Bing Li, Xiaochen Ding, Wenlei Han, L. Cheng, Mengying Yu
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The Number of Passengers Forecast in Emergency Situation of Airport Based on Time Series Analysis
The number of delayed passengers forecast is a key factor to improve the efficiency of airport facility in emergency situation. But it is rarely considered to make a forecast beforehand based on a scientific method preparing for dealing with this kind of event in the future. Aiming at this problem, this paper proposed a forecasting method based on time series analysis. The method provides a relatively all-around approach for airport to better response to emergency.