Subramanian Srikanth, Murray Seán M
Max Planck Institute for Terrestrial Microbiology, 35043 Marburg, Germany.
Phys Rev E. 2021 Jan;103(1-1):012215. doi: 10.1103/PhysRevE.103.012215.
Turing's theory of pattern formation has been used to describe the formation of self-organized periodic patterns in many biological, chemical, and physical systems. However, the use of such models is hindered by our inability to predict, in general, which pattern is obtained from a given set of model parameters. While much is known near the onset of the spatial instability, the mechanisms underlying pattern selection and dynamics away from onset are much less understood. Here, we provide physical insight into the dynamics of these systems. We find that peaks in a Turing pattern behave as point sinks, the dynamics of which is determined by the diffusive fluxes into them. As a result, peaks move toward a periodic steady-state configuration that minimizes the mass of the diffusive species. We also show that the preferred number of peaks at the final steady state is such that this mass is minimized. Our work presents mass minimization as a potential general principle for understanding pattern formation in reaction diffusion systems far from onset.
图灵的模式形成理论已被用于描述许多生物、化学和物理系统中自组织周期性模式的形成。然而,此类模型的应用受到阻碍,因为一般来说,我们无法预测从给定的一组模型参数中会得到哪种模式。虽然在空间不稳定性开始时的情况已为人所知,但模式选择和远离起始点的动力学背后的机制却知之甚少。在这里,我们对这些系统的动力学提供了物理见解。我们发现图灵模式中的峰值表现为点汇,其动力学由流入它们的扩散通量决定。结果,峰值朝着使扩散物种质量最小化的周期性稳态构型移动。我们还表明,最终稳态下峰值的首选数量使得这种质量最小化。我们的工作提出质量最小化作为理解远离起始点的反应扩散系统中模式形成的潜在一般原则。