Litcius/Paper detail

Reaction coordinate flows for model reduction of molecular kinetics

Hao Wu, Frank Noé

2024The Journal of Chemical Physics13 citationsDOI

Abstract

In this work, we introduce a flow based machine learning approach called reaction coordinate (RC) flow for the discovery of low-dimensional kinetic models of molecular systems. The RC flow utilizes a normalizing flow to design the coordinate transformation and a Brownian dynamics model to approximate the kinetics of RC, where all model parameters can be estimated in a data-driven manner. In contrast to existing model reduction methods for molecular kinetics, RC flow offers a trainable and tractable model of reduced kinetics in continuous time and space due to the invertibility of the normalizing flow. Furthermore, the Brownian dynamics-based reduced kinetic model investigated in this work yields a readily discernible representation of metastable states within the phase space of the molecular system. Numerical experiments demonstrate how effectively the proposed method discovers interpretable and accurate low-dimensional representations of given full-state kinetics from simulations.

Topics & Concepts

Brownian dynamicsKineticsFlow (mathematics)MetastabilityRepresentation (politics)Reaction coordinateReduction (mathematics)Work (physics)Coordinate systemKinetic energyStatistical physicsPhase spaceCoordinate spaceThermodynamicsBiological systemBrownian motionMathematicsMechanicsChemistryPhysicsComputational chemistryClassical mechanicsGeometryLawOrganic chemistryStatisticsPolitical sciencePoliticsBiologyModel Reduction and Neural NetworksMachine Learning in Materials ScienceProtein Structure and Dynamics