Chen Guangwei
Beijing Laboratory of Smart Environmental Protection, Beijing Institute of Artificial Intelligence, School of Information Science and Technology, Beijing University of Technology, No. 100 Pingleyuan, Chaoyang District, Beijing, 100124, China.
Sci Rep. 2025 Feb 19;15(1):6010. doi: 10.1038/s41598-025-89727-1.
The residual life is one of important performance of lithium-ion battery. Before the life prediction, the SoH (State of Health) data of lithium-ion battery are necessary to be available. In order to improve the accuracy of SoH estimation, electrolyte dynamics is added to the single particle model of lithium-ion battery in this paper. Then, a novel Pade approximation and least squares method are employed to estimate the SoH of lithium-ion batteries. After that, the mapping particle filter is applied to forecast the battery life. MPF can greatly improve the diversity of particles and avoid the operation of resampling. This is the first time that the mapping particle filter has been used to forecast the residual life of lithium-ion batteries. Finally, the experimental data from National Aeronautics and Space Administration is used to prove that the mapping particle filter has a higher precision of prediction than the standard particle filter.
剩余寿命是锂离子电池的重要性能之一。在进行寿命预测之前,需要获取锂离子电池的健康状态(SoH)数据。为了提高SoH估计的准确性,本文将电解质动力学添加到锂离子电池的单粒子模型中。然后,采用一种新颖的帕德近似和最小二乘法来估计锂离子电池的SoH。之后,应用映射粒子滤波器来预测电池寿命。映射粒子滤波器可以极大地提高粒子的多样性并避免重采样操作。这是首次将映射粒子滤波器用于预测锂离子电池的剩余寿命。最后,利用美国国家航空航天局的实验数据证明,映射粒子滤波器比标准粒子滤波器具有更高的预测精度。