Hamiltonian Learning
Hamiltonian learning focuses on inferring the Hamiltonian function—a mathematical description of a system's energy—from observational data, aiming to improve the accuracy and efficiency of modeling dynamical systems. Current research emphasizes developing novel algorithms and neural network architectures, such as Hamiltonian neural networks and neural ordinary differential equations, often incorporating symplectic integrators to preserve the inherent energy conservation properties of Hamiltonian systems. This field is significant for advancing system identification across diverse domains, from quantum physics and materials science to robotics and control systems, by enabling more accurate and efficient modeling of complex dynamics.
Papers
June 28, 2023
June 15, 2023
April 19, 2023
April 13, 2023
March 7, 2023
March 2, 2023
November 24, 2022
November 7, 2022
July 22, 2022
June 30, 2022
May 10, 2022
April 13, 2022
January 31, 2022
December 29, 2021
December 9, 2021
November 28, 2021