Xiaozhen Liang, Chenxi Hong, Jiaqi Chen, Yingying Wang, Mingge Yang
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引用次数: 0
摘要
随着全球数字化进程的加快和互联网技术的突破,世界各国政府都在倡导数据驱动决策,旨在提高公共服务效率和刺激经济增长。在此背景下,本研究将重点放在利用搜索引擎数据(SED)改进航空客运需求预测上,以响应国家旨在提高数据分析能力和促进智能交通系统发展的政策;然而,现有研究仅限于探索 SED 与航空客运需求变量之间的时间依赖关系,而忽略了空间依赖关系。为了消除这一盲点,从游客关注的各个环节入手,本研究受相邻旅游目的地之间空间效应理论的启发,提出了一种新颖的 SED 驱动混合预测架构。该架构包括三个主要步骤:(1) 基于两阶段数据预处理方法构建时空 SED 变量;(2) 基于 TVF-EMD 算法进行变量分解和重构;(3) 分别采用 ARIMA 模型和基于 IHGS-KELM 的多模型融合策略预测航空客运需求的不同组成部分,其中 IHGS 算法集成了圆混沌初始化策略和非线性收敛因子策略。为了证实这种混合架构的实用性,设计了五个基于实际数据集的对比实验。主要结果总结如下(1)时空 SED 有利于实现相当准确的航空客运需求预测;(2)多模型融合策略可以整合各类预测模型的优势,获得更好的预测精度;(3)基于 IHGS-KELM 的自适应集合方法有助于提升航空客运需求预测性能。
A hybrid forecasting architecture for air passenger demand considering search engine data and spatial effect
As the global process of digitalization accelerates and breakthroughs in internet technology emerge, governments worldwide are advocating for data-driven decision-making, aiming to enhance public service efficiency and stimulate economic growth. Against this backdrop, this study focuses on utilizing search engine data (SED) to improve air passenger demand forecasting, responding to national policies aimed at enhancing data analysis capabilities and promoting the development of intelligent transportation systems; however, the existing research is confined to the exploration of the temporal dependency between SED and air passenger demand variables with ignoring the spatial dependency. In order to eliminate this blind spot and catch from various parts of tourist attention, this study proposes a novel SED-driven hybrid forecasting architecture inspired by the theory of spatial effect between adjacent tourist destinations. The architecture includes three main steps: (1) construction of spatial-temporal SED variables, based on two-stage data preprocessing method; (2) variable decomposition and reconstruction, based on TVF-EMD algorithm; (3) prediction of different components of air passenger demand, employed ARIMA model and IHGS-KELM based multi-model fusion strategy respectively, where the IHGS algorithm integrates the circle chaos initialization strategy and the nonlinear convergence factor strategy. To confirm the practical applicability of this hybrid architecture, five comparative experiments based on the actual dataset are designed. The principal results are concluded as follows: (1) spatial-temporal SED is conducive to a fairly accurate air passenger demand forecasting; (2) the multi-model fusion strategy can integrate the fortes of various types of prediction models to obtain better prediction accuracy; (3) the adaptive ensemble method based on IHGS-KELM can contribute to the upgradation of prediction performance of air passenger demand.
期刊介绍:
The Journal of Air Transport Management (JATM) sets out to address, through high quality research articles and authoritative commentary, the major economic, management and policy issues facing the air transport industry today. It offers practitioners and academics an international and dynamic forum for analysis and discussion of these issues, linking research and practice and stimulating interaction between the two. The refereed papers in the journal cover all the major sectors of the industry (airlines, airports, air traffic management) as well as related areas such as tourism management and logistics. Papers are blind reviewed, normally by two referees, chosen for their specialist knowledge. The journal provides independent, original and rigorous analysis in the areas of: • Policy, regulation and law • Strategy • Operations • Marketing • Economics and finance • Sustainability