A Hybrid Physics-Driven Neural Network Force Field for Liquid Electrolytes
Junmin Chen, Qian Gao, Yange Lin, Miaofei Huang, Zheng Cheng, Wei Feng, Jianxing Huang, Bo Wang, Kuang Yu

TL;DR
This paper presents a hybrid physics-driven and data-driven neural network force field, PhyNEO-Electrolyte, designed for liquid electrolytes in batteries, improving data efficiency and transferability for electrolyte design.
Contribution
It introduces a scalable, bottom-up force field construction method that combines physics-based insights with machine learning, enhancing prediction accuracy and data efficiency.
Findings
Achieves accurate bulk property predictions with less training data.
Significantly improves transferability and stability of ML-based force fields.
Enables broader exploration of electrolyte chemical space.
Abstract
Electrolyte design plays an important role in the development of lithium-ion batteries and sodium-ion batteries. Battery electrolytes feature a large design space composed of different solvents, additives, and salts, which is difficult to explore experimentally. High-fidelity molecular simulation can accurately predict the bulk properties of electrolytes by employing accurate potential energy surfaces, thus guiding the molecule and formula engineering. At present, the overly simplified classic force fields rely heavily on experimental data for fine-tuning, thus its predictive power on microscopic level is under question. In contrast, the newly emerged machine learning interatomic potential (MLIP) can accurately reproduce the ab initio data, demonstrating excellent fitting ability. However, it is still haunted by problems such as low transferrability, insufficient stability in the…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Battery Materials and Technologies · Block Copolymer Self-Assembly
