A Spin-dependent Machine Learning Framework for Transition Metal Oxide Battery Cathode Materials
Taiping Hu, Teng Yang, Jianchuan Liu, Bin Deng, Zhengtao Huang, Xiaoxu, Wang, Fuzhi Dai, Guobing Zhou, Fangjia Fu, Ping Tuo, Ben Xu, Shenzhen Xu

TL;DR
This paper introduces a spin-aware machine learning framework for modeling transition metal oxide cathode materials, improving accuracy by incorporating atomic spins into the descriptor, enabling better training and prediction of complex battery materials.
Contribution
The authors develop a novel deep potential-based model that includes atomic spins, addressing spin state convergence issues in training ML potentials for TM oxide cathodes.
Findings
Accurately describes potential energies of various cathode materials.
Allows use of all ab initio results regardless of spin state.
Facilitates efficient training of ML models for complex TM oxides.
Abstract
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…
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Taxonomy
TopicsMachine Learning in Materials Science · Electron and X-Ray Spectroscopy Techniques · Advancements in Battery Materials
