非线性失真水平变化影响的电阻抗的最佳线性近似值。

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