Capturing the Vibrational Dynamics of Acene-Based Molecular Crystals with Machine Learning
ORAL
Abstract
In this work, we construct and test MLIPs based on MACE architecture [1], aiming for accurate modeling of vibrational dynamics in acene-based molecular crystals. We utilize a committee-based active-learning approach [2] for training and benchmark the MLIP against on-the-fly machine learning force field method [3]. By propagating the uncertainty from the committee, we further quantify training-related errors in the vibrational density of states. Furthermore, we explore the ability of MLIP to generalize, both interpolatively and extrapolatively, by systematically applying different active-learning strategies across several acene members. Finally, we test the validity of the generalized MLIP for a host-guest system relevant to quantum technologies [4].
[1] Adv. Neural Inf. Process. 35, 11423-11436 (2022)
[2] J. Chem. Phys. 153, 104105 (2020)
[3] Phys. Rev. B 100, 014105 (2019)
[4] Phys. Rev. Lett. 127, 123603 (2021)
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Publication: Planned Paper by 12/2024 Machine Learning Force Fields for Acene-Based Molecular Crystal: Application to Host-Guest System
Presenters
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Burak Gurlek
Max Planck Institute for the Structure & Dynamics of Matter
Authors
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Burak Gurlek
Max Planck Institute for the Structure & Dynamics of Matter
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Shubham Sharma
Max Planck Institute for the Structure & Dynamics of Matter
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Paolo Lazzaroni
Max Planck Institute for the Structure & Dynamics of Matter
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Angel Rubio
Max Planck Institute for the Structure & Dynamics of Matter, Max Planck Institute for the Structure & Dynamics of Matter; Flatiron Institute's Center for Computational Quantum Physics (CCQ) & Initiative for Computational Catalysis (ICC)
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Mariana Rossi
Max Planck Institute for the Structure & Dynamics of Matter