论文标题

空间扩展的生态系统中噪声引起的弹性恢复的通用性

Universality of noise-induced resilience restoration in spatially-extended ecological systems

论文作者

Ma, Cheng, Korniss, Gyorgy, Szymanski, Boleslaw K., Gao, Jianxi

论文摘要

由于内部故障或外部扰动,许多系统可能会切换到不希望的状态,其中关键过渡向退化的生态系统状态是一个重要的例子。弹性恢复的重点是在随机环境条件下恢复到所需状态的空间扩展系统的能力。尽管平均场方法可以通过指示破坏不希望状态所需的条件来指导恢复策略,但这些方法并未准确捕获到随机环境中空间扩展系统所需状态的过渡过程。难度植根于缺乏数学工具来分析具有高维,非线性和随机效应的系统。我们通过开发新的数学工具来弥合这一差距,这些数学工具在空间限制的系统中采用成核理论来提高弹性恢复。我们研究了遵循共同动力学和扩散模型的系统的方法,发现系统可能会根据其大小和噪声强度表现出单集群或多群集阶段,并且还构建了一个新的缩放定律,该定律定律在二维系统中的任意系统大小和噪声强度的修复时间。这种方法不仅限于生态系统,而且在从生物学到基础设施系统的各种动力系统中都有应用。

Many systems may switch to an undesired state due to internal failures or external perturbations, of which critical transitions toward degraded ecosystem states are a prominent example. Resilience restoration focuses on the ability of spatially-extended systems and the required time to recover to their desired states under stochastic environmental conditions. While mean-field approaches may guide recovery strategies by indicating the conditions needed to destabilize undesired states, these approaches are not accurately capturing the transition process toward the desired state of spatially-extended systems in stochastic environments. The difficulty is rooted in the lack of mathematical tools to analyze systems with high dimensionality, nonlinearity, and stochastic effects. We bridge this gap by developing new mathematical tools that employ nucleation theory in spatially-embedded systems to advance resilience restoration. We examine our approach on systems following mutualistic dynamics and diffusion models, finding that systems may exhibit single-cluster or multi-cluster phases depending on their sizes and noise strengths, and also construct a new scaling law governing the restoration time for arbitrary system size and noise strength in two-dimensional systems. This approach is not limited to ecosystems and has applications in various dynamical systems, from biology to infrastructural systems.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源