Accelerated Design of Block Copolymers: An Unbiased Exploration Strategy via Fusion of Molecular Dynamics Simulations and Machine Learning
Jan Michael Y. Carrillo, Vijith P, Tarak K. Patra, Zhan Chen, Thomas, P. Russell, Subramanian KRS Sankaranarayanan, Bobby G. Sumpter, Rohit Batra

TL;DR
This paper introduces a novel approach combining molecular dynamics simulations and machine learning to efficiently explore and optimize star block copolymer designs for reduced interfacial tension, facilitating advanced material development.
Contribution
It presents an unbiased, integrated strategy using reinforcement learning and MD simulations to identify optimal s-BCP architectures, advancing design capabilities beyond traditional methods.
Findings
Validated MCTS for small- and medium-sized s-BCPs
Successfully identified copolymer sequences for large s-BCPs
Uncovered structural factors influencing interfacial tension
Abstract
Star block copolymers (s-BCPs) have potential applications as novel surfactants or amphiphiles for emulsification, compatbilization, chemical transformations and separations. s-BCPs are star-shaped macromolecules comprised of linear chains of different chemical blocks (e.g., solvophilic and solvophobic blocks) that are covalently joined at one junction point. Various parameters of these macromolecules can be tuned to obtain desired surface properties, including the number of arms, composition of the arms, and the degree-of-polymerization of the blocks (or the length of the arm). This makes identification of the optimal s-BCP design highly non-trivial as the total number of plausible s-BCPs architectures is experimentally or computationally intractable. In this work, we use molecular dynamics (MD) simulations coupled with reinforcement learning based Monte Carlo tree search (MCTS) to…
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Taxonomy
TopicsBlock Copolymer Self-Assembly · Advanced Polymer Synthesis and Characterization · Machine Learning in Materials Science
