Title :
New model for aircraft landing scheduling using real time algorithms scheduling
Author :
Chougdali, Sallami ; Roudane, Asmaa ; Mansouri, Khalifa ; Youssfi, Mohamed ; Qbadou, Mohammed
Author_Institution :
Lab.: Signals, Distrib. Syst. & Artificial Intell., Univ. Hassan II, Casablanca, Morocco
Abstract :
Expert systems are designed to solve non-regular complex problems using extracted cognitive data and inspiring from the human expertise and its best practices. They are based on the machine performance and its ability to carry out a very large number of complex iterations. The Aircraft Landing Scheduling (ALS) problem has been complex and challenging problem in air traffic control for a long time, In practice, it can formulated as a constrained optimization problem that needs to be solved in real-time. The choice of a task scheduling algorithm in a variable and unpredictable real-time system requires the use of an intelligent expert system, having an evolving knowledge base and a creative inference engine. In this paper we present a general architecture and conceptual concepts of our expert system. This expert system allows the choice of the most optimal scheduling algorithm for aircraft landing scheduling.
Keywords :
air traffic control; control engineering computing; expert systems; inference mechanisms; optimisation; scheduling; ALS; air traffic control; aircraft landing scheduling; cognitive data; constrained optimization problem; creative inference engine; human expertise; intelligent expert system; nonregular complex problems; optimal scheduling algorithm; real time algorithms scheduling; Air traffic control; Aircraft; Expert systems; Optimal scheduling; Real-time systems; Scheduling; Aircraft Landing Scheduling; Expert System; Real time system; air traffic management; real time task; real-time scheduling algorithms;
Conference_Titel :
Intelligent Systems and Computer Vision (ISCV), 2015
Conference_Location :
Fez
Print_ISBN :
978-1-4799-7510-5
DOI :
10.1109/ISACV.2015.7105535