Monte Carlo simulation of lattice models for macromolecules

Kurt Kremer , Kurt Binder
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引用次数: 282

Abstract

This article reviews various methods for the Monte Carlo simulation of models for long flexible polymer chains, namely self-avoiding random walks at various lattices. This problem belongs to the classical applications of Monte Carlo methods since more than thirty years, and numerous techniques have been devised. Neverthless, there are still many open questions, relating to the validity of the algorithms in principle, as well as to the accuracy of the results that can be obtained in practice. This review presents a brief introduction to these problems, discusses the basic ideas on which the various algorithms are based as well as their limitations, and describes a few typical physical applications. Most emphasis is on the simulation of single, isolated chains representing macromolecules in dilute solution, but the simulation of many-chain systems is also dealt with briefly. An outlook on related problems (simulation of off-lattice chains, branched instead of linear polymers, etc.) is also given, as well as discussion of prospects for future work.

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大分子晶格模型的蒙特卡罗模拟
本文综述了柔性聚合物长链模型蒙特卡罗模拟的各种方法,即在各种晶格上的自避免随机游走。这个问题属于蒙特卡罗方法三十多年来的经典应用,已经设计了许多技术。然而,仍然有许多悬而未决的问题,涉及到算法在原则上的有效性,以及在实践中可以获得的结果的准确性。本文简要介绍了这些问题,讨论了各种算法所基于的基本思想及其局限性,并描述了一些典型的物理应用。大多数的重点是模拟单链,孤立链代表大分子在稀溶液中,但模拟多链系统也简单处理。对相关问题(模拟离晶格链、支链代替线性聚合物等)进行了展望,并对今后的工作进行了展望。
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The dynamics of molecule-surface interaction Contents to volume 12 The knowledge-based system GRAPE and its application to Landau theory analysis for magnetic space groups The knowledge-based system GRAPE and its application to Landau theory analysis for magnetic space groups Preface
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