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Autonomous unmanned aerial vehicle flight accuracy evaluation for three different path-tracking algorithms

    Ramūnas Kikutis Affiliation
    ; Jonas Stankūnas Affiliation
    ; Darius Rudinskas Affiliation

Abstract

This paper shows mathematical results of three methods, which can be used for Unmanned Aerial Vehicle (UAV) to make transition from one flight leg to another. In paper, we present general equations, which can be used for generating waypoint-switching methods when for experiment purpose mathematical UAV model is used. UAV is modelled as moving dot, which eliminates all of the aerodynamics factors and we can concentrate only on the navigation problems. Lots of attention is dedicated to show possible flight path error values with representation of modelled flight path trajectories and deviations from the flight mission path. All of the modelled flight missions are done in two-dimensional space and all the results are evaluated by looking at Probability Density Function (PDF) values, as we are mostly interested in the probability of the error.

Keyword : navigation, Dubins paths, waypoint-switching method, flight path error, unmanned aerial vehicle, dynamic model

How to Cite
Kikutis, R., Stankūnas, J., & Rudinskas, D. (2019). Autonomous unmanned aerial vehicle flight accuracy evaluation for three different path-tracking algorithms. Transport, 34(6), 652-661. https://doi.org/10.3846/transport.2019.11741
Published in Issue
Dec 19, 2019
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Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

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