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Accelerating Copolymer Inverse Design using AI Gaming algorithm

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Academic paper
1

Academic Paper attributes

arXiv ID
2006.034131
arXiv Classification
Physics
Physics
1
Publication URL
arxiv.org/pdf/2006.0...13.pdf1
Publisher
ArXiv
ArXiv
1
DOI
doi.org/10.48550/ar...06.034131
Paid/Free
Free1
Academic Discipline
Physics
Physics
1
Mesoscopic physics
Mesoscopic physics
1
Soft matter
Soft matter
1
Materials science
Materials science
1
Condensed matter physics
Condensed matter physics
1
Submission Date
June 1, 2020
2
Author Names
Subramanian K R S Sankaranarayanan1
Tarak K Patra1
Troy D. Loeffler1
Paper abstract

There exists a broad class of sequencing problems, for example, in proteins and polymers that can be formulated as a heuristic search algorithm that involve decision making akin to a computer game. AI gaming algorithms such as Monte Carlo tree search (MCTS) gained prominence after their exemplary performance in the computer Go game and are decision trees aimed at identifying the path (moves) that should be taken by the policy to reach the final winning or optimal solution. Major challenges in inverse sequencing problems are that the materials search space is extremely vast and property evaluation for each sequence is computationally demanding. Reaching an optimal solution by minimizing the total number of evaluations in a given design cycle is therefore highly desirable. We demonstrate that one can adopt this approach for solving the sequencing problem by developing and growing a decision tree, where each node in the tree is a candidate sequence whose fitness is directly evaluated by molecular simulations. We interface MCTS with MD simulations and use a representative example of designing a copolymer compatibilizer, where the goal is to identify sequence specific copolymers that lead to zero interfacial energy between two immiscible homopolymers. We apply the MCTS algorithm to polymer chain lengths varying from 10-mer to 30-mer, wherein the overall search space varies from 210 (1024) to 230 (~1 billion). In each case, we identify a target sequence that leads to zero interfacial energy within a few hundred evaluations demonstrating the scalability and efficiency of MCTS in exploring practical materials design problems with exceedingly vast chemical/material search space. Our MCTS-MD framework can be easily extended to several other polymer and protein inverse design problems, in particular, for cases where sequence-property data is either unavailable and/or is resource intensive.

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