Dissipative Particle Dynamics Modeling in Polymer Science and Engineering

IF 16.8 2区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Sousa Javan Nikkhah, Matthias Vandichel
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Abstract

Polymeric materials are intricate systems with unique properties across different length and time scales, presenting challenges in understanding the hierarchical features that govern their behavior. Advancing innovative polymeric systems requires a deep comprehension of these complexities. Dissipative particle dynamics (DPD), a mesoscale simulation technique, has proven instrumental in elucidating polymer behavior. Unlike molecular dynamics, which tracks individual molecules, DPD employs a coarse-graining approach, to describe molecular systems as particles interacting via soft potentials. Thanks to its computational efficiency, DPD has enabled researchers to numerically study several complex fluid applications in detail. Moreover, with the ever-increasing high-performance computing resources, it has become possible to tackle larger molecular systems beyond the nanoscale, typically micrometer-sized systems. An in-depth analysis of the theoretical foundations of DPD is presented, focusing on its methodology, mathematical formulations, and computational implementation. This review then explores various applications of DPD simulations for polymeric systems, demonstrating DPD's ability to accurately capture phenomena such as polymer self-assembly, polymer behavior in solutions and blends, charged polymers, polymer interfaces, polymer rheology, polymeric membranes, polymerization reactions, and polymeric composites. Overall, this review examines the adoption of DPD as a predictive modeling tool for polymeric materials, focusing on its key features and its integration with methods such as atomistic molecular dynamics to determine the interaction parameters. Building on these advancements, future directions for DPD include its potential applications in other systems like biological membranes, macromolecules, and shape-memory materials.

Abstract Image

聚合物科学与工程中的耗散粒子动力学建模
聚合物材料是复杂的系统,在不同的长度和时间尺度上具有独特的性能,这对理解控制其行为的层次特征提出了挑战。推进创新的聚合物体系需要对这些复杂性有深刻的理解。耗散粒子动力学(DPD)是一种中尺度模拟技术,已被证明是阐明聚合物行为的工具。与跟踪单个分子的分子动力学不同,DPD采用粗粒度方法,将分子系统描述为通过软势相互作用的粒子。由于其计算效率高,DPD使研究人员能够对多种复杂流体应用进行详细的数值研究。此外,随着高性能计算资源的不断增加,处理纳米级以外的更大分子系统(通常是微米级系统)已经成为可能。深入分析了DPD的理论基础,重点介绍了它的方法论、数学公式和计算实现。这篇综述随后探讨了DPD模拟在聚合物系统中的各种应用,展示了DPD准确捕捉聚合物自组装、聚合物在溶液和混合物中的行为、带电聚合物、聚合物界面、聚合物流变性、聚合物膜、聚合反应和聚合物复合材料等现象的能力。总体而言,本文综述了采用DPD作为聚合物材料预测建模工具的方法,重点介绍了DPD的主要特征及其与原子分子动力学等方法的结合,以确定相互作用参数。在这些进步的基础上,DPD的未来发展方向包括其在其他系统中的潜在应用,如生物膜、大分子和形状记忆材料。
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来源期刊
Wiley Interdisciplinary Reviews: Computational Molecular Science
Wiley Interdisciplinary Reviews: Computational Molecular Science CHEMISTRY, MULTIDISCIPLINARY-MATHEMATICAL & COMPUTATIONAL BIOLOGY
CiteScore
28.90
自引率
1.80%
发文量
52
审稿时长
6-12 weeks
期刊介绍: Computational molecular sciences harness the power of rigorous chemical and physical theories, employing computer-based modeling, specialized hardware, software development, algorithm design, and database management to explore and illuminate every facet of molecular sciences. These interdisciplinary approaches form a bridge between chemistry, biology, and materials sciences, establishing connections with adjacent application-driven fields in both chemistry and biology. WIREs Computational Molecular Science stands as a platform to comprehensively review and spotlight research from these dynamic and interconnected fields.
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