首页> 外文期刊>Multiscale modeling & simulation >HOMOGENIZATION OF A RANDOM WALK ON A GRAPH IN R-d: AN APPROACH TO PREDICT MACROSCALE DIFFUSIVITY IN MEDIA WITH FINESCALE OBSTRUCTIONS AND INTERACTIONS
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HOMOGENIZATION OF A RANDOM WALK ON A GRAPH IN R-d: AN APPROACH TO PREDICT MACROSCALE DIFFUSIVITY IN MEDIA WITH FINESCALE OBSTRUCTIONS AND INTERACTIONS

机译:随机步行在R-D中的均匀化:一种方法来预测媒体中的宏观扩散性,具有FineScale障碍物和交互

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We propose random walks on suitably defined graphs as a framework for finescale modeling of particle motion in an obstructed environment where the particle may have interactions with the obstructions and the mean path length of the particle may not be negligible in comparison to the finescale. This motivates our study of a periodic, directed, and weighted graph embedded in R-d and the scaling limit of the associated continuous-time random walk Z(t) on the graph's nodes, which jumps along the graph's edges with jump rates given by the edge weights. We show that the scaled process epsilon(2)Z(t/epsilon(2)) converges to a linear drift (U) over bart and that epsilon(Z(t/epsilon(2))-(U) over bart/epsilon(2) ) converges weakly to a Brownian motion. The diffusivity of the limiting Brownian motion can be computed by solving a set of linear algebra problems. As we allow for jump rates to be irreversible, our framework allows for the modeling of very general forms of interactions such as attraction, repulsion, and bonding. The case of interest to us is that of null drift (U) over bar = 0 and we provide some sufficient conditions for null drift that include certain symmetries of the graph. We also provide a formal asymptotic derivation of the effective diffusivity in analogy with homogenization theory for PDEs. For the case of reversible jump rates, we derive an equivalent variational formulation. This derivation involves developing notions of gradient for functions on the graph's nodes, divergence for R-d-valued functions on the graph's edges, and a divergence theorem.
机译:我们提出了随机定义的曲线图,作为粒子运动在受阻环境中的粒子运动的框架,其中颗粒可以具有与障碍物的相互作用,并且与FineScale相比,颗粒的平均路径长度可能不会忽略不计。这激发了我们对嵌入RD中的周期性,定向和加权图的研究以及图形节点上的相关连续时间随机步行Z(t)的缩放限制,这沿着图形的边缘跳跃,边缘给出的跳跃速率重量。我们表明缩放过程ε(2)Z(T / Epsilon(2))会聚到Bart上的线性漂移(U),并且ε(Z(T / Epsilon(2)) - (U)通过Bart / Epsilon (2))融合到布朗运动弱。可以通过求解一组线性代数问题来计算限制褐色运动的扩散性。正如我们允许跳跃的速率不可逆转,我们的框架允许建模非常一般形式的相互作用,例如吸引力,排斥和粘合。对我们感兴趣的情况是Null漂移(U)上方的rel = 0,我们为空漂移提供了一些足够的条件,包括图形的某些对称性。我们还通过对PDE的均质化理论进行类比的有效扩散性的正式渐近衍生。对于可逆跳线的情况,我们得出了等效的变分制剂。该衍生涉及在图表节点上的功能的渐变的发展概念,在图形的边缘和发散定理上发散的R-D值函数的发散。

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