锂离子电池等效电路模型参数辨识的变量递归最小二乘算法

Mouncef El Marghichi, Azedine Loulijat, I. E. Hantati
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引用次数: 2

摘要

对于基于电路模型的荷电状态评估技术,模型参数受电池老化、温度等因素的影响较大,导致荷电状态估计存在一定误差。解决这一问题的方法之一是不断更新模型参数。我们提出了一种新的VRLS(可变递归最小二乘)算法来更新2-电阻-电容器(RC)网络的参数并估计输出电池电压。将VRLS算法与递归最小二乘(RLS)和自适应遗忘因子递归最小二乘(AFFRLS)算法进行了比较。为了对算法进行评估,我们使用了在三星18650-20R锂离子电池上进行的真实实验数据。试验表明,与RLS和AFFRLS方法相比,VRLS方法在高误差范围内的分布较低,且所有试验的预测性能指标(RMSE、MAE和MAPE)均较小,说明VRLS方法具有较好的参数识别能力。
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Variable Recursive Least Square Algorithm for Lithium-ion Battery Equivalent Circuit Model Parameters Identification
For SOC (state of charge) assessment techniques based on electrical circuit models, the parameters of the model are strongly biased by: battery aging, temperature, causing some errors in the estimation of the SOC. One approach to solve this problem is to update the model parameters constantly. We suggest a new algorithm VRLS (Variable recursive least squares) to update the parameters of a 2-resistor-capacitor (RC) network and to estimate the output battery voltage. VRLS is compared to the recursive least squares (RLS) and the adaptive forgetting factor recursive least squares (AFFRLS) algorithms. For algorithm assessment, we utilized real experimental data conducted on the Samsung 18650-20R lithium-ion cell. The tests indicate that compared to RLS and AFFRLS methods, VRLS recorded a low distribution in the high error range, in addition to small predictive performance indicators (RMSE, MAE, and MAPE) in all tests, which implies that VRLS has a good parameter identification ability.
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来源期刊
Periodica polytechnica Electrical engineering and computer science
Periodica polytechnica Electrical engineering and computer science Engineering-Electrical and Electronic Engineering
CiteScore
2.60
自引率
0.00%
发文量
36
期刊介绍: The main scope of the journal is to publish original research articles in the wide field of electrical engineering and informatics fitting into one of the following five Sections of the Journal: (i) Communication systems, networks and technology, (ii) Computer science and information theory, (iii) Control, signal processing and signal analysis, medical applications, (iv) Components, Microelectronics and Material Sciences, (v) Power engineering and mechatronics, (vi) Mobile Software, Internet of Things and Wearable Devices, (vii) Solid-state lighting and (viii) Vehicular Technology (land, airborne, and maritime mobile services; automotive, radar systems; antennas and radio wave propagation).
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