论文标题
从网络上的随机步行到非线性扩散
From random walks on networks to nonlinear diffusion
论文作者
论文摘要
运动的数学模型通常基于可以根据某些规则移动的离散个体的随机行进描述。通常情况下,集中在小型空间中的大型群众对小组的集体运动产生了很大的影响。因此,许多数学生物学中的许多模型都融合了拥挤的效果,并设法理解了它们的含义。在这里,我们建立在一个先前开发的框架上,用于在网络上随机步行,以表明在连续限制中,可以通过扩散的偏差方程来识别潜在的随机过程。新兴方程的扩散系数通常依赖于密度,并且可以与随机行走的过渡概率直接相关。此外,随机过程的松弛时间直接与扩散系数以及网络结构联系在一起,因为它通常在线性扩散的情况下发生。作为一个具体的例子,我们研究了网络上多孔中等方程的等效物,该方程显示了与其连续体等效物相似的特性。对于这个方程式,可以找到晶格和均匀树上的自相似溶液,与常用的线性扩散方程相比,显示出有限的传播速度。这些发现还提供了与一般扩散算子的反应扩散系统的见解,这些发现最近出现在某些应用中。
Mathematical models of motility are often based on random-walk descriptions of discrete individuals that can move according to certain rules. It is usually the case that large masses concentrated in small regions of space have a great impact on the collective movement of the group. For this reason, many models in mathematical biology have incorporated crowding effects and managed to understand their implications. Here, we build on a previously developed framework for random walks on networks to show that in the continuum limit, the underlying stochastic process can be identified with a diffusion partial differential equation. The diffusion coefficient of the emerging equation is in general density-dependent, and can be directly related to the transition probabilities of the random walk. Moreover, the relaxation time of the stochastic process is directly linked to the diffusion coefficient and also to the network structure, as it usually happens in the case of linear diffusion. As a specific example, we study the equivalent of a porous-medium type equation on networks, which shows similar properties to its continuum equivalent. For this equation, self-similar solutions on a lattice and on homogeneous trees can be found, showing finite speed of propagation in contrast to commonly used linear diffusion equations. These findings also provide insights into reaction-diffusion systems with general diffusion operators, which have appeared recently in some applications.