A Comparative Study of Explanatory and Predictive Models in Air Cargo Throughput

Lele Zhou, Hyang-sook Lee
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Abstract

Air cargo throughput has played an important role in the contribution of total national commerce volume and regional GDP, by the expansion of the global economy. Previous studies have identified the critical significance of air freight in national or international economic growth. Various models, including linear regression and time-series models, have been applied to analyze and predict the factors influencing air cargo volumes and the trends for future development. However, many models are implemented as a single methodology, but a few studies reviewed and mixed explanatory and predictive models at the same time. Therefore, three mainly used methodologies of MLR (multiple linear regression), PCA (principal component analysis), and ARIMA (autoregressive integrated moving average model) are chosen for this paper to compare and analyze the air cargo throughput of one Asia’s representative airport, Shanghai Pudong Airport (PVG). The results of the explanatory model shows that GDP, population, oil consumption, and exchange rate are regarded as the four most important variables influencing PVG air cargo volumes. The outcomes of regressive predictive model presents that MLR-PCA has a better performance than MLR, while in ARIMA predictors, the ARIMA (p:12, d:0, q:0) is shown to have a superior predictive fit than the ARIMA (p:1, d:0, q:0). By comparing different methodologies, this paper contributes to the industry’s study of the variables affecting air cargo and the future improvement of air cargo throughput forecasting capabilities.
航空货物吞吐量解释模型与预测模型的比较研究
随着全球经济的扩张,航空货运吞吐量对国家商业总量和地区GDP的贡献发挥了重要作用。以前的研究已经确定了航空货运在国家或国际经济增长中的重要意义。我们运用各种模型,包括线性回归和时间序列模型,分析和预测影响航空货运量的因素和未来发展趋势。然而,许多模型是作为单一的方法实施的,但少数研究同时审查和混合解释和预测模型。因此,本文选择了多元线性回归(MLR)、主成分分析(PCA)和自回归综合移动平均模型(ARIMA)三种主要的方法对亚洲代表性机场上海浦东机场(PVG)的航空货运吞吐量进行了比较和分析。解释模型的结果表明,GDP、人口、石油消费和汇率是影响PVG航空货运量的四个最重要的变量。回归预测模型的结果表明,MLR- pca的预测效果优于MLR,而在ARIMA预测模型中,ARIMA (p:12, d:0, q:0)的预测拟合效果优于ARIMA (p:1, d:0, q:0)。通过比较不同的方法,本文有助于业界研究影响航空货运的变量,并有助于未来航空货运吞吐量预测能力的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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