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Efficient configurational-bias Monte-Carlo simulations of chain molecules with 'swarms' of trial configurations

机译:高效配置 - 偏置Monte-Carlo与“群体”的试验配置的链分子模拟

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摘要

The pruned-enriched Rosenbluth method (PERM) is a popular and powerful Monte-Carlo technique for sampling flexible chain polymers of substantial length. In its original form, however, the method cannot be applied in Markov-chain Monte-Carlo schemes, which has rendered PERM unsuited for systems that consist of many chains. The current work builds on the configurational-bias Monte-Carlo (CBMC) method. The growth of a large set of trial configurations in each move is governed by simultaneous pruning and enrichment events, which tend to replace configurations with a low statistical weight by clones of stronger configurations. In simulations of dense brushes of flexible chains, a gain in efficiency of at least three orders of magnitude is observed with respect to CBMC and one order of magnitude with respect to recoil-growth approaches. Moreover, meaningful statistics can be collected from all trial configurations through the so-called "waste-recycling" Monte Carlo scheme. Published by AIP Publishing.
机译:富含修剪的Rosenbluth方法(PERM)是一种流行且强大的Monte-Carlo技术,用于采样大大长度的柔性链聚合物。然而,在其原始形式中,该方法不能应用于Markov-Chain Monte-Carlo方案,这使得允许允许的渗透不合适的系统,这是由许多链组成的系统。目前的工作构建在配置 - 偏置Monte-Carlo(CBMC)方法上。每种举动中大量试用配置的增长是通过同时修剪和富集事件来控制,这倾向于通过更强的配置的克隆更换具有低统计重量的配置。在柔性链的致密刷子的模拟中,相对于CBMC观察到至少三个数量级的效率的增益,以及相对于反冲生长方法的一个级。此外,可以通过所谓的“废物回收”蒙特卡罗方案从所有试用配置收集有意义的统计数据。通过AIP发布发布。

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