Litcius/Paper detail

Real-Time Modular Deep Neural Network-Based Adaptive Control of Nonlinear Systems

Duc M. Le, Max L. Greene, Wanjiku A. Makumi, Warren E. Dixon

2021IEEE Control Systems Letters48 citationsDOI

Abstract

A real-time deep neural network (DNN) adaptive control architecture is developed for uncertain control-affine nonlinear systems to track a time-varying desired trajectory. A Lyapunov-based analysis is used to develop adaptation laws for the output-layer weights and develop constraints for inner-layer weight adaptation laws. Unlike existing works in neural network and DNN-based control, the developed method establishes a framework to simultaneously update the weights of multiple layers for a DNN of arbitrary depth in real-time. The real-time controller and weight update laws enable the system to track a time-varying trajectory while compensating for unknown drift dynamics and parametric DNN uncertainties. A nonsmooth Lyapunov-based analysis is used to guarantee semi-global asymptotic tracking. Comparative numerical simulation results are included to demonstrate the efficacy of the developed method.

Topics & Concepts

Control theory (sociology)Artificial neural networkTrajectoryComputer scienceController (irrigation)Adaptive controlModular designNonlinear systemParametric statisticsLyapunov functionArtificial intelligenceControl (management)MathematicsOperating systemPhysicsAstronomyBiologyQuantum mechanicsAgronomyStatisticsAdaptive Control of Nonlinear SystemsAdaptive Dynamic Programming ControlControl Systems and Identification