DOI QR코드

DOI QR Code

A Take-off Clearance Prediction Model for Mixed Mode Runway Operations

출·도착 혼합 사용 활주로에서의 관제사 이륙 허가 예측 모형 개발

  • 홍성권 (한국항공우주연구원 위성항법.응용기술센터) ;
  • 전대근 (한국항공우주연구원 위성항법.응용기술센터) ;
  • 김현경 (한국항공우주연구원 위성항법.응용기술센터)
  • Received : 2016.08.21
  • Accepted : 2016.09.29
  • Published : 2016.09.30

Abstract

This paper proposes a prediction model of air traffic controller's take-off clearance under mixed mode runway operations. The proposed model has its purpose on the better prediction of the air traffic controller's clearance on take-offs of departure aircraft by considering various factors. For this purpose, support vector machine classification algorithm is used for the proposed model. The proposed model is applied to real air traffic operations to demonstrate its performances.

Keywords

References

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