利用谷歌趋势数据预测Ngurah Rai机场的飞机乘客数量

I Putu Juni Adi Widianata, Nori Wilantika
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引用次数: 0

摘要

飞机乘客数量的数据对机场管理人员和政府的政策至关重要。这项政策涉及改善机场和其他受影响部门的设施和能力,例如运输和旅游业。如果所使用的数据非常接近决策时间,所采取的政策将会更好。因此,需要一种非常接近当前状况的飞机乘客数量预测技术,即临近预报。可用于临近预报的数据源之一是Google Trends数据。在本研究中,识别用于近预报的相关关键词,形成近预报模型,寻找用于近预报飞机乘客数量的最佳模型。使用的临近预测方法是SARIMAX和多层感知器。在本研究中,针对国内出境产生了5个相关关键词,针对国际出境产生了2个相关关键词。在近播建模中,对国内离港产生最佳的近播模型,即MAPE和MAE值分别为11.194%和28.048的多层感知机,对国际离港产生最佳模型SARIMAX, MAPE和MAE值分别为8,641%和50,205。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nowcasting the Number of Airplane Passengers at Ngurah Rai Airport Using Google Trends Data
Data on the number of aircraft passengers is essential to airport managers and the government's policies. The policy relates to improving the facilities and capacity of airports and other affected sectors, such as the transportation and tourism industries. A policy taken will be better if the data used is very close to the time of policy decision-making. Therefore, a technique is needed to forecast very close to the current condition of the number of aircraft passengers, namely nowcasting. One of the data sources that can be used for nowcasting is Google Trends data. In this study, the identification of relevant keywords used for nowcasting, the formation of nowcasting models, and the search for the best model for nowcasting the number of aircraft passengers was carried out. The nowcasting methods used are SARIMAX and multilayer perceptron. In this study, five relevant keywords were generated for domestic departures and two for international departures. In the nowcasting modeling, the best model for nowcasting domestic departures is produced, namely the multilayer perceptron with MAPE and MAE values of 11.194% and 28.048 respectively, while for departures Internationally, the best model was produced, namely SARIMAX with MAPE and MAE values of 8,641% and 50,205 respectively.
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