Measurement of State of Charge of Lithium-Nickel Manganese Cobalt Battery using Artificial Neural Network and NARX Algorithm

Divya. R, K. K, R. S, Raja. S.P
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引用次数: 0

Abstract

The battery's SoC is a crucial variable since it reflects its performance. An accurate estimation of SoC protects the battery, prevents overcharging or discharge, and extends its life time. Since most of the traditional methods use complex equations, ANN has been implemented to reduce the complications and provide better accuracy. In this research, Li-NMC with capacity rating of 2000mAh is used for the estimation of SoC. In this paper, Feedforward Neural Network (FNN) algorithm and Nonlinear Auto-Regressive network with exogenous inputs (NARX) have been used for designing a neural network model. Here, the performance matrixes of both neural network models have been compared and analyzed with the same dataset.
利用人工神经网络和 NARX 算法测量锂-镍-锰-钴电池的充电状态
电池的 SoC 是一个关键变量,因为它反映了电池的性能。准确估算 SoC 可以保护电池,防止过度充电或放电,并延长其使用寿命。由于大多数传统方法都使用复杂的方程,因此采用了 ANN 来减少复杂性并提供更好的准确性。本研究使用额定容量为 2000mAh 的锂离子电池来估算 SoC。本文采用前馈神经网络(FNN)算法和外生输入非线性自回归网络(NARX)来设计神经网络模型。本文使用相同的数据集对两种神经网络模型的性能矩阵进行了比较和分析。
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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