基于灰色模型和月比例系数的铁路客流预测

Li Jun, Zhang Yu-zhao, Zhu Chang-feng
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引用次数: 5

摘要

旅客出站量是火车站的一项重要指标,对组织车站旅客运输工作具有十分重要的意义。针对铁路客流的影响和特点,应用灰色模型对铁路车站年旅客出站量进行预测。然后,根据各月客流的波动规律,采用月比例系数法对各月客流量进行预测。实例表明,本文提出的预测方法具有预测误差小、精度高、计算简便、可操作性好等优点。可为火车站客运计划的确定和日常客运工作的组织提供准确可靠的参考,协助决策者做出正确合理的决策。
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Forecasting of railway passenger flow based on Grey Model and monthly proportional coefficient
Passenger departure volume is a vital index of railway station, which has very important significance to the organization station passenger transportation work. Aiming at the influences and characteristics of railway passenger flow, the Grey Model is applied to forecast annual passenger departure volume of railway station. Then, according to the fluctuating regularity of the passenger flow in each month, the monthly proportional coefficient method is used to predict passenger flow volume of each month. The case shows that the forecasting method putting forward in this paper has many advantages, such as low forecasting error, high accuracy, easy to calculate, and good maneuverability, and so on. It can supply accurate and reliable reference for the determination of railway station passenger transport plan and daily organization of passenger transport work, so as to assist decision-maker to make correct and reasonable decisions.
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