Adaptive Nonlinear Control With Contraction Metrics
Brett T. Lopez, Jean-Jacques Slotine
Abstract
This letter derives direct adaptive control algorithms for nonlinear systems nominally contracting in closed-loop, but subject to structured parametric uncertainty. The approach is more general than methods based on feedback linearization or backstepping as it does not require invertibility or the system be in strict-feedback form. More broadly, it can be combined with learned controllers that must remain effective in the presence of structured parametric uncertainty. Simulation results illustrate the approach on a system with extended matched uncertainty.
Topics & Concepts
BacksteppingFeedback linearizationControl theory (sociology)Parametric statisticsNonlinear systemComputer scienceLinearizationContraction (grammar)Adaptive controlControl engineeringControl (management)Mathematical optimizationMathematicsEngineeringArtificial intelligencePhysicsInternal medicineQuantum mechanicsMedicineStatisticsControl and Stability of Dynamical SystemsAdaptive Control of Nonlinear SystemsAdvanced Control Systems Optimization