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Investigating the Random Seat Boarding Method without Seat Assignments with Common Boarding Practices Using an Agent-Based Modeling

过道 飞机 网络标志 鉴定(生物学) 窗口(计算) 棱锥(几何) 计算机科学 工程类 运筹学 广告 业务 数学 万维网 几何学 生物 航空航天工程 结构工程 程序设计语言 植物
作者
Camelia Delcea,Liviu‐Adrian Cotfas,Mostafa Salari,R. John Milne
出处
期刊:Sustainability [Multidisciplinary Digital Publishing Institute]
卷期号:10 (12): 4623-4623 被引量:30
标识
DOI:10.3390/su10124623
摘要

Research related to creating new and improved airplane boarding methods has seen continuous advancement, in recent years, while most of the airline companies have remained committed to the traditional boarding methods. Among the most-used boarding methods, around the world, are back-to-front and random boarding with and without assigned seats. While the other boarding methods used in practice possess strict rules for passengers’ behavior, random without assigned seats is dependent on the passengers own way of choosing the “best” seats. The aim of this paper is to meticulously model the passengers’ behavior, especially, in random boarding without assigned seats and to test its efficiency in terms of boarding time and interferences, in comparison with the other commonly-adopted methods (random boarding with assigned seats, window-middle-aisle (WilMA), back-to-front, reverse pyramid, etc.). One of the main challenges in our endeavor was the identification of the real human passengers’ way of reasoning, when selecting their seats, and creating a model in which the agents possess preferences and make decisions, as close to those decisions made by the human passengers, as possible. We model their choices based on completed questionnaires from three hundred and eighty-seven human subjects. This paper describes the resulting agent-based model and results from the simulations.
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