Command-filter-based trajectory-tracking control of quadrotor subject to internal and external disturbances
Mustafa Mohammed Mustafa

TL;DR
This paper introduces a novel control approach for quadrotors that combines command filtering, disturbance observation, and high-gain observers to effectively handle internal and external disturbances, improving robustness and reducing sensor reliance.
Contribution
The paper presents a new integrated control scheme that combines command filtering, disturbance observation, and high-gain observers for quadrotors, addressing disturbance rejection and output feedback simultaneously.
Findings
Effective disturbance attenuation demonstrated in simulations.
Reduced sensor dependency and improved robustness.
Maintains trajectory tracking despite disturbances.
Abstract
We propose a command-filter backstepping controller that integrates a disturbance observer and a high-gain observer (HGO) to handle unknown internal and external disturbances acting on a quadrotor. To build the controller, we first define tracking errors between the measured and desired quadrotor outputs, which allow the system to be rewritten in a new set of state variables. Using this transformed model, we apply Lyapunov theory to derive a backstepping control law. To avoid repeated differentiation of states and virtual controls, a first-order command filter is introduced, and a nonlinear disturbance observer is added to provide disturbance estimates. Each state in the controller and observer is replaced with its estimate from the HGO. The resulting control law enables the quadrotor to follow its path despite internal and external disturbances, with each subsystem allowed its own…
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