2018
DOI: 10.1007/s10514-018-9711-z
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Model predictive cooperative localization control of multiple UAVs using potential function sensor constraints

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 … Show more

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Cited by 13 publications
(6 citation statements)
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References 47 publications
(61 reference statements)
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“…The UAS used high-resolution cameras to capture high-quality images of the airframe while maintaining a safe distance from the aircraft through specialized collision-free navigation and trajectory planning and execution systems. While single UAS-missions are limited in their sensing and energy abilities, both scheduled and unscheduled inspection tasks could be significantly improved by utilizing teams of UAS designed to operate collectively [23]. Through collective behavior, we could exploit not only the heterogeneity of the platforms (e.g., different sensing modalities) to decompose the overall mission effectively but also improve the overall system performance (e.g., by minimizing the total inspection time and cost) and reliability.…”
Section: Uav-assisted Airframe Inspectionmentioning
confidence: 99%
“…The UAS used high-resolution cameras to capture high-quality images of the airframe while maintaining a safe distance from the aircraft through specialized collision-free navigation and trajectory planning and execution systems. While single UAS-missions are limited in their sensing and energy abilities, both scheduled and unscheduled inspection tasks could be significantly improved by utilizing teams of UAS designed to operate collectively [23]. Through collective behavior, we could exploit not only the heterogeneity of the platforms (e.g., different sensing modalities) to decompose the overall mission effectively but also improve the overall system performance (e.g., by minimizing the total inspection time and cost) and reliability.…”
Section: Uav-assisted Airframe Inspectionmentioning
confidence: 99%
“…And the model predictive controller is introduced to model and implement controllers for the problem of dynamic encirclement. Recently, Dentler et al in [23] studied the model predictive control of multi-UAVs by using potential functional sensor constraints. They proposed a model predictive control method for this cooperative positioning scheme to solve the problem of limited sensor perception space.…”
Section: Introductionmentioning
confidence: 99%
“…Mobile networks, including multiple mobile robot system [1], vehicular networking [2], multi-unmanned aircraft system [3] etc. The core problem of mobile network can be separated into the following three subproblems [4]: (i) Where am I?…”
Section: Introductionmentioning
confidence: 99%