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Xie, Yao, Cheng, Biao, Ren, Wei, Zhou, Cuizhu, Liu, Chenhui (2025) Exploration of Travel Patterns of Intercity Metro Passengers—A Case Study in Changsha–Zhuzhou–Xiangtan Metropolitan Area, China. Applied Sciences, 15 (6). doi:10.3390/app15062947

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Reference TypeJournal (article/letter/editorial)
TitleExploration of Travel Patterns of Intercity Metro Passengers—A Case Study in Changsha–Zhuzhou–Xiangtan Metropolitan Area, China
JournalApplied Sciences
AuthorsXie, YaoAuthor
Cheng, BiaoAuthor
Ren, WeiAuthor
Zhou, CuizhuAuthor
Liu, ChenhuiAuthor
Year2025 (March 9)Volume15
Issue6
PublisherMDPI AG
DOIdoi:10.3390/app15062947Search in ResearchGate
Generate Citation Formats
Mindat Ref. ID18152148Long-form Identifiermindat:1:5:18152148:0
GUID0
Full ReferenceXie, Yao, Cheng, Biao, Ren, Wei, Zhou, Cuizhu, Liu, Chenhui (2025) Exploration of Travel Patterns of Intercity Metro Passengers—A Case Study in Changsha–Zhuzhou–Xiangtan Metropolitan Area, China. Applied Sciences, 15 (6). doi:10.3390/app15062947
Plain TextXie, Yao, Cheng, Biao, Ren, Wei, Zhou, Cuizhu, Liu, Chenhui (2025) Exploration of Travel Patterns of Intercity Metro Passengers—A Case Study in Changsha–Zhuzhou–Xiangtan Metropolitan Area, China. Applied Sciences, 15 (6). doi:10.3390/app15062947
In(2025, March) Applied Sciences Vol. 15 (6). MDPI AG

References Listed

These are the references the publisher has listed as being connected to the article. Please check the article itself for the full list of references which may differ. Not all references are currently linkable within the Digital Library.

Pan (2020) J. Transp. Eng. Research on the“Four-Network Integration”System of Multi-Level Rail Transit 20, 1
(2024, September 10). Shanghai and Suzhou Subways Are Connected, Why Are There More and More Cross-City Lines?. Available online: https://www.thepaper.cn/newsDetail_forward_22169506?commTag=true.
Xiao (2013) Rev. Econ. Res. Intercity Subways Should Not Be Widely Promoted 71, 37
Zhao (2022) Hum. Geogr. The Impact Of The Covid-19 Pandemic On Intercity Travel During Chinese Festivals 37, 141
Zhan (2024) Trop. Geogr. Temporal Heterogeneity and Impact Mechanism of Intercity Travel Time in the Yangtze River Delta Region 44, 850
Zhong (2024) Traffic Transp. Railway Passenger Flow Characteristics Between Shenzhen and Cities in the Guangdong Hong Kong Macao Greater Bay Area 37, 152
Wang (2012) Urban Plan. Forum Intercity Trips and Activities: The Case of Guangzhou and Foshan 3, 23
Not Yet Imported: IEEE Transactions on Intelligent Transportation Systems - journal-article : 10.1109/TITS.2016.2600515

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Not Yet Imported: - journal-article : 10.1061/(ASCE)UP.1943-5444.0000501

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Zhang (2023) Comput. Eng. Des. Passenger Flow Trajectory Prediction Model of Urban Rail Transit Based on Passenger Flow Category 44, 1829
Yao (2022) Urban Rapid Rail Transit Time Distribution Types of Passenger Flow Between Urban Rail Transit Stations Based on Spectral Clustering 35, 99
Zhang (2019) Comput. Sci. Subway Passenger Flow Forecasting Model Based on Temporal and Spatial Characteristics 46, 292
Zhu (2024) Stat. Res. Clustering with Distributional Factors Based on Gaussian Mixture Model 41, 147
Not Yet Imported: - journal-article : 10.1146/annurev-statistics-031017-100325

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Wang (2021) Autom. Electr. Power Syst. Short-Term Power Forecasting Method of Wind Farm Based on Gaussian Mixture Model Clustering 45, 37
Li (2019) J. Tsinghua Univ. (Sci. Technol.) Risk Analysis of Metro Station Passenger Flow Based on Passenger Flow Patterns 59, 854
Zhenhong (2017) Urban Rapid Rail Transit Classifications of Metro Stations by Clustering Smart Card Data Using the Gaussian Mixture Model 30, 48
Not Yet Imported: - journal-article : 10.1109/TCBB.2020.3025486

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Not Yet Imported: Travel Behaviour and Society - journal-article : 10.1016/j.tbs.2013.12.002

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Yang (2025) Travel Behav. Soc. Investigating Spatial-Temporal Characteristics of Joint Activity/Travel Behaviour with Smart Card Data 38, 100899
Not Yet Imported: - journal-article : 10.1016/j.tra.2013.10.019

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Not Yet Imported: - journal-article : 10.1007/s12205-015-1694-0

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Fang (2023) Int. Rev. Spat. Plan. Sustain. Dev. Spatio-Temporal Variation of Urban Bus Ridership Using Smart Card Data in a Compact City 11, 192
Not Yet Imported: IET Intelligent Transport Systems - journal-article : 10.1049/itr2.12481

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Zhang (2020) Power Syst. Technol. A Load Classification Method Based on Gaussian Mixture Model Clustering and Multi-Dimensional Scaling Analysis 44, 4283


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To cite: Ralph, J., Von Bargen, D., Martynov, P., Zhang, J., Que, X., Prabhu, A., Morrison, S. M., Li, W., Chen, W., & Ma, X. (2025). Mindat.org: The open access mineralogy database to accelerate data-intensive geoscience research. American Mineralogist, 110(6), 833–844. doi:10.2138/am-2024-9486.
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