A State-of-Health Estimation Method for Lithium Batteries Based on Fennec Fox Optimization Algorithm–Mixed Extreme Learning Machine

Chongbin Sun, Wenhu Qin, Zhonghua Yun
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Abstract

A reliable and accurate estimation of the state-of-health (SOH) of lithium batteries is critical to safely operating electric vehicles and other equipment. This paper proposes a state-of-health estimation method based on fennec fox optimization algorithm–mixed extreme learning machine (FFA-MELM). Firstly, health indicators are extracted from lithium-battery-charging data, and grey relational analysis (GRA) is employed to identify highly correlated features with the state-of-health of the battery. Subsequently, a state-of-health estimation model based on mixed extreme learning machine is constructed, and the hyperparameters of the model are optimized using the fennec fox optimization algorithm to improve estimation accuracy and convergence speed. The experimental results demonstrate that the proposed method has significantly improved the accuracy of the state-of-health estimation for lithium batteries compared to the extreme learning machine. Furthermore, it can achieve precise state-of-health estimation results for multiple batteries, even under complex operating conditions and with limited charge/discharge cycle data.
基于 Fennec Fox 优化算法-混合极端学习机的锂电池健康状况评估方法
可靠而准确地估算锂电池的健康状况(SOH)对于安全运行电动汽车和其他设备至关重要。本文提出了一种基于狐狸优化算法-混合极端学习机(FFA-MELM)的健康状况估计方法。首先,从锂电池充电数据中提取健康指标,并采用灰色关系分析(GRA)找出与电池健康状况高度相关的特征。随后,构建了基于混合极端学习机的电池健康状况估计模型,并利用狐狸优化算法对模型的超参数进行了优化,以提高估计精度和收敛速度。实验结果表明,与极端学习机相比,所提出的方法显著提高了锂电池健康状态估计的准确性。此外,即使在复杂的运行条件下和充放电循环数据有限的情况下,它也能对多个电池得出精确的健康状况估计结果。
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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