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History dependence and the continuum approximation breakdown: the impact of domain growth on Turing's instability

机译:历史依赖性和连续逼近故障:领域增长对图灵的不稳定的影响

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摘要

A diffusively driven instability has been hypothesized as a mechanism to drive spatial self-organization in biological systems since the seminal work of Turing. Such systems are often considered on a growing domain, but traditional theoretical studies have only treated the domain size as a bifurcation parameter, neglecting the system non-autonomy. More recently, the conditions for a diffusively driven instability on a growing domain have been determined under stringent conditions, including slow growth, a restriction on the temporal interval over which the prospect of an instability can be considered and a neglect of the impact that time evolution has on the stability properties of the homogeneous reference state from which heterogeneity emerges. Here, we firstly relax this latter assumption and observe that the conditions for the Turing instability are much more complex and depend on the history of the system in general. We proceed to relax all the above constraints, making analytical progress by focusing on specific examples. With faster growth, instabilities can grow transiently and decay, making the prediction of a prospective Turing instability much more difficult. In addition, arbitrarily high spatial frequencies can destabilize, in which case the continuum approximation is predicted to break down.
机译:已经假设了一种扩散驱动的不稳定性,作为推动生物系统中的空间自组织以来的机制,自定义是图灵的精彩作品。这种系统通常考虑在越来越多的域上,但传统的理论研究仅对域尺寸作为分叉参数进行处理,忽略了系统非自治。最近,在严格的条件下确定了在不断增长的领域的扩散驱动不稳定性的条件,包括缓慢的生长,对时间间隔的限制可以考虑不稳定性的前景,并且忽视时间进化的影响具有异质性出现的均匀参考状态的稳定性特性。在这里,我们首先将后一种假设放松并观察到所以无稳定性的条件更复杂,依赖于系统的历史。我们继续放宽所有上述约束,通过专注于具体示例进行分析进展。具有更快的增长,不稳定性可以瞬间增长和衰减,使预测预测更加困难。另外,任意高空间频率可以稳定,在这种情况下,预测连续近似值逐渐分解。

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