Research on Chengdu air cargo forecast based on improved ARIMA-GARCH

H. Xueqin, Jiang Ruimin, W. Yaqi
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引用次数: 1

Abstract

With the transformation of China's economic growth mode and the upgrading of industrial structure, aviation logistics is becoming a strategic industry for China's economic and social development. Accurately predicting the dynamic trend of air cargo volume plays an important role in China's aviation logistics planning and construction, which will promote China's economic and social sustainable development. Due to the long-term trend, seasonal effect and uncertainty characteristics of air cargo volume, a single prediction model can not fit the trend of air cargo volume better, resulting in lower prediction accuracy. In this paper, based on the improved ARIMA-GARCH model, the Chengdu air cargo volume prediction model is established. In which, based on the ARIMA-GARCH model, the default white noise sequence in the GARCH model is replaced by the distribution estimated by the Bootstrap algorithm, thus improving the model's prediction precision.
随着中国经济增长方式的转变和产业结构的升级,航空物流正成为中国经济社会发展的战略性产业。准确预测航空货运量的动态趋势,对中国航空物流规划与建设具有重要意义,将促进中国经济社会的可持续发展。由于航空货运量的长期趋势、季节性效应和不确定性等特点,单一的预测模型不能很好地拟合航空货运量的趋势,导致预测精度较低。本文基于改进的ARIMA-GARCH模型,建立了成都航空货运量预测模型。其中,基于ARIMA-GARCH模型,将GARCH模型中的默认白噪声序列替换为Bootstrap算法估计的分布,从而提高了模型的预测精度。
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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