Autonomous Landing of a Quadrotor on a Moving Platform Using Motion Capture System

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Date

2024

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Publisher

Springer

Open Access Color

GOLD

Green Open Access

No

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Abstract

This paper investigates the challenging problem of the autonomous landing of a quadrotor on a moving platform in a non-cooperative environment. The limited sensing ability of quadrotors often hampers their utilization for autonomous landing, especially in GPS-denied areas. The performance of motion capture systems (MCSs) in many application areas is the motivation to utilize them for the autonomous take-off and landing of the quadrotor in this research. An autonomous closed-loop vision-based navigation, tracking, and control system is proposed for quadrotors to perform landing based upon Model Predictive Control (MPC) by utilizing multi-objective functions. The entire process is posed as a constrained tracking problem to minimize energy consumption and ensure smooth maneuvers. The proposed approach is fully autonomous from take-off to landing; whereas, the movements of the landing platform are pre-defined but still unknown to the quadrotor. The landing performance of the quadrotor is tested and evaluated for three different movement patterns: static, square-shaped, and circular-shaped. Through experimental results, the pose error between the quadrotor and the platform is measured and found to be less than 30 cm. Introducing a holistic vision system for quadrotor navigation, tracking, and landing on stationary/moving platforms. Proposing an energy-efficient, smooth, and stable MPC controller validated by Lyapunov analysis. Validating the adept tracking and safe landings of the quadrotor on stationary/moving platforms through three diverse experiments.

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Keywords

Unmanned aerial vehicle, Autonomous vehicle, Localization, Motion capture system, Model predictive control

Turkish CoHE Thesis Center URL

Fields of Science

0209 industrial biotechnology, 02 engineering and technology, 01 natural sciences, 0104 chemical sciences

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Q2
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Discover Applied Sciences

Volume

6

Issue

6

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Scopus : 1

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Mendeley Readers : 13

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