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Real-Time Adaptive Intelligent Control System for Quadcopter Unmanned Aerial Vehicles With Payload Uncertainties

Praveen Kumar Muthusamy, Matthew Garratt, H. R. Pota, Rajkumar Muthusamy

2021IEEE Transactions on Industrial Electronics86 citationsDOI

Abstract

A novel bidirectional fuzzy brain emotional learning (BFBEL) controller is proposed to control a class of uncertain nonlinear systems such as the quadcopter unmanned aerial vehicle (QUAV). The proposed BFBEL controller is nonmodel-based and has a simplified fuzzy neural network structure and adapts with a novel bidirectional brain emotional learning algorithm. It is applied to control all six degrees-of-freedom of a QUAV for accurate trajectory tracking and to handle the payload uncertainties and disturbances in real-time. The trajectory tracking performance and the ability to handle the payload uncertainties are experimentally demonstrated on a QUAV. The experimental results show a superior performance and rapid adaptation capability of the proposed BFBEL controller. The proposed BFBEL controller can be used for the commercial drone applications.

Topics & Concepts

QuadcopterPayload (computing)Control theory (sociology)TrajectoryController (irrigation)Computer scienceControl engineeringFuzzy logicDroneFuzzy control systemArtificial neural networkEngineeringArtificial intelligenceControl (management)Network packetAerospace engineeringBiologyGeneticsAgronomyAstronomyPhysicsComputer networkAdaptive Control of Nonlinear SystemsAdaptive Dynamic Programming ControlControl and Dynamics of Mobile Robots
Real-Time Adaptive Intelligent Control System for Quadcopter Unmanned Aerial Vehicles With Payload Uncertainties | Litcius