Accurate prediction of taxi-out time is essential for enhancing airport performance and flight efficiency. In this paper, we apply machine learning techniques to predict the taxi- out time of departure aircraft at Shanghai Pudong International Airport. The exploration of historical data reveals several relevant influencing factors of taxi-out time as well as their correlations. We formulate an extensive system of predictors for our machine learning approach, based on a macroscopic network topology from an aggregate view. The predictors can be divided into 4 categories; namely surface instantaneous flow indices (SIFIs), surface cumulative flow indices (SCFIs), aircraft queue length indices (AQLIs) and slot resource demand indices (SRDIs). Th...
Abstract Flight delay prediction is one of the most significant components of intelligent aviation s...
Accurate taxi time prediction is required for enabling efficient runway scheduling that can increase...
This paper proposes a spatial-temporal topology from a macroscopic view to analyze the performance o...
Predicting the taxi-out times of departures accurately is important for improving airport efficiency...
Airports are vital for global connectivity. However, the increasing volume of air travel has present...
All major airport operators face a similar challenge, namely ensuring maximum throughput and maintai...
Taxiing remains a major bottleneck at many airports. Recently, several approaches to allocating effi...
Accurate prediction of taxi-out time is significant precondition for improving the operationality of...
Accurate prediction of taxi-out time is significant precondition for improving the operationality of...
The predicted growth in air transportation and the ambitious goal of the European Commission to have...
Accidents on the runway triggered the development and implementation of mitigation strategies. There...
Abstract Wake re-categorization (RECAT) has been implemented to improve runway capacity, and consequ...
With increasing demand of airport capacity, Changi Airport Group (CAG) is constantly looking at how ...
The departure time uncertainty exacerbates the inaccuracy of arrival time estimation and demand for ...
Taxi time predictions are used by air traffic controllers to optimally release aircraft from the gat...
Abstract Flight delay prediction is one of the most significant components of intelligent aviation s...
Accurate taxi time prediction is required for enabling efficient runway scheduling that can increase...
This paper proposes a spatial-temporal topology from a macroscopic view to analyze the performance o...
Predicting the taxi-out times of departures accurately is important for improving airport efficiency...
Airports are vital for global connectivity. However, the increasing volume of air travel has present...
All major airport operators face a similar challenge, namely ensuring maximum throughput and maintai...
Taxiing remains a major bottleneck at many airports. Recently, several approaches to allocating effi...
Accurate prediction of taxi-out time is significant precondition for improving the operationality of...
Accurate prediction of taxi-out time is significant precondition for improving the operationality of...
The predicted growth in air transportation and the ambitious goal of the European Commission to have...
Accidents on the runway triggered the development and implementation of mitigation strategies. There...
Abstract Wake re-categorization (RECAT) has been implemented to improve runway capacity, and consequ...
With increasing demand of airport capacity, Changi Airport Group (CAG) is constantly looking at how ...
The departure time uncertainty exacerbates the inaccuracy of arrival time estimation and demand for ...
Taxi time predictions are used by air traffic controllers to optimally release aircraft from the gat...
Abstract Flight delay prediction is one of the most significant components of intelligent aviation s...
Accurate taxi time prediction is required for enabling efficient runway scheduling that can increase...
This paper proposes a spatial-temporal topology from a macroscopic view to analyze the performance o...