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International Journal of Frontiers in Engineering Technology, 2023, 5(11); doi: 10.25236/IJFET.2023.051104.

Advanced Surface Monitoring and Control System Based on Automatic Navigation

Author(s)

Yu Chaobo1, Lan Chao2

Corresponding Author:
Yu Chaobo
Affiliation(s)

1Guangzhou Civil Aviation College, Guangzhou, 510000, China

2China Southern Airlines, Guangzhou, 510000, China

Abstract

With the increasing speed of the development of the world aviation industry, the scale of international airports has expanded rapidly and the operational traffic increased, resulting in a complexity in the operation of various aircraft and service vehicles in the airport field. There are often sudden incidents caused by human negligence, resulting in scene conflicts, runway incursions, and even aircraft collisions, this brings great pressure to traffic control work. This paper takes solving airport scene traffic as the background, Advanced Surface Monitoring and Control System Based on Automatic Navigation (ASMC-AN) is proposed as a means to solve the problem. The aircraft and vehicles are equipped with monitoring and networking linkage equipment to realize automatic planning of the optimal route, avoid the occurrence of the conflict of scene activities, and ensure the improvement of the safe operation of the airport.

Keywords

ASMC-AN; Surface radar; Automatic planning of optimal routes

Cite This Paper

Yu Chaobo, Lan Chao. Advanced Surface Monitoring and Control System Based on Automatic Navigation. International Journal of Frontiers in Engineering Technology (2023), Vol. 5, Issue 11: 21-26. https://doi.org/10.25236/IJFET.2023.051104.

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