System Identification
System identification aims to determine a mathematical model representing a dynamical system's behavior from observed input-output data. Current research emphasizes developing robust and efficient methods for identifying both linear and nonlinear systems, employing diverse approaches such as neural networks (including Physics-Informed Neural Networks and recurrent architectures), Bayesian methods, and optimization techniques like L-BFGS-B and Expectation-Maximization. These advancements are crucial for improving control system design, enabling accurate state estimation, and facilitating data-driven modeling across various fields, including robotics, structural health monitoring, and biological systems.
Papers
October 23, 2024
October 4, 2024
October 2, 2024
September 24, 2024
September 17, 2024
September 11, 2024
August 30, 2024
August 16, 2024
August 15, 2024
June 21, 2024
May 11, 2024
April 24, 2024
April 18, 2024
April 12, 2024
April 11, 2024
March 8, 2024
March 6, 2024
February 19, 2024
December 26, 2023