Gao Yu-Chen, Yao Nan, Chen Xiang, Yu Legeng, Zhang Rui, Zhang Qiang
Beijing Key Laboratory of Green Chemical Reaction Engineering and Technology, Department of Chemical Engineering, Tsinghua University, Beijing 100084, China.
Beijing Huairou Laboratory, Beijing 101400, China.
J Am Chem Soc. 2023 Nov 1;145(43):23764-23770. doi: 10.1021/jacs.3c08346. Epub 2023 Sep 13.
Lithium (Li) metal batteries (LMBs) are regarded as one of the most promising energy storage systems due to their ultrahigh theoretical energy density. However, the high reactivity of the Li anodes leads to the decomposition of the electrolytes, presenting a huge impediment to the practical application of LMBs. The routine trial-and-error methods are inefficient in designing highly stable solvent molecules for the Li metal anode. Herein, a data-driven approach is proposed to probe the origin of the reductive stability of solvents and accelerate the molecular design for advanced electrolytes. A large database of potential solvent molecules is first constructed using a graph theory-based algorithm and then comprehensively investigated by both first-principles calculations and machine learning (ML) methods. The reductive stability of 99% of the electrolytes decreases under the dominance of ion-solvent complexes, according to the analysis of the lowest unoccupied molecular orbital (LUMO). The LUMO energy level is related to the binding energy, bond length, and orbital ratio factors. An interpretable ML method based on Shapley additive explanations identifies the dipole moment and molecular radius as the most critical descriptors affecting the reductive stability of coordinated solvents. This work not only affords fruitful data-driven insight into the ion-solvent chemistry but also unveils the critical molecular descriptors in regulating the solvent's reductive stability, which accelerates the rational design of advanced electrolyte molecules for next-generation Li batteries.
锂(Li)金属电池(LMBs)因其超高的理论能量密度而被视为最具前景的储能系统之一。然而,锂负极的高反应活性导致电解质分解,这对LMBs的实际应用造成了巨大阻碍。常规的试错方法在设计用于锂金属负极的高度稳定溶剂分子方面效率低下。在此,提出了一种数据驱动的方法来探究溶剂还原稳定性的起源,并加速先进电解质的分子设计。首先使用基于图论的算法构建一个潜在溶剂分子的大型数据库,然后通过第一性原理计算和机器学习(ML)方法进行全面研究。根据最低未占分子轨道(LUMO)的分析,在离子-溶剂络合物的主导下,99%的电解质的还原稳定性降低。LUMO能级与结合能、键长和轨道比因子有关。基于Shapley加法解释的可解释ML方法确定偶极矩和分子半径是影响配位溶剂还原稳定性的最关键描述符。这项工作不仅为离子-溶剂化学提供了丰富的数据驱动见解,还揭示了调节溶剂还原稳定性的关键分子描述符,从而加速了下一代锂电池先进电解质分子的合理设计。