Battery SOC Estimation Using extended Kalman Filter and ANN with Measurement of Noise

Pathan Mayeen Avez, S. Swetha, Satish Kumar Gudey SMIEEE
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引用次数: 1

Abstract

Estimation of State of charge (SOC) has always been the crucial segment of battery management system (BMS). However, SOC cannot be determined accurately, it can only be estimated. In this work, an electrical equivalent circuit of the Li-Ion polymer battery of rating 11.5 Ah based on Randel's model has been simulated in MATLAB using the results obtained from a practical model. The non-linear nature of the battery is considered with the model dependent on State of Charge (SOC) and temperature variations. In this paper, Extended Kalman Filter (EKF) algorithm and an Artificial Neural Network (ANN) algorithm have been employed for SOC estimation. Through EKF method, the simulation results show that the error is less than one percent between true SOC and estimated SOC. Through ANN algorithm, when properly trained with sufficient training data - Neural Network consisting of a single layer is capable of adequately appropriating the non-linear characteristics of a battery. It is found that at 271 epochs, it is able to achieve an error as low as 0.010291 where SOC values are varied from 0 to 1. These methods are equally applicable to other battery models.
基于扩展卡尔曼滤波和带有噪声测量的神经网络的电池荷电状态估计
荷电状态估计一直是电池管理系统(BMS)的关键环节。然而,SOC不能被准确地确定,它只能被估计。本文利用实际模型得到的结果,在MATLAB中对额定11.5 Ah的基于Randel模型的聚合物锂离子电池等效电路进行了仿真。考虑了电池的非线性特性,该模型依赖于荷电状态(SOC)和温度变化。本文采用扩展卡尔曼滤波(EKF)算法和人工神经网络(ANN)算法进行SOC估计。通过EKF方法,仿真结果表明,真实SOC与预估SOC的误差小于1%。通过人工神经网络算法,在训练数据充足的情况下,单层神经网络能够充分利用电池的非线性特性。结果发现,在271次时,它能够实现低至0.010291的误差,其中SOC值从0到1变化。这些方法同样适用于其他电池型号。
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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