Tightly Joined Positioning and Control Model for Unmanned Aerial Vehicles Based on Factor Graph Optimization
Peiwen Yang, Weisong Wen, Shiyu Bai, and Li-Ta Hsu

TL;DR
This paper introduces a novel tightly integrated positioning and control model for UAVs using factor graph optimization, enhancing navigation reliability amid urban uncertainties and disturbances.
Contribution
It proposes a unified probabilistic model combining positioning and control constraints via factor graph optimization, improving UAV navigation in complex environments.
Findings
Significantly improved trajectory following in simulations.
Enhanced robustness against urban GNSS signal degradation.
Better adaptation to wind disturbances in urban canyons.
Abstract
The execution of flight missions by unmanned aerial vehicles (UAV) primarily relies on navigation. In particular, the navigation pipeline has traditionally been divided into positioning and control, operating in a sequential loop. However, the existing navigation pipeline, where the positioning and control are decoupled, struggles to adapt to ubiquitous uncertainties arising from measurement noise, abrupt disturbances, and nonlinear dynamics. As a result, the navigation reliability of the UAV is significantly challenged in complex dynamic areas. For example, the ubiquitous global navigation satellite system (GNSS) positioning can be degraded by the signal reflections from surrounding high-rising buildings in complex urban areas, leading to significantly increased positioning uncertainty. An additional challenge is introduced to the control algorithm due to the complex wind disturbances…
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Taxonomy
TopicsSimulation and Modeling Applications · Evaluation Methods in Various Fields · Advanced Decision-Making Techniques
