The problems of causality, modeling, and control for chaotic, high-dimensional dynamical systems are formulated in the language of information theory. The central quantity of interest is the Shannon entropy, which measures the amount of information in the states of the system. Within this framework, causality in a dynamical system is quantified by the information flux among the variables of interest. Reduced-order modeling is posed as a problem on the conservation of information, in which models aim at preserving the maximum amount of relevant information from the original system. Similarly, control theory is cast in information-theoretic terms by envisioning the tandem sensor-actuator as a device reducing the unknown information of the state to be controlled. The new formulation is applied to address three problems in the causality, modeling, and control of turbulence, which stands as a primary example of a chaotic, high-dimensional dynamical system. The applications include the causality of the energy transfer in the turbulent cascade, subgrid-scale modeling for large-eddy simulation, and flow control for drag reduction in wall-bounded turbulence.
翻译:在信息理论的语言中,以信息理论的语言来制定高维的动态系统的因果关系、建模和控制问题。关注的中心数量是香农星,它测量系统状态中的信息量。在这个框架内,动态系统中的因果关系通过感兴趣的变量之间的信息通量加以量化。减序建模是信息保护的一个问题,其中模型旨在从原始系统中保留尽可能多的相关信息。同样,控制理论在信息理论术语中出现,将同步传感器动能器设想为减少受控制国家未知信息的一种装置。新的配方用于解决热度、建模和控制动荡的三个问题,这是混乱、高维度动态系统的主要例子。应用包括动荡级联流中能源转移的因果关系、大型辐射模拟的亚磁级建模,以及拖动墙壁外扰动的流量控制。