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Model predictive cooperative localization control of multiple UAVs using potential function sensor constraints

Jan Dentler, Somasundar Kannan, Souad Bezzaoucha, Miguel Olivares-Mendez, Holger Voos

Year
2018
Citations
15
Access
Open access

Abstract

The global localization of multiple mobile robots can be achieved cost efficiently by localizing one robot globally and the others in relation to it using local sensor data. However, the drawback of this cooperative localization is the requirement of continuous sensor information. Due to a limited sensor perception space, the tracking task to continuously maintain this sensor information is challenging. To address this problem, this contribution is presenting a model predictive control (MPC) approach for such cooperative localization scenarios. In particular, the present work shows a novel workflow to describe sensor limitations with the help of potential functions. In addition, a compact motion model for multi-rotor drones is introduced to achieve MPC real-time capability. The effectiveness of the presented approach is demonstrated in a numerical simulation, an experimental indoor scenario with two quadrotors as well as multiple indoor scenarios of a quadrotor obstacle evasion maneuver.

Keywords

Computer scienceModel predictive controlTask (project management)Mobile robotDroneRobotTracking (education)Rotor (electric)Real-time computingArtificial intelligence

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