作者
Taiping Hu, Teng Yang, Jianchuan Liu, Bin Deng, Zhengtao Huang, Xiaoxu Wang, Fuzhi Dai, Guobing Zhou, Fangjia Fu, Ping Tuo, Ben Xu, Shenzhen Xu
发表日期
2023/9/3
期刊
arXiv preprint arXiv:2309.01146
简介
Owing to the trade-off between the accuracy and efficiency, machine-learning-potentials (MLPs) have been widely applied in the battery materials science, enabling atomic-level dynamics description for various critical processes. However, the challenge arises when dealing with complex transition metal (TM) oxide cathode materials, as multiple possibilities of d-orbital electrons localization often lead to convergence to different spin states (or equivalently local minimums with respect to the spin configurations) after ab initio self-consistent-field calculations, which causes a significant obstacle for training MLPs of cathode materials. In this work, we introduce a solution by incorporating an additional feature - atomic spins - into the descriptor, based on the pristine deep potential (DP) model, to address the above issue by distinguishing different spin states of TM ions. We demonstrate that our proposed scheme provides accurate descriptions for the potential energies of a variety of representative cathode materials, including the traditional LiTMO (TM=Ni, Co, Mn, =0.5 and 1.0), Li-Ni anti-sites in LiNiO (=0.5 and 1.0), cobalt-free high-nickel LiNiMnO (=1.5 and 0.5), and even a ternary cathode material LiNiCoMnO (=1.0 and 0.67). We highlight that our approach allows the utilization of all ab initio results as a training dataset, regardless of the system being in a spin ground state or not. Overall, our proposed approach paves the way for efficiently training MLPs for complex TM oxide cathode materials.
学术搜索中的文章
T Hu, T Yang, J Liu, B Deng, Z Huang, X Wang, F Dai… - arXiv preprint arXiv:2309.01146, 2023