Prediction of major air traffic flows using ADS-B data
Prediction of air traffic flow, i.e., staggering the air traffic demand over time and space, is a very important activity in Air Traffic Flow Management (ATFM). Accurate air traffic flow prediction can advise ATFM about the forthcoming air traffic in the airspace and help ATFM develop control st...
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Format: | Final Year Project |
Language: | English |
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Nanyang Technological University
2022
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Online Access: | https://hdl.handle.net/10356/159020 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | Prediction of air traffic flow, i.e., staggering the air traffic demand over time and space, is a very
important activity in Air Traffic Flow Management (ATFM). Accurate air traffic flow prediction can
advise ATFM about the forthcoming air traffic in the airspace and help ATFM develop control strategies
in advance to address anticipated saturations in the airspace. There are mainly two ways for air traffic
flow prediction. One way is propagating the trajectories of flights forward in time and counting the
number of aircrafts at a particular sector in the airspace. While making accurate predictions, it does so for
a duration of up to 20 minutes which is far from ideal for ATFM. The other way is the aggregated flow
prediction which provides the distribution of traffic flows in the airspace. One of the state-of-the-art
aggregate prediction approaches is the Linear Dynamic System Model (LDSM) which: i) predicts air
traffic flow for a whole day in advance based on historical data, ii) Accounts for uncertainty in departure.
iii) makes predictions based on number aircrafts in sector in previous time interval is ideal. The LSTM
model has been proposed and applied on the American Airspace. However, it remains to be seen if it can
do so for other airspaces. This report aims to examine the accuracy of air traffic flow prediction using the
LDSM model and analyze the potential influencing factors of the prediction accuracy. Based on the flight
trajectory data, this report has carried out a case study in the Singapore airspace. Results show that the
prediction of air traffic flow for the Singapore airspace is not as accurate as the prediction for the
American airspace |
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