Machine learning algorithm to predict runway exits at Changi Airport
With increasing demand of airport capacity, Changi Airport Group (CAG) is constantly looking at how to increase the airport capacity to enhance overall passenger experience. Studies had been done to understand the factors that influence the runway capacity. One of the factors is the type and locatio...
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Format: | Final Year Project |
Language: | English |
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Nanyang Technological University
2020
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Online Access: | https://hdl.handle.net/10356/138838 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | With increasing demand of airport capacity, Changi Airport Group (CAG) is constantly looking at how to increase the airport capacity to enhance overall passenger experience. Studies had been done to understand the factors that influence the runway capacity. One of the factors is the type and location of runway exits. Since trailing aircraft cannot land before leading aircraft is clear of the runway therefore, location of the runway exit may affect the overall runway occupancy time. Based on various review of literature on utilising machine learning, it has proved that using machine learning models can make accurate predictions and able to provide solutions to numerous industries. However, there has been lack of research in predicting the runway exit for approaches using machine learning. This project aims to create a machine learning model to accurately predict runway exits for approaching aircraft to boost confidence of controllers resulting in smaller buffer that increases overall capacity without compromising safety. The prediction of runway exits was performed using the features extracted from A-SMGCS and the model could achieve eight out of ten correct predictions with Random forest classifier. The results indicate that the accuracy increases when the aircraft approaches closer to the runway exits. Further analysis had been done to understand the limitations in the predictions. Also, future work is needed to identify other features that could enhance the accuracy and efficiency of the prediction model. |
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