Passenger Flow Scale Prediction of Urban Rail Transit Stations Based on Multilayer Perceptron (MLP)

Luzhou Lin, Yuezhe Gao, Bingxin Cao, Z. Wang, Cai Jia
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引用次数: 2

Abstract

Accurately predicting passenger flow at rail stations is an effective way to reduce operation and maintenance costs, improve the quality of passenger travel while meeting future passenger travel demand. The improvement of data acquisition capability allows fine-grained and large-scale built environment data to be extracted. Therefore, this paper focuses on investigating the relationship between the built environment around the station and the station passenger flow and discusses whether the built environment data can be applied to the station passenger flow prediction. Firstly, the evaluation system of station passenger flow influencing factors is built based on multisource data. The inner relationship between built environment factors and station passenger flow is investigated using the Pearson correlation analysis. Based on this, a multilayer perceptron (MLP)-based passenger flow prediction model was developed to predict the passenger flow at key stations. The study results show that the built environment factors impact station passenger flow, and the MLP prediction model has better prediction accuracy and applicability. The results of the study can be applied to predict the passenger flow scale of rail stations without historical passenger flow data and thus are also applicable to new rail stations.
基于多层感知器(MLP)的城市轨道交通站点客流规模预测
准确预测铁路车站客流是降低运维成本、提高客运质量、满足未来客运需求的有效途径。数据采集能力的提高使得细粒度和大规模的构建环境数据能够被提取出来。因此,本文重点研究了车站周围建成环境与车站客流的关系,并探讨了建成环境数据是否可以应用于车站客流预测。首先,建立了基于多源数据的车站客流影响因素评价体系;利用Pearson相关分析,探讨了建成环境因子与车站客流之间的内在关系。在此基础上,建立了基于多层感知机(MLP)的客流预测模型,对重点车站客流进行预测。研究结果表明,建成环境因素对车站客流影响较大,MLP预测模型具有较好的预测精度和适用性。研究结果可用于无历史客流数据的铁路站点客流规模预测,也适用于新建铁路站点。
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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