Lyapunov Function
Lyapunov functions are mathematical tools used to analyze the stability of dynamical systems, primarily aiming to prove the convergence of a system to a desired equilibrium point. Current research focuses on leveraging Lyapunov functions within machine learning contexts, particularly for designing stable controllers and analyzing the convergence of algorithms like stochastic gradient descent and reinforcement learning, often employing neural networks to approximate these functions. This work has significant implications for robotics, control systems, and optimization problems, enabling the development of more robust and reliable algorithms with provable stability guarantees.
Papers
Sensor Fault Detection and Compensation with Performance Prescription for Robotic Manipulators
S. Mohammadreza Ebrahimi, Farid Norouzi, Hossein Dastres, Reza Faieghi, Mehdi Naderi, Milad Malekzadeh
High-Gain Disturbance Observer for Robust Trajectory Tracking of Quadrotors
Mohammadreza Izadi, Reza Faieghi