Robust Control of Uncertain Switched Affine Systems via Scenario Optimization
By: Negar Monir, Mahdieh S. Sadabadi, Sadegh Soudjani
Potential Business Impact:
Makes machines work better even with mistakes.
Switched affine systems are often used to model and control complex dynamical systems that operate in multiple modes. However, uncertainties in the system matrices can challenge their stability and performance. This paper introduces a new approach for designing switching control laws for uncertain switched affine systems using data-driven scenario optimization. Instead of relaxing invariant sets, our method creates smaller invariant sets with quadratic Lyapunov functions through scenario-based optimization, effectively reducing chattering effects and regulation error. The framework ensures robustness against parameter uncertainties while improving accuracy. We validate our method with applications in multi-objective interval Markov decision processes and power electronic converters, demonstrating its effectiveness.
Similar Papers
Feedback stabilization of switched systems under arbitrary switching: A convex characterization
Optimization and Control
Makes machines with changing parts more stable.
Switching control of underactuated multi-channel systems with input constraints for cooperative manipulation
Systems and Control
Robots learn to work together to move things.
Soft Switching Expert Policies for Controlling Systems with Uncertain Parameters
Systems and Control
Teaches robots to work even when things change.