Accelerated Discovery of High-Performance Polyamines for Solid-State Direct CO$_2$ Capture via Efficient Simulations and Bayesian Optimization

Published: 20 Sept 2025, Last Modified: 05 Nov 2025AI4Mat-NeurIPS-2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Direct air capture (DAC); Polymer design, CO₂ adsorption capacity, Bayesian optimization
TL;DR: Bayesian optimization for accelerated identification of solid amine-based sorbent with optimized CO$_2$ adsorption capacity.
Abstract: Solid amine-based sorbents are a leading approach for direct air capture (DAC) of CO$_2$, owing to their energy efficiency and scalability. To enable data-driven discovery of improved sorbents, we developed a computational framework that integrates fragment-based polymer generation with Density Functional Theory (DFT), molecular dynamics (MD) relaxations, and grand canonical Monte Carlo (GCMC) sampling. This workflow provides accurate yet efficient estimates of CO$_2$ uptake while capturing key structure-property relationships across a diverse library of polymers assembled from well-characterized polyamines for DAC. Leveraging such adsorption data, we investigated the application of the Bayesian optimization (BO) strategy in accelerating the discovery process of high-performing polymer candidates with our developed simulation workflow. Computational experimental results demonstrated the sensitivity of this discovery process to the choice of molecular representation in the surrogate models of BO, especially in a small computational budget scenario, where polymer-specific pre-training provided an early advantage over models trained for general chemical space.
Submission Track: Paper Track (Short Paper)
Submission Category: AI-Guided Design + Automated Synthesis
Institution Location: {Atlanta, USA}, {College Station, USA}
Submission Number: 120
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