The blending region hybrid framework for the simulation of stochastic reaction-diffusion processes: The blending region hybrid framework for the simulation of stochastic reaction-diffusion processes

被引:0
|
作者
Yates C.A. [1 ]
George A. [1 ]
Jordana A. [2 ]
Smith C.A. [1 ]
Duncan A.B. [3 ]
Zygalakis K.C. [4 ]
机构
[1] Department of Mathematical Sciences, University of Bath, Claverton Down, Bath
[2] Centre de Mathématiques et de Leurs Applications, Cnrs, Ens Paris-Saclay, Université Paris-Saclay, Cachan cedex
[3] Department of Mathematics, Imperial College London, London
[4] School of Mathematics, University of Edinburgh, James Clerk Maxwell Building, King's Buildings, Peter Guthrie Tait Road, Edinburgh
来源
Journal of the Royal Society Interface | 2020年 / 17卷 / 171期
基金
英国工程与自然科学研究理事会;
关键词
hybrid modelling; hybrid modelling framework; multiscale modelling; partial differential equation; stochastic reaction-diffusion;
D O I
10.1098/rsif.2020.0563
中图分类号
学科分类号
摘要
The simulation of stochastic reaction-diffusion systems using fine-grained representations can become computationally prohibitive when particle numbers become large. If particle numbers are sufficiently high then it may be possible to ignore stochastic fluctuations and use a more efficient coarse-grained simulation approach. Nevertheless, for multiscale systems which exhibit significant spatial variation in concentration, a coarse-grained approach may not be appropriate throughout the simulation domain. Such scenarios suggest a hybrid paradigm in which a computationally cheap, coarse-grained model is coupled to a more expensive, but more detailed fine-grained model, enabling the accurate simulation of the fine-scale dynamics at a reasonable computational cost. In this paper, in order to couple two representations of reaction-diffusion at distinct spatial scales, we allow them to overlap in a 'blending region'. Both modelling paradigms provide a valid representation of the particle density in this region. From one end of the blending region to the other, control of the implementation of diffusion is passed from one modelling paradigm to another through the use of complementary 'blending functions' which scale up or down the contribution of each model to the overall diffusion. We establish the reliability of our novel hybrid paradigm by demonstrating its simulation on four exemplar reaction-diffusion scenarios. © 2020 The Authors.
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