Abstract
The design and synthesis of functional polymers, aimed at targeted properties through specific structures, has 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 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 hours, Polybot autonomously synthesized electrochromic polymers with targeted, 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 electrochromic polymer informatics database has also been created to foster knowledge exchange.
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Polybot database: Electrochromic polymers
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The database and prediction tool for electrochromic polymers.
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