Suyeon Ju, Jinmu You, Gijin Kim, Yutack Park, Hyungmin An and Seungwu Han
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引用次数: 0
摘要
实现锂离子电池更高的工作电压、更快的充电速度和更宽的温度范围需要电解质工程的进步。然而,优化溶剂、盐和添加剂组合的复杂性限制了液体电解质的实验和计算筛选方法的有效性。最近,预训练的通用机器学习原子间势(MLIPs)已成为高精度和高效率的复杂化学空间计算探索的有前途的工具。在这项研究中,我们评估了最先进的等变预训练MLIP (SevenNet-0)在预测液体电解质的关键性质(包括溶剂化行为、密度和离子输运)方面的性能。为了评估其对广泛材料筛选的适用性,我们考虑了一个包含20种溶剂的数据集。虽然SevenNet-0主要是对无机化合物进行训练,但它对液体电解质性质的预测与实验和从头算数据吻合得很好。然而,发现了系统误差,特别是在预测液体电解质密度方面。为了解决这一限制,我们对seven - net -0进行了微调,与开发定制模型相比,大大降低了计算成本,提高了精度。对训练集的分析表明,该模型通过泛化整个化学空间而不是记忆训练过的配置来实现其准确性。这项工作突出了seven - net -0作为未来液体电解质系统工程的强大工具的潜力。
Application of pretrained universal machine-learning interatomic potential for physicochemical simulation of liquid electrolytes in Li-ion batteries†
Achieving higher operational voltages, faster charging, and broader temperature ranges for Li-ion batteries necessitates advancements in electrolyte engineering. However, the complexity of optimizing combinations of solvents, salts, and additives has limited the effectiveness of both experimental and computational screening methods for liquid electrolytes. Recently, pretrained universal machine-learning interatomic potentials (MLIPs) have emerged as promising tools for computational exploration of complex chemical spaces with high accuracy and efficiency. In this study, we evaluated the performance of the state-of-the-art equivariant pretrained MLIP, SevenNet-0, in predicting key properties of liquid electrolytes, including solvation behavior, density, and ion transport. To assess its suitability for extensive material screening, we considered a dataset comprising 20 solvents. Although SevenNet-0 was predominantly trained on inorganic compounds, its predictions for the properties of liquid electrolytes showed good agreement with experimental and ab initio data. However, systematic errors were identified, particularly in the predicted density of liquid electrolytes. To address this limitation, we fine-tuned SevenNet-0, achieving improved accuracy at a significantly reduced computational cost compared to developing bespoke models. Analysis of the training set suggested that the model achieved its accuracy by generalizing across the chemical space rather than memorizing trained configurations. This work highlights the potential of SevenNet-0 as a powerful tool for future engineering of liquid electrolyte systems.