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Quadrotor trajectory tracking and obstacle avoidance by chaotic grey wolf optimization- based backstepping control with sliding mode extended state observer

Yingxun Wang, Yan Ma, Zhihao Cai, Jiang Zhao

2020Transactions of the Institute of Measurement and Control22 citationsDOI

Abstract

In this paper, a new swarm intelligent-based backstepping control scheme is proposed for quadrotor trajectory tracking and obstacle avoidance. First, the sliding mode extended state observer (SMESO) is used to estimate different disturbances, and the tracking differentiator (TD) is integrated to enhance the performance of backstepping control scheme. Then, the chaotic grey wolf optimization (CGWO) is developed with chaotic initialization and chaotic search to optimize the parameters of attitude and position controllers. Further, the virtual target guidance approach is proposed for quadrotor trajectory tracking and obstacle avoidance. Comparative simulations and Monte Carlo tests are carried out to demonstrate the effectiveness and robustness of the CGWO-based backstepping control scheme and virtual target guidance approach.

Topics & Concepts

Control theory (sociology)BacksteppingRobustness (evolution)State observerComputer scienceChaoticTrajectoryInitializationDifferentiatorObstacle avoidanceControl engineeringEngineeringArtificial intelligenceMobile robotControl (management)Adaptive controlNonlinear systemComputer visionRobotPhysicsBiochemistryProgramming languageChemistryFilter (signal processing)Quantum mechanicsGeneAstronomyAdaptive Control of Nonlinear SystemsGuidance and Control SystemsInertial Sensor and Navigation
Quadrotor trajectory tracking and obstacle avoidance by chaotic grey wolf optimization- based backstepping control with sliding mode extended state observer | Litcius