Intrinsic map dynamics exploration for uncharted effective free-energy landscapes.
Eliodoro ChiavazzoRoberto CovinoRonald R CoifmanC William GearAnastasia S GeorgiouGerhard HummerIoannis G KevrekidisPublished in: Proceedings of the National Academy of Sciences of the United States of America (2017)
We describe and implement a computer-assisted approach for accelerating the exploration of uncharted effective free-energy surfaces (FESs). More generally, the aim is the extraction of coarse-grained, macroscopic information from stochastic or atomistic simulations, such as molecular dynamics (MD). The approach functionally links the MD simulator with nonlinear manifold learning techniques. The added value comes from biasing the simulator toward unexplored phase-space regions by exploiting the smoothness of the gradually revealed intrinsic low-dimensional geometry of the FES.