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Enhanced Sampling Algorithms

In biomolecular systems (especially all-atom models) with many degrees of freedom such as proteins and nucleic acids, there exist an astronomically large number of local-minimum-energy states. Conventional simulations in the canonical ensemble are of little use, because they tend to get trapped in states of these energy local minima. Enhanced conformational sampling techniques are thus in great demand. A simulation in generalized ensemble performs a random walk in potential energy space and can overcome this difficulty. From only one simulation run, one can obtain canonical-ensemble averages of physical quantities as functions of temperature by the single-histogram and/or multiple-histogram reweighting techniques. In this article we review uses of the generalized-ensemble algorithms in biomolecular systems. Three well-known methods, namely, multicanonical algorithm, simulated tempering, and replica-exchange method, are described first. Both Monte Carlo and molecular dynamics versions of the algorithms are given. We then present various extensions of these three generalized-ensemble algorithms. The effectiveness of the methods is tested with short peptide and protein systems.

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Related contextRelated contextRelated contextCo-authorshipCo-authorshipCo-authorshipRelated contextRelated contextRelated contextAuthorshipAuthorshipAuthorshipTopic signalTopic signalTopic signalTopic signalWEnhanced Sampling Algorithmspreprint / 2010AAyori MitsutakeResearcherAYoshiharu MoriResearcherAYuko OkamotoResearcherTphysics.comp-ph4125 worksTcond-mat.stat-mech6570 worksTphysics.chem-ph3385 worksTBiological Physics1983 works
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Enhanced Sampling Algorithms

preprint / 2010

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