The forecasting of air transport passenger demands in Turkey by using novel meta‐heuristic algorithms

The imbalance between modes of transport in our country appears as the most important problem. Therefore, in air transportation, which has a significant increasing trend, estimating the passenger demand with directly related parameters and novel algorithms is important for Turkey. In this study, dif...

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Veröffentlicht in:Concurrency and computation 2021-08, Vol.33 (16), p.n/a
Hauptverfasser: Korkmaz, Ersin, Akgüngör, Ali Payıdar
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description The imbalance between modes of transport in our country appears as the most important problem. Therefore, in air transportation, which has a significant increasing trend, estimating the passenger demand with directly related parameters and novel algorithms is important for Turkey. In this study, different prediction models were developed applying for the first time with five different meta‐heuristic algorithms which are Flower Pollination Algorithm (FPA), Artificial Bee Colony Algorithm (ABC), Crow Search Algorithm (CSA), Krill Herd Algorithm (KH), and the Butterfly Optimization Algorithm (BOA) to estimate Turkey's air transport demand. While developing the models, Fuel Price, Gross Domestic Product per Capita, Seat Capacity, and Annual Fuel Consumption were selected as the model parameters. Although each model developed using different approaches is applicable, quadratic and power models developed using CSA showed the highest performance. For this reason, future projections were based on these models. Air transport passenger demand was examined using two scenarios in a process until 2035. In the first scenario, according to model forms, Turkey's future air transport passenger demand will reach about 460 and 490 million passengers, respectively. In the second scenario, the number of passengers will reach approximately 375 and 660 million for quadratic and power models, respectively. The results of this study will contribute to the evaluation of the current investment plans and the development of strategic plans that will meet the demands. Additionally, they will help take necessary measures and introduce some necessary regulations to ensure the income and expense balance so that the efficiency of airline companies can be improved.
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source Wiley Online Library Journals Frontfile Complete
subjects air transport passenger demand
Air transportation
Algorithms
artificial bee colony algorithm
butterfly optimization algorithm
crow search algorithm
flower pollination algorithm
Fuel consumption
Heuristic methods
Krill
krill herd algorithm
Model forms
Optimization
Parameters
Passengers
Prediction models
Search algorithms
Swarm intelligence
Travel demand
title The forecasting of air transport passenger demands in Turkey by using novel meta‐heuristic algorithms
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