基于健康因子提取和 IDBO-BiLSTM 模型的锂电池 SOH 预测
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Lithium Battery SOH Prediction Based on Health Factor Extraction and the IDBO-BiLSTM Model
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    摘要:

    目的 锂离子动力电池的健康状态(SOH)估计是当前研究领域的重要课题之一。 对于确保电动汽车的正常 运行和维护锂电池的寿命,精确的 SOH 估计至关重要。 针对锂电池 SOH 预测的研究中,研究者们面临的健康特征 选取困难、预测精度不高等挑战,拟构建一种基于健康因子提取与 IDBO-BiLSTM 模型的锂电池 SOH 预测模型。 方法 首先从 NASA 数据中提取健康因子,运用 PCA 算法对特征进行降维融合;接着用 CEEMDAN 算法将融合特征 分解成多个模态分量,并筛选出有效模态;随后利用改进蜣螂优化算法(IDBO)对 BiLSTM 模型参数寻优,得到最优 BiLSTM 模型;最后将提取的有效特征作为该模型的输入进行 SOH 预测,并且为了表现该方法的适用性,利用 NASA 数据集中三组电池进行对比实验。 结果 基于 IDBO-BiLSTM 的预测模型在估计 SOH 方面表现出色,其预测 的均方误差值(MSE)均在 4e-4 以下,拟合度(R 2 )在 0. 98 以上。 结论 此方法有效验证了其在提高锂电池健康状 态预测精度方面的优越性和可行性。

    Abstract:

    Objective The estimation of the state of health SOH of lithium-ion power batteries is an important research topic in the current field. Accurate SOH estimation is crucial for ensuring the normal operation of electric vehicles and maintaining the lifespan of lithium batteries. To address the challenges in lithium battery SOH prediction such as difficulty in selecting health features and low prediction accuracy a lithium battery SOH prediction model based on health factor extraction and the IDBO-BiLSTM model is proposed. Methods First health factors were extracted from NASA data and principal component analysis PCA was applied to reduce dimensionality and fuse features. Next the fused features were decomposed into multiple modal components using the complete ensemble empirical mode decomposition with adaptive noise CEEMDAN from which the effective modes were selected. Subsequently an improved dung beetle optimizer IDBO was used to optimize the parameters of the BiLSTM model to obtain the optimal BiLSTM model. Finally the extracted effective features were fed into the optimal BiLSTM model for SOH prediction. To demonstrate the applicability of the method comparative experiments were conducted using three battery datasets from NASA. Results The results show that the IDBO-BiLSTM-based prediction model performs well in SOH estimation achieving a mean squared error MSE below 4e-4 and a coefficient of determination R 2 above 0. 98 in all test cases.Conclusion The proposed model demonstrates superior performance and feasibility in improving the accuracy of lithium battery SOH prediction.

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徐云涛,张 梅,司梦婷.基于健康因子提取和 IDBO-BiLSTM 模型的锂电池 SOH 预测[J].重庆工商大学学报(自然科学版),2026,43(4):126-134
XU Yuntao ZHANG Mei SI Mengting. Lithium Battery SOH Prediction Based on Health Factor Extraction and the IDBO-BiLSTM Model[J]. Journal of Chongqing Technology and Business University(Natural Science Edition),2026,43(4):126-134

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  • 在线发布日期: 2026-07-07
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