Model Reduction
Model reduction aims to create simplified, lower-dimensional representations of complex systems, improving computational efficiency without sacrificing significant accuracy. Current research emphasizes data-driven approaches, employing techniques like autoencoders, Koopman theory, and neural networks (including recurrent and convolutional architectures) to learn reduced-order models from high-fidelity data. These advancements are impacting diverse fields, enabling real-time control of systems like soft robots and accelerating simulations of turbulent flows and partial differential equations, ultimately enhancing scientific understanding and technological applications.
Papers
November 18, 2022
October 17, 2022
October 9, 2022
September 15, 2022
September 14, 2022
July 28, 2022
July 19, 2022
April 18, 2022
April 1, 2022
February 8, 2022
February 2, 2022