溶解度
工作流程
计算机科学
氧化还原
吞吐量
电解质
纳米技术
组合化学
化学
材料科学
有机化学
数据库
电极
电信
物理化学
无线
作者
Juran Noh,Hieu A. Doan,Heather Job,Lily A. Robertson,Lu Zhang,Rajeev S. Assary,Karl T. Mueller,Vijayakumar Murugesan,Yangang Liang
标识
DOI:10.1038/s41467-024-47070-5
摘要
Abstract Solubility of redox-active molecules is an important determining factor of the energy density in redox flow batteries. However, the advancement of electrolyte materials discovery has been constrained by the absence of extensive experimental solubility datasets, which are crucial for leveraging data-driven methodologies. In this study, we design and investigate a highly automated workflow that synergizes a high-throughput experimentation platform with a state-of-the-art active learning algorithm to significantly enhance the solubility of redox-active molecules in organic solvents. Our platform identifies multiple solvents that achieve a remarkable solubility threshold exceeding 6.20 M for the archetype redox-active molecule, 2,1,3-benzothiadiazole, from a comprehensive library of more than 2000 potential solvents. Significantly, our integrated strategy necessitates solubility assessments for fewer than 10% of these candidates, underscoring the efficiency of our approach. Our results also show that binary solvent mixtures, particularly those incorporating 1,4-dioxane, are instrumental in boosting the solubility of 2,1,3-benzothiadiazole. Beyond designing an efficient workflow for developing high-performance redox flow batteries, our machine learning-guided high-throughput robotic platform presents a robust and general approach for expedited discovery of functional materials.
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