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Abstract
Predictive materials synthesis is the primary bottleneck in realizing functional and quantum materials. Strategies for synthesis of promising materials are currently identified by time-consuming trial and error and there are no known predictive schemes to design synthesis parameters for materials. We use offline reinforcement learning (RL) to predict optimal synthesis schedules, i.e., a time-sequence of reaction conditions like temperatures and concentrations, for the synthesis of semiconducting monolayer MoS2 using chemical vapor deposition. The RL agent, trained on 10,000 computational synthesis simulations, learned threshold temperatures and chemical potentials for onset of chemical reactions and predicted previously unknown synthesis schedules that produce well-sulfidized crystalline, phase-pure MoS2. The model can be extended to multi-task objectives such as predicting profiles for synthesis of complex structures including multi-phase heterostructures and can predict long-time behavior of reacting systems, far beyond the domain of molecular dynamics simulations, making these predictions directly relevant to experimental synthesis.
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1 Argonne National Laboratory, Argonne Leadership Computing Facility, Argonne, USA (GRID:grid.187073.a) (ISNI:0000 0001 1939 4845)
2 University of Southern California, Collaboratory for Advanced Computing and Simulations, Los Angeles, USA (GRID:grid.42505.36) (ISNI:0000 0001 2156 6853); University of Southern California, Department of Chemical Engineering & Materials Science, Los Angeles, USA (GRID:grid.42505.36) (ISNI:0000 0001 2156 6853)
3 University of Southern California, Collaboratory for Advanced Computing and Simulations, Los Angeles, USA (GRID:grid.42505.36) (ISNI:0000 0001 2156 6853); University of Southern California, Department of Chemical Engineering & Materials Science, Los Angeles, USA (GRID:grid.42505.36) (ISNI:0000 0001 2156 6853); University of Southern California, Department of Physics & Astronomy, Los Angeles, USA (GRID:grid.42505.36) (ISNI:0000 0001 2156 6853); University of Southern California, Department of Computer Science, Los Angeles, USA (GRID:grid.42505.36) (ISNI:0000 0001 2156 6853)