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Adaptive Attitude Control of a Quadrotor Using Fast Nonsingular Terminal Sliding Mode

Shikang Lian, Wei Meng, Zemin Lin, Ke Shao, Jinchuan Zheng, Hongyi Li, Renquan Lu

2021IEEE Transactions on Industrial Electronics187 citationsDOI

Abstract

As one type of unmanned aerial vehicles, the quadrotor typically suffers from payload variations, system uncertainties, and environmental wind disturbances, which significantly deteriorate its attitude control performance. To provide high-speed, accurate, and robust attitude tracking performance for the quadrotor, an adaptive fast nonsingular terminal sliding mode (AFNTSM) controller is proposed in this article. The proposed AFNTSM controller combines the advantages of fast nonsingular terminal sliding mode (FNTSM), integral sliding mode, and adaptive estimation techniques, which are effective to achieve the desired tracking performance and suppress control signal chattering. Furthermore, unlike conventional methods, the adaptive estimation removes the requirements for the upper bound information of the disturbances. It is proved that the proposed AFNTSM can guarantee finite-time convergence and zero tracking error for the quadrotor attitude control. Finally, comparative study with the FNTSM control only and conventional sliding mode control is conducted through experiments and the results demonstrate that the proposed AFNTSM can achieve faster convergence and stronger robustness in line with theoretical analysis.

Topics & Concepts

Control theory (sociology)Robustness (evolution)Terminal sliding modeAttitude controlPayload (computing)Sliding mode controlConvergence (economics)Robust controlComputer scienceController (irrigation)Adaptive controlEngineeringControl engineeringControl systemControl (management)Artificial intelligenceNonlinear systemGeneBiochemistryAgronomyBiologyNetwork packetEconomicsEconomic growthQuantum mechanicsComputer networkElectrical engineeringChemistryPhysicsAdaptive Control of Nonlinear SystemsControl and Dynamics of Mobile RobotsInertial Sensor and Navigation