Title :
Prediction of weather impacted airport capacity using ensemble learning
Author_Institution :
NASA Ames Res. Center, Moffett Field, CA, USA
Abstract :
Ensemble learning with the Bagging Decision Tree (BDT) model was used to assess the impact of weather on airport capacities at selected high-demand airports in the United States. The ensemble bagging decision tree models were developed and validated using the Federal Aviation Administration (FAA) Aviation System Performance Metrics (ASPM) data and weather forecast at these airports. The study examines the performance of BDT, along with traditional single Support Vector Machines (SVM), for airport runway configuration selection and airport arrival rates (AAR) prediction during weather impacts. Testing of these models was accomplished using observed weather, weather forecast, and airport operation information at the chosen airports. The experimental results show that ensemble methods are more accurate than a single SVM classifier. The airport capacity ensemble method presented here can be used as a decision support model that supports air traffic flow management to meet the weather impacted airport capacity in order to reduce costs and increase safety.
Keywords :
aerospace safety; air traffic control; airports; decision support systems; decision trees; support vector machines; weather forecasting; BDT; Federal Aviation Administration; SVM classifier; airport arrival rate prediction; airport operation information; airport runway configuration selection; aviation system performance metrics; bagging decision tree model; data forecasting; ensemble learning; high-demand airports; support vector machine; weather forecasting; weather impacted airport capacity; Airports; Atmospheric modeling; Data models; Economic indicators; Support vector machines; Weather forecasting;
Conference_Titel :
Digital Avionics Systems Conference (DASC), 2011 IEEE/AIAA 30th
Conference_Location :
Seattle, WA
Print_ISBN :
978-1-61284-797-9
DOI :
10.1109/DASC.2011.6096002