储能科学与技术 ›› 2021, Vol. 10 ›› Issue (2): 689-694.doi: 10.19799/j.cnki.2095-4239.2020.0382

• 储能测试与评价 • 上一篇    下一篇

基于混合模型及LSTM的锂电池SOH与剩余寿命预测

刘伟霞1(), 田勋1, 肖家勇1, 常伟2, 李源2, 毛樑2   

  1. 1.北京新能源汽车股份有限公司,北京 100176
    2.上海觉云科技有限公司,上海 200030
  • 收稿日期:2020-11-26 修回日期:2020-12-14 出版日期:2021-03-05 发布日期:2021-03-05
  • 通讯作者: 刘伟霞 E-mail:jueyun_idea@163.com
  • 作者简介:刘伟霞(1976—),女,本科,研究方向为大数据平台及车云平台建设,E-mail:jueyun_idea@163.com

Estimation of SOH and remaining life of lithium batteries based on a combination model and long short-term memory

Weixia LIU1(), Xun TIAN1, Jiayong XIAO1, Wei CHANG2, Yuan LI2, Liang MAO2   

  1. 1.Beijing Electric Vehicle Automobile Co. Ltd. , Beijing 100176, China
    2.Shanghai CloudReady Technology Co. Ltd. , Shanghai 200030, China
  • Received:2020-11-26 Revised:2020-12-14 Online:2021-03-05 Published:2021-03-05
  • Contact: Weixia LIU E-mail:jueyun_idea@163.com

摘要:

预测电池健康状态(state of health,SOH)的传统方法,一般以历史数据为依据,既难以预测电池实时状态,也无法估计锂电池剩余使用寿命。针对实时预测电池SOH的问题,文章依据采集的大量实车电池数据,结合机器学习与安时积分法对其进行建模预测,处理特征并训练数据。基于模型测试结果,文章提出融合LightGBM与CatBoost算法的实时SOH混合预测模型。通过两辆实车为载体进行混合模型的验证,所测算的实时SOH预测绝对平均误差为0.009。针对电池剩余使用寿命的问题,研究的目标为获取SOH衰减曲线。因此建立长短记忆(LSTM)神经网络模型预测电池SOH的未来衰减曲线,以固定时间间隔内的SOH差值为特征,减小差值波动,保证数据近似具有相同分布规律。通过对某原始设备制造商提供的实时监视数据集的验证,得出未来衰减曲线预测的绝对平均误差为0.021。总体结果表明:文章研究的锂电池实时SOH预测模型与剩余寿命预测模型,预测精度较高,电池使用方可以更好掌握锂电池的实时状态,为相关决策提供依据。

关键词: 机器学习, SOH, 混合模型, LSTM

Abstract:

The traditional method of predicting the state of health (SOH) of a battery is generally based on historical data. Predicting the real-time state of a lithium battery or estimating its remaining service life is difficult. Aiming at the real-time prediction of battery SOH, we introduce a large amount of real-vehicle battery data (combined with machine learning and ampere-hour integration method to model and predict SOH) to process features and train data. On the basis of the model test results, this article proposes a real-time SOH hybrid prediction model combining the LightGBM and CatBoost algorithms. By verifying the hybrid model with two real vehicles as the carrier, the measured absolute average error of the real-time SOH prediction is 0.009. Our research intends to obtain the SOH attenuation curve to predict the remaining battery life. Therefore, we establish a long short-term memory (LSTM) neural network model to predict the future decay curve of battery SOH, characterized by the difference in SOH within a fixed time interval. This reduces the fluctuation of the difference and ensures that the data have similar distribution laws. By verifying the real-time monitoring data set provided by an original equipment manufacturer, the absolute average error of the future attenuation curve prediction is 0.021. The overall results show that the real-time SOH prediction model and the remaining life prediction model of the lithium battery studied in the article have high prediction accuracy. The battery user can better grasp the real-time status of the lithium battery and provide a basis for relevant decision making.

Key words: machine learning, SOH, combined model, LSTM

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