共单体
电致变色
工作流程
共聚物
聚合物
钥匙(锁)
化学
纳米技术
反向
计算机科学
合理设计
尺寸
非线性系统
表征(材料科学)
线性化
吸收(声学)
芳烯
作者
Yukun Wu,Aikaterini Vriza,Doga Ozgulbas,Rafael Vescovi,Jia-ning Zhou,Zhiyang Wang,ShiYu Hu,Yuepeng Zhang,Qiaomu Yang,Anna M. Österholm,John R. Reynolds,Subramanian K. R. S. Sankaranarayanan,Maria K. Y. Chan,Ian T. Foster,Jianguo Mei,Henry Chan,Jie Xu
摘要
The design and synthesis of functional polymers, aimed at targeted properties through specific structures, have long been challenged by their complex and often nonlinear structure-property relationships. Key processes, including knowledge accumulation for predictive design and experimental refinement and validation, are traditionally labor-insensitive and time-consuming, making it difficult to balance accuracy and efficiency. Here, we introduce an accelerated, autonomous system for the on-demand synthesis of electronic polymers that achieves the desired electrochromic functionality with high accuracy and efficiency. Our approach leverages large language model-assisted data mining, a physics-informed copolymer machine learning model, and an AI-driven autonomous robotic workflow in the Polybot lab. Within 72 h, Polybot autonomously synthesized electrochromic polymers (ECPs) with targeted, previously-unreported color values, including green polymers with specific absorption profiles, precisely fine-tuning copolymer structures with a 5% step size in comonomer composition within a three-monomer system. A publicly accessible ECP informatics database has also been created to foster knowledge exchange.
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