Systematic review of passenger demand forecasting in aviation industry

被引:0
|
作者
Renju Aleyamma Zachariah
Sahil Sharma
Vijay Kumar
机构
[1] Sabre Travel Technologies India Private Limited,Computer Science and Engineering Department
[2] Punjab Engineering College,Department of Information Technology
[3] Dr. B R Ambedkar National Institute of Technology,undefined
来源
关键词
Aviation demand forecasting; Deep learning; Passenger throughput; Statistical approach;
D O I
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学科分类号
摘要
Forecasting aviation demand is a significant challenge in the airline industry. The design of commercial aviation networks heavily relies on reliable travel demand predictions. It enables the aviation industry to plan ahead of time, evaluate whether an existing strategy needs to be revised, and prepare for new demands and challenges. This study examines recently published aviation demand studies and evaluates them in terms of the various forecasting techniques used, as well as the advantages and disadvantages of each. This study investigates numerous forecasting techniques for passenger demand, emphasizing the multiple factors that influence aviation demand. It examined the benefits and drawbacks of various models ranging from econometric to statistical, machine learning to deep neural networks, and the most recent hybrid models. This paper discusses multiple application areas where passenger demand forecasting is used effectively. In addition to the benefits, the challenges and potential future scope of passenger demand forecasting were discussed. This study will be helpful to future aviation researchers while also inspiring young researchers to pursue careers in this industry.
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页码:46483 / 46519
页数:36
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