Artificial Neural Network Based Automatic Emergency Landing Site Selection for UAVs and Highly Automated Aircraft


Autoria(s): Pomerleau, Vincent; Richardson, Daniel
Data(s)

15/10/2014

Resumo

In this report an artificial neural network (ANN) based automated emergency landing site selection system for unmanned aerial vehicle (UAV) and general aviation (GA) is described. The system aims increase safety of UAV operation by emulating pilot decision making in emergency landing scenarios using an ANN to select a safe landing site from available candidates. The strength of an ANN to model complex input relationships makes it a perfect system to handle the multicriteria decision making (MCDM) process of emergency landing site selection. The ANN operates by identifying the more favorable of two landing sites when provided with an input vector derived from both landing site's parameters, the aircraft's current state and wind measurements. The system consists of a feed forward ANN, a pre-processor class which produces ANN input vectors and a class in charge of creating a ranking of landing site candidates using the ANN. The system was successfully implemented in C++ using the FANN C++ library and ROS. Results obtained from ANN training and simulations using randomly generated landing sites by a site detection simulator data verify the feasibility of an ANN based automated emergency landing site selection system.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/90131/

Publicador

Queensland University of Technology

Relação

http://eprints.qut.edu.au/90131/1/Artificial%20Neural%20Network%20Based%20Automatic%20Emergency%20Landing%20Site%20Selection%20for%20UAVs%20and%20Highly%20Automated%20Aircraft%20-Technical%20Paper-VP.pdf

Pomerleau, Vincent & Richardson, Daniel (2014) Artificial Neural Network Based Automatic Emergency Landing Site Selection for UAVs and Highly Automated Aircraft. Queensland University of Technology, Brisbane, Qld.

Direitos

Copyright 2014 Queensland University of Technology

Fonte

School of Electrical Engineering & Computer Science; Science & Engineering Faculty

Palavras-Chave #090600 ELECTRICAL AND ELECTRONIC ENGINEERING #090602 Control Systems Robotics and Automation #UAV #Artificial Neural Networks #MCDM #Multi Criteria Decision Making
Tipo

Report