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Neural Network Control of Robot Formations using RISE Feedback

Travis Dierks, S. Jagannathan

Year
2007
Citations
2

Abstract

In this paper, a combined kinematic/torque control law is developed for leader-follower based formation control using backstepping in order to accommodate the dynamics of the robots and the formation in contrast with kinematic-based formation controllers that are widely reported in the literature. A neural network (NN) is introduced along with robust integral of the sign of the error (RISE) feedback to approximate the dynamics of the follower as well as its leader using online weight tuning. It is shown using Lyapunov theory that the errors for the entire formation are asymptotically stable and the NN weights are bounded as opposed to uniformly ultimately bounded (UUB) stability which is typical with most NN controllers. Theoretical results are demonstrated using numerical simulations.

Keywords

Control theory (sociology)BacksteppingBounded functionArtificial neural networkKinematicsLyapunov functionRobotLyapunov stabilityStability (learning theory)Computer science

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