The article introduces the GradNav algorithm to accelerate the reconstruction of potential energy surfaces by efficiently navigating across barriers. It employs short simulation runs from updated starting points to explore new regions and escape deep potential wells. The algorithm's performance is evaluated using Langevin dynamics and molecular dynamics simulations, demonstrating improved exploration capabilities and reduced reliance on initial conditions. By systematically optimizing starting points based on observation density gradients, GradNav offers a cost-effective and physically consistent strategy for navigating energy surfaces. Machine learning techniques are also discussed for modeling atomic systems, showcasing the feasibility of applying observation-driven exploration within latent space.
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by Janghoon Ock... klokken arxiv.org 03-18-2024
https://arxiv.org/pdf/2403.10358.pdfDypere Spørsmål