Monte Carlo Simulation of Interacting Polymer Systems. I. Behavior of Ring Chain Interacting via Soft-Core Potential
نویسندگان
چکیده
منابع مشابه
Monte Carlo methods for strongly interacting polymer systems
Markov chain Monte Carlo methods often su er from slow convergence problems when applied to strongly interacting polymer systems. One way to alleviate these problems is to run several Markov chains in parallel, with the di erent Markov chains being designed to sample at di erent temperatures, and with suitable swapping of con gurations between pairs of chains. This method was rst invented by Ge...
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ژورنال
عنوان ژورنال: Polymer Journal
سال: 1982
ISSN: 0032-3896,1349-0540
DOI: 10.1295/polymj.14.931