Non-normality and non-monotonic dynamics in complex reaction networks

Zachary G. Nicolaou, T. Nishikawa, S. Nicholson, Jason R. Green, A. Motter
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引用次数: 9

Abstract

Complex chemical reaction networks, which underlie many industrial and biological processes, often exhibit non-monotonic changes in chemical species concentrations, typically described using nonlinear models. Such non-monotonic dynamics are in principle possible even in linear models if the matrices defining the models are non-normal, as characterized by a necessarily non-orthogonal set of eigenvectors. However, the extent to which non-normality is responsible for non-monotonic behavior remains an open question. Here, using a master equation to model the reaction dynamics, we derive a general condition for observing non-monotonic dynamics of individual species, establishing that non-normality promotes non-monotonicity but is not a requirement for it. In contrast, we show that non-normality is a requirement for non-monotonic dynamics to be observed in the Renyi entropy. Using hydrogen combustion as an example application, we demonstrate that non-monotonic dynamics under experimental conditions are supported by a linear chain of connected components, in contrast with the dominance of a single giant component observed in typical random reaction networks. The exact linearity of the master equation enables development of rigorous theory and simulations for dynamical networks of unprecedented size (approaching $10^5$ dynamical variables, even for a network of only 20 reactions and involving less than 100 atoms). Our conclusions are expected to hold for other combustion processes, and the general theory we develop is applicable to all chemical reaction networks, including biological ones.
复杂反应网络中的非正态和非单调动力学
复杂的化学反应网络是许多工业和生物过程的基础,经常表现出化学物质浓度的非单调变化,通常使用非线性模型来描述。这种非单调动力学在原则上是可能的,即使在线性模型中,如果定义模型的矩阵是非正态的,以必然的非正交特征向量集为特征。然而,非正态性在多大程度上导致非单调行为仍然是一个悬而未决的问题。本文利用主方程对反应动力学进行建模,导出了观察单个物种非单调动力学的一般条件,证明了非正态性促进了非单调性,但不是非单调性的必要条件。相反,我们证明了非正态性是在Renyi熵中观察到非单调动力学的必要条件。以氢燃烧为例,我们证明了实验条件下的非单调动力学是由连接组分的线性链支持的,而不是在典型的随机反应网络中观察到的单个巨大组分的优势。主方程的精确线性使得开发严格的理论和模拟空前规模的动态网络(接近$10^5$动态变量,即使对于只有20个反应和涉及不到100个原子的网络)。我们的结论预计将适用于其他燃烧过程,我们发展的一般理论适用于所有化学反应网络,包括生物反应网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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