A Novel Feature Engineering-Based SOH Estimation Method for Lithium-Ion Battery with Downgraded Laboratory Data

IF 4.6 4区 化学 Q2 ELECTROCHEMISTRY
Jinyu Wang, Caiping Zhang, Xiangfeng Meng, Linjing Zhang, Xu Li, Weige Zhang
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Abstract

Accurate estimation of lithium-ion battery state of health (SOH) can effectively improve the operational safety of electric vehicles and optimize the battery operation strategy. However, previous SOH estimation algorithms developed based on high-precision laboratory data have ignored the discrepancies between field and laboratory data, leading to difficulties in field application. Therefore, aiming to bridge the gap between the lab-developed models and the field operational data, this paper presents a feature engineering-based SOH estimation method with downgraded laboratory battery data, applicable to real vehicles under different operating conditions. Firstly, a data processing pipeline is proposed to downgrade laboratory data to operational fleet-level data. The six key features are extracted on the partial ranges to capture the battery’s aging state. Finally, three machine learning (ML) algorithms for easy online deployment are employed for SOH assessment. The results show that the hybrid feature set performs well and has high accuracy in SOH estimation for downgraded data, with a minimum root mean square error (RMSE) of 0.36%. Only three mechanism features derived from the incremental capacity curve can still provide a proper assessment, with a minimum RMSE of 0.44%. Voltage-based features can assist in evaluating battery state, improving accuracy by up to 20%.
基于特征工程学的锂离子电池 SOH 估算新方法与降级实验室数据
准确估算锂离子电池的健康状态(SOH)可有效提高电动汽车的运行安全性并优化电池运行策略。然而,以往基于高精度实验室数据开发的 SOH 估算算法忽略了现场数据与实验室数据之间的差异,导致现场应用困难重重。因此,为了弥补实验室开发的模型与现场运行数据之间的差距,本文提出了一种基于特征工程的 SOH 估算方法,该方法采用降级的实验室电池数据,适用于不同运行条件下的真实车辆。首先,本文提出了一个数据处理管道,将实验室数据降级为车队级运行数据。在部分范围上提取六个关键特征,以捕捉电池的老化状态。最后,采用三种便于在线部署的机器学习(ML)算法进行 SOH 评估。结果表明,混合特征集在降级数据的 SOH 估算中表现出色,具有很高的准确性,最小均方根误差 (RMSE) 为 0.36%。只有从增量容量曲线得出的三个机制特征仍能提供正确的评估,最小均方根误差为 0.44%。基于电压的特征有助于评估电池状态,可将准确性提高 20%。
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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来源期刊
Batteries
Batteries Energy-Energy Engineering and Power Technology
CiteScore
4.00
自引率
15.00%
发文量
217
审稿时长
7 weeks
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