Increase the aviation efficiency of UAVs using artificial neural networks

Main Article Content

T. Kurdi Saadi
Hameed Reja Ahmed
Fathi Hussein Al-Ashmati Akram

Abstract

Purpose. It is known that the flight of the UAV is conducted by sensors that transmit the performance of the UAV and on the basis of this information is controlled on the UAV and give them the orders which are necessary to perform the task of flying UAV. and normal these faults occur during the flight of unmanned air vehicle (UAV), according to the concepts of aviation is a very critical situation that affects the completion of the mission. These faults are mainly due to failure in the sensors, which can be divided into. Flight Situation is about the flying situation of the aircraft, such as (heading, altitude, airspeed, and vertical speed and angle of attack sensors. And Flight Control Situation, this is about the flight control surfaces such as (rudder, aileron, and elevator deflection), pitch attitude, and roll attitude sensors. This paper presents an effective technique to ensure that the sensors can operate with high efficiency. Methods. Two different approaches are used in this work. The first approach is Neural Network (NN) based tool for the modeling, simulation and analysis of aircraft (SFDIA), sensors failure, detection, and identification and accommodation problem. The second approach is Neural Network trained with the (EMRAN) algorithms which is a set of conditions that decide how the (EMRAN) structure should be adapted to better suit the training data. Results. The results from the modeling process and analysis of aircraft sensors showed that the neural network based tool (SFDIA) and the (EMRAN) algorithms are able to show high-resolution results in the behavior of sensors and hence in the (UAV) behavior. Conclusions. The capabilities of (SFDIA) are a consequence of the extensive modularity of the whole simulation tool. It allows an easy change of unmanned air vehicle (UAV), dynamics and feedback control law as well as Neural Network (NN) estimators and (SFDIA) scheme.

Article Details

How to Cite
Saadi, T. K., Ahmed, H. R., & Al-Ashmati Akram, F. H. (2017). Increase the aviation efficiency of UAVs using artificial neural networks. Advanced Information Systems, 1(2), 52–57. https://doi.org/10.20998/2522-9052.2017.2.09
Section
Intelligent information systems
Author Biographies

T. Kurdi Saadi, University of Technology, Baghdad

Electromechanical Engineering Department

Hameed Reja Ahmed, University of Technology, Baghdad

Electromechanical Engineering Department

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