Moazzenzadeh Mahta, Samadpour Mahmoud
Department of Physics, K. N. Toosi University of Technology, Tehran, Iran.
Sci Rep. 2025 Apr 1;15(1):11176. doi: 10.1038/s41598-025-95906-x.
In recent years, the utilization of silicon, rather than graphite, has emerged as a compelling alternative for anode materials in Li-ion batteries, promising higher energy density. However, a significant challenge lies in the degradation of silicon anodes due to volume fluctuations during charge and discharge cycles, resulting in a rapid decline in battery capacity. To tackle this issue, researchers are investigating the integration of self-healing polymers as binding agents in the anode structure through trial-and-error approaches, which is both time-consuming and expensive. Overcoming practical experimentation challenges, this study delves self-healing polymers through machine learning methods as a more practical approach. The role of structural features and functional groups within these polymers in maintaining anode integrity and prolonging battery capacity across multiple charge cycles were explored by utilization of random forest, ridge algorithms, support vector machines, and neural networks. Notably, the neural networks algorithm exhibits superior performance, achieving 96% accuracy for test data. SHAP analysis revealed that ether functional groups, donor and acceptor hydrogen bonds, and dual-interconnected rings have the most positive impact on preserving battery capacity. In this study, we introduce a set of design principles for selecting functional groups aimed at enhancing the self-healing capabilities and prolonging the lifespan of Si-based LIBs. This study has the potential to pave the way for the development of more efficient and enduring Li-ion batteries.
近年来,使用硅而非石墨作为锂离子电池负极材料已成为一种极具吸引力的替代方案,有望实现更高的能量密度。然而,一个重大挑战在于,硅负极在充放电循环过程中会因体积波动而退化,导致电池容量迅速下降。为解决这一问题,研究人员正在通过反复试验的方法研究将自愈聚合物作为粘结剂集成到负极结构中,这种方法既耗时又昂贵。本研究克服了实际实验挑战,通过机器学习方法深入研究自愈聚合物,作为一种更实用的方法。利用随机森林、岭算法、支持向量机和神经网络,探索了这些聚合物中的结构特征和官能团在维持负极完整性以及在多个充电循环中延长电池容量方面的作用。值得注意的是,神经网络算法表现出卓越性能,对测试数据的准确率达到了96%。SHAP分析表明,醚官能团、供体和受体氢键以及双互连环对保持电池容量具有最积极的影响。在本研究中,我们引入了一套选择官能团的设计原则,旨在增强基于硅的锂离子电池的自愈能力并延长其使用寿命。这项研究有可能为开发更高效、更耐用的锂离子电池铺平道路。