贝叶斯粗化:聚合物模型参数的快速调整

IF 2.3 3区 工程技术 Q2 MECHANICS Rheologica Acta Pub Date : 2023-07-05 DOI:10.1007/s00397-023-01397-w
Hansani Weeratunge, Dominic Robe, Adrian Menzel, Andrew W. Phillips, Michael Kirley, Kate Smith-Miles, Elnaz Hajizadeh
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引用次数: 1

摘要

提出了一种基于贝叶斯优化的粗粒聚合物模拟模型参数确定方法。该过程将目标聚合物体系的微观分布函数和温度相关密度作为输入。然后,该过程迭代地考虑粗粒度模拟来对模型参数空间进行采样,以最小化新模拟与目标之间的差异。采用贝叶斯优化选择连续样本。这样的协议可以用于系统的粗粒度昂贵的高分辨率模拟,以延长可访问的长度和时间尺度,以接触流变实验。贝叶斯粗化协议与之前需要大量训练数据的机器学习参数化技术进行了比较。由于贝叶斯优化中探索与开发的自然平衡,发现贝叶斯粗化过程可以在粗糙和嘈杂的适应度景观中精确有效地发现合适的模型参数。
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Bayesian coarsening: rapid tuning of polymer model parameters

A protocol based on Bayesian optimization is demonstrated for determining model parameters in a coarse-grained polymer simulation. This process takes as input the microscopic distribution functions and temperature-dependent density for a targeted polymer system. The process then iteratively considers coarse-grained simulations to sample the space of model parameters, aiming to minimize the discrepancy between the new simulations and the target. Successive samples are chosen using Bayesian optimization. Such a protocol can be employed to systematically coarse-grained expensive high-resolution simulations to extend accessible length and time scales to make contact with rheological experiments. The Bayesian coarsening protocol is compared to a previous machine-learned parameterization technique which required a high volume of training data. The Bayesian coarsening process is found to precisely and efficiently discover appropriate model parameters, in spite of rough and noisy fitness landscapes, due to the natural balance of exploration and exploitation in Bayesian optimization.

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来源期刊
Rheologica Acta
Rheologica Acta 物理-力学
CiteScore
4.60
自引率
8.70%
发文量
55
审稿时长
3 months
期刊介绍: "Rheologica Acta is the official journal of The European Society of Rheology. The aim of the journal is to advance the science of rheology, by publishing high quality peer reviewed articles, invited reviews and peer reviewed short communications. The Scope of Rheologica Acta includes: - Advances in rheometrical and rheo-physical techniques, rheo-optics, microrheology - Rheology of soft matter systems, including polymer melts and solutions, colloidal dispersions, cement, ceramics, glasses, gels, emulsions, surfactant systems, liquid crystals, biomaterials and food. - Rheology of Solids, chemo-rheology - Electro and magnetorheology - Theory of rheology - Non-Newtonian fluid mechanics, complex fluids in microfluidic devices and flow instabilities - Interfacial rheology Rheologica Acta aims to publish papers which represent a substantial advance in the field, mere data reports or incremental work will not be considered. Priority will be given to papers that are methodological in nature and are beneficial to a wide range of material classes. It should also be noted that the list of topics given above is meant to be representative, not exhaustive. The editors welcome feedback on the journal and suggestions for reviews and comments."
期刊最新文献
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