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A Small Fixedwing Uav System Identification Using Metaheuristics Apiwat Nonut

  • SKU: BELL-47375014
A Small Fixedwing Uav System Identification Using Metaheuristics Apiwat Nonut
$ 31.00 $ 45.00 (-31%)

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A Small Fixedwing Uav System Identification Using Metaheuristics Apiwat Nonut instant download after payment.

Publisher: Cogent Engineering
File Extension: PDF
File size: 3.22 MB
Pages: 18
Author: Apiwat Nonut, Yodsadej Kanokmedhakul, Sujin Bureerat, Sumit Kumar, Ghanshyam G. Tejani, Pramin Artrit, Ali Rıza Yıldız & Nantiwat Pholdee
Language: English
Year: 2022
Volume: 9

Product desciption

A Small Fixedwing Uav System Identification Using Metaheuristics Apiwat Nonut by Apiwat Nonut, Yodsadej Kanokmedhakul, Sujin Bureerat, Sumit Kumar, Ghanshyam G. Tejani, Pramin Artrit, Ali Rıza Yıldız & Nantiwat Pholdee instant download after payment.

A novel method for system identification of small-scale fixed-wing Unmanned Aerial Vehicles (UAVs) using a  metaheuristics (MHs) approach is proposed. This investigation splits the complex aerodynamic model of UAV  into longitudinal and lateral dynamics sub-systems. The system identification optimisation problem is proposed  to find the UAV aerodynamic and stability derivatives by minimizing the R-squared error between the  measurement data and the flight dynamic model. Thirteen popular optimisation algorithms are applied for  solving the proposed UAV system identification optimisation problem while each algorithm is tested for 10  independent optimisation runs. By performing the Freidman’s rank test, statistical analysis of the experiment work was carried out while, based on the fitness value, each algorithm is ranked. The outcomes demonstrate the dominance of the L-SHADE algorithm, with mean R-square errors of 0.5465 and 0.0487 for longitudinal and lateral dynamics, respectively. It is considered superior to the other algorithms for this system identification problem.

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