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.Coarse-graining or model reduction is a term describing a range of approaches used to extend the timescale of molecular simulations by reducing the number of degrees of freedom. In the context of molecular simulation, standard coarse-graining approaches approximate the potential of mean force and use this to drive an effective Markovian model. To gain insight into this process, the simple case of a quadratic energy is studied in an overdamped setting. A hierarchy of reduced models is derived and analyzed, and the merits of these different coarse-graining approaches are discussed. In particular, while standard recipes for model reduction accurately capture static equilibrium statistics, it is shown that dynamical statistics, such as the mean-squared displacement, display systematic error, even when a system exhibits large timescale separation. In the linear setting studied, it is demonstrated both analytically and numerically that such models can be augmented in a simple way to better capture dynamical statistics.Keywordsreduced-order modelingMarkovian approximate dynamicsautocovariance errorprogressive coarse-grainingMSC codes60H1034F05
Hudson et al. (Tue,) studied this question.
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