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基于麻雀优化算法的锂电池健康状态估计方法

Assessment Method for Health State of Li-Ion Batteries Based on Sparrow Search Algorithm

  • 摘要:
      目的  准确估计锂离子电池健康状态(SoH)对于未来的智能电池管理系统具有重要意义。为解决数据特征质量差以及模型参数调整困难的问题,提出了基于奇异值定阶降噪以及麻雀算法优化门控循环(GRU)神经网络的锂电池SoH估计方法。
      方法  首先,从电池充放电数据中提取了3个与SoH衰减高度相关的指标,运用奇异值分解技术对特征进行降噪,提高了其与SoH的相关性。接着,使用麻雀搜索算法优化GRU神经网络的模型结构及参数,提高其对SoH的估计精度。最后,使用先进生命周期工程中心(CALCE)的电池数据集验证所提模型的有效性。
      结果  实验结果表明,所提模型适用于电池SoH估计,其最大均方根误差(RMSE)仅为0.018 4;经过数据降噪以及算法优化后的GRU模型,其RMSE比初始模型减少了55.41%。
      结论  文章所提方法实现了SoH的准确估计,可为实际工程应用提供参考。

     

    Abstract:
      Introduction  Accurate estimation of the Li-ion batteries' State of Health (SoH) is essential for future intelligent battery management systems. To solve the problems of poor quality of data features and difficulties in adjusting model parameters, this study proposes a method for estimating the SoH of lithium batteries based on singular value fixed-order noise reduction and the sparrow search algorithm which can optimize the gated recurrent unit (GRU) neural network.
      Method  Firstly, three indicators highly correlated with SoH decay were extracted from the battery charge and discharge data. Noise reduction was applied to the features using singular value decomposition techniques to improve their correlation with SoH. Next, using the sparrow search algorithm to optimize the model structure and parameters of the GRU neural network improve the accuracy of estimation of SoH. Finally, the battery data sets from Centre for Advanced Life Cycle Engineering (CALCE) were used to verify the validity of the proposed model.
      Result  The experimental results show that the model proposed in this study applies to the battery SoH estimation, with a maximum root mean square error (RMSE) of only 0.018 4. After data noise reduction and algorithm optimization, the RMSE of the GRU model is reduced by 55.41% compared to the initial model.
      Conclusion  The method proposed in this paper accurately estimates SoH and can be used as a reference for practical engineering applications.

     

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