Ma Huanfei, Ho Daniel W C, Lai Ying-Cheng, Lin Wei
School of Mathematical Sciences, Soochow University, Suzhou 215006, China.
Center for Computational Systems Biology, Fudan University, Shanghai 200433, China.
Phys Rev E Stat Nonlin Soft Matter Phys. 2015 Oct;92(4):042902. doi: 10.1103/PhysRevE.92.042902. Epub 2015 Oct 2.
We articulate an adaptive and reference-free framework based on the principle of random switching to detect and control unstable steady states in high-dimensional nonlinear dynamical systems, without requiring any a priori information about the system or about the target steady state. Starting from an arbitrary initial condition, a proper control signal finds the nearest unstable steady state adaptively and drives the system to it in finite time, regardless of the type of the steady state. We develop a mathematical analysis based on fast-slow manifold separation and Markov chain theory to validate the framework. Numerical demonstration of the control and detection principle using both classic chaotic systems and models of biological and physical significance is provided.
我们基于随机切换原理阐述了一种自适应且无需参考的框架,用于检测和控制高维非线性动力系统中的不稳定稳态,无需关于系统或目标稳态的任何先验信息。从任意初始条件出发,一个合适的控制信号能自适应地找到最近的不稳定稳态,并在有限时间内将系统驱动至该稳态,而不论稳态的类型如何。我们基于快慢流形分离和马尔可夫链理论开展了数学分析以验证该框架。给出了使用经典混沌系统以及具有生物学和物理学意义的模型对控制和检测原理的数值演示。