Battery state of charge estimation using an Artificial Neural Network

Mahmoud Ismail, Rioch Dlyma, A. Elrakaybi, R. Ahmed, S. Habibi
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引用次数: 47

Abstract

The automotive industry is currently experiencing a paradigm shift from conventional, diesel and gasoline-propelled vehicles into the second generation hybrid and electric vehicles. Since the battery pack represents the most important and expensive component in the electric vehicle powertrain, extensive monitoring and control is required. Therefore, extensive research is being conducted in the field of electric vehicle battery condition monitoring and control. In this paper, an Artificial Neural Network (ANN) is used for Lithium-Ion (Li-Ion) battery state-of-charge (SOC) estimation. When properly trained using the random current profile described in this paper, a single-layered Neural Network is capable of capturing the non-linear characteristics of a battery. The ANN is able to estimate a non-measurable parameter such as battery SOC level based on battery measurable parameters such as voltage and current. The ANN in this paper is trained using experimental data generated from an experimental battery using a R-RC model with SOC/OCV relationship. The SOC/OCV relationship was derived from a commercial 3.6V 3.4Ah Li-Ion battery cell. The network is trained using current, and voltage as inputs and SOC as the output. The trained network is tested using benchmark driving cycles to be capable of estimating the battery SOC with a relatively high degree of accuracy.
基于人工神经网络的电池充电状态估计
目前,汽车行业正经历着从传统的柴油和汽油驱动型汽车向第二代混合动力汽车和电动汽车的范式转变。由于电池组是电动汽车动力系统中最重要、最昂贵的部件,因此需要进行广泛的监测和控制。因此,在电动汽车电池状态监测与控制领域展开了广泛的研究。本文将人工神经网络(ANN)用于锂离子(Li-Ion)电池荷电状态(SOC)的估计。当使用本文中描述的随机电流分布进行适当训练时,单层神经网络能够捕获电池的非线性特性。人工神经网络能够根据电池的可测量参数(如电压和电流)估计不可测量参数(如电池SOC水平)。本文采用具有SOC/OCV关系的R-RC模型,利用实验电池生成的实验数据对人工神经网络进行训练。SOC/OCV关系来源于3.6V 3.4Ah商用锂离子电池。该网络使用电流和电压作为输入,SOC作为输出进行训练。经过训练的网络使用基准驾驶循环进行测试,以便能够以相对较高的精度估计电池SOC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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