Complex Dynamical System
Complex dynamical systems research aims to understand and predict the behavior of intricate systems exhibiting nonlinear interactions and often chaotic dynamics. Current efforts focus on developing data-driven models, employing architectures like neural ordinary differential equations (NODEs), Koopman operators, and physics-informed neural networks (PINNs), often enhanced with techniques like Bayesian methods and mixed-integer optimization for improved accuracy and robustness. These advancements are crucial for tackling challenges in diverse fields, including climate modeling, control systems engineering, and biological systems analysis, by enabling more accurate predictions and a deeper understanding of complex system behavior.
Papers
Adaptive Event-triggered Reinforcement Learning Control for Complex Nonlinear Systems
Umer Siddique, Abhinav Sinha, Yongcan Cao
KODA: A Data-Driven Recursive Model for Time Series Forecasting and Data Assimilation using Koopman Operators
Ashutosh Singh, Ashish Singh, Tales Imbiriba, Deniz Erdogmus, Ricardo Borsoi