Statistically Optimal Force Aggregation for Coarse-Graining Molecular Dynamics (2302.07071v1)
Abstract: Machine-learned coarse-grained (CG) models have the potential for simulating large molecular complexes beyond what is possible with atomistic molecular dynamics. However, training accurate CG models remains a challenge. A widely used methodology for learning CG force-fields maps forces from all-atom molecular dynamics to the CG representation and matches them with a CG force-field on average. We show that there is flexibility in how to map all-atom forces to the CG representation, and that the most commonly used mapping methods are statistically inefficient and potentially even incorrect in the presence of constraints in the all-atom simulation. We define an optimization statement for force mappings and demonstrate that substantially improved CG force-fields can be learned from the same simulation data when using optimized force maps. The method is demonstrated on the miniproteins Chignolin and Tryptophan Cage and published as open-source code.
- Andreas Krämer (18 papers)
- Aleksander P. Durumeric (1 paper)
- Nicholas E. Charron (7 papers)
- Yaoyi Chen (7 papers)
- Cecilia Clementi (30 papers)
- Frank Noé (107 papers)