Analysis of Prediction Accuracy under the Selection of Optimum Time Granularity in Different Metro Stations

The improvement of accuracy of short-term passenger flow prediction plays a key role in the efficient and sustainable development of metro operation. The primary objective of this study is to explore the factors that influence prediction accuracy from time granularity and station class. An important...

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Main Authors: Peikun Li, Chaoqun Ma, Jing Ning, Yun Wang, Caihua Zhu
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/11/19/5281
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spelling doaj-1d9e91dcceb04fa89e393782db95ef862020-11-25T02:22:04ZengMDPI AGSustainability2071-10502019-09-011119528110.3390/su11195281su11195281Analysis of Prediction Accuracy under the Selection of Optimum Time Granularity in Different Metro StationsPeikun Li0Chaoqun Ma1Jing Ning2Yun Wang3Caihua Zhu4School of Highway, Chang’an University, Xi’an 710064, ChinaSchool of Highway, Chang’an University, Xi’an 710064, ChinaSchool of Highway, Chang’an University, Xi’an 710064, ChinaSchool of Highway, Chang’an University, Xi’an 710064, ChinaSchool of Highway, Chang’an University, Xi’an 710064, ChinaThe improvement of accuracy of short-term passenger flow prediction plays a key role in the efficient and sustainable development of metro operation. The primary objective of this study is to explore the factors that influence prediction accuracy from time granularity and station class. An important aim of the study was also in presenting the proposition of change in a forecasting method. Passenger flow data from 87 Metro stations in Xi&#8217;an was collected and analyzed. A framework of short-term passenger flow based on the Empirical Mode Decomposition-Support Vector Regression (EMD-SVR) was proposed to predict passenger flow for different types of stations. Also, the relationship between the generation of passenger flow prediction error and passenger flow data was investigated. First, the metro network was classified into four categories by using eight clustering factors based on the characteristics of inbound passenger flow. Second, Pearson correlation coefficient was utilized to explore the time interval and time granularity for short-term passenger flow prediction. Third, the EMD-SVR was used to predict the passenger flow in the optimal time interval for each station. Results showed that the proposed approach has a significant improvement compared to the traditional passenger flow forecast approach. Lookback Volatility (LVB) was applied to reflect the fluctuation difference of passenger flow data, and the linear fitting of prediction error was conducted. The goodness-of-fit (R<sup>2</sup>) was found to be 0.768, indicating a good fitting of the data. Furthermore, it revealed that there are obvious differences in the prediction error of the four kinds of stations.https://www.mdpi.com/2071-1050/11/19/5281metro stationpassenger flow predictiontime granularityforecast errorlookback-volatility
collection DOAJ
language English
format Article
sources DOAJ
author Peikun Li
Chaoqun Ma
Jing Ning
Yun Wang
Caihua Zhu
spellingShingle Peikun Li
Chaoqun Ma
Jing Ning
Yun Wang
Caihua Zhu
Analysis of Prediction Accuracy under the Selection of Optimum Time Granularity in Different Metro Stations
Sustainability
metro station
passenger flow prediction
time granularity
forecast error
lookback-volatility
author_facet Peikun Li
Chaoqun Ma
Jing Ning
Yun Wang
Caihua Zhu
author_sort Peikun Li
title Analysis of Prediction Accuracy under the Selection of Optimum Time Granularity in Different Metro Stations
title_short Analysis of Prediction Accuracy under the Selection of Optimum Time Granularity in Different Metro Stations
title_full Analysis of Prediction Accuracy under the Selection of Optimum Time Granularity in Different Metro Stations
title_fullStr Analysis of Prediction Accuracy under the Selection of Optimum Time Granularity in Different Metro Stations
title_full_unstemmed Analysis of Prediction Accuracy under the Selection of Optimum Time Granularity in Different Metro Stations
title_sort analysis of prediction accuracy under the selection of optimum time granularity in different metro stations
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2019-09-01
description The improvement of accuracy of short-term passenger flow prediction plays a key role in the efficient and sustainable development of metro operation. The primary objective of this study is to explore the factors that influence prediction accuracy from time granularity and station class. An important aim of the study was also in presenting the proposition of change in a forecasting method. Passenger flow data from 87 Metro stations in Xi&#8217;an was collected and analyzed. A framework of short-term passenger flow based on the Empirical Mode Decomposition-Support Vector Regression (EMD-SVR) was proposed to predict passenger flow for different types of stations. Also, the relationship between the generation of passenger flow prediction error and passenger flow data was investigated. First, the metro network was classified into four categories by using eight clustering factors based on the characteristics of inbound passenger flow. Second, Pearson correlation coefficient was utilized to explore the time interval and time granularity for short-term passenger flow prediction. Third, the EMD-SVR was used to predict the passenger flow in the optimal time interval for each station. Results showed that the proposed approach has a significant improvement compared to the traditional passenger flow forecast approach. Lookback Volatility (LVB) was applied to reflect the fluctuation difference of passenger flow data, and the linear fitting of prediction error was conducted. The goodness-of-fit (R<sup>2</sup>) was found to be 0.768, indicating a good fitting of the data. Furthermore, it revealed that there are obvious differences in the prediction error of the four kinds of stations.
topic metro station
passenger flow prediction
time granularity
forecast error
lookback-volatility
url https://www.mdpi.com/2071-1050/11/19/5281
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AT jingning analysisofpredictionaccuracyundertheselectionofoptimumtimegranularityindifferentmetrostations
AT yunwang analysisofpredictionaccuracyundertheselectionofoptimumtimegranularityindifferentmetrostations
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