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Original scientific paper

https://doi.org/10.7906/indecs.14.2.11

Fuzzy-Genetic Control of Quadrotors Unmanned Aerial Vehicles

Attila Nemes orcid id orcid.org/0000-0001-6360-8257 ; Óbuda University, Doctoral School of Safety and Security Sciences, Budapest, Hungary


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Abstract

This article presents a novel fuzzy identification method for dynamic modelling of quadrotor unmanned aerial vehicles. The method is based on a special parameterization of the antecedent part of fuzzy systems that results in fuzzy-partitions for antecedents. This antecedent parameter representation method of fuzzy rules ensures upholding of predefined linguistic value ordering and ensures that fuzzy-partitions remain intact throughout an unconstrained hybrid evolutionary and gradient descent based optimization process. In the equations of motion the first order derivative component is calculated based on Christoffel symbols, the derivatives of fuzzy systems are used for modelling the Coriolis effects, gyroscopic and centrifugal terms. The non-linear parameters are subjected to an initial global evolutionary optimization scheme and fine tuning with gradient descent based local search. Simulation results of the proposed new quadrotor dynamic model identification method are promising.

Keywords

quadrotor UAV; fuzzy system; unconstrained optimization; genetic algorithms; gradient descent search

Hrčak ID:

154448

URI

https://hrcak.srce.hr/154448

Publication date:

14.3.2016.

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