Determination of the Peak Hour Ridership of Metro Stations in Xi’an, China Using Geographically-Weighted Regression
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- Bowen Hou & Yang Cao & Dongye Lv & Shuzhi Zhao, 2020. "Transit-Based Evacuation for Urban Rail Transit Line Emergency," Sustainability, MDPI, vol. 12(9), pages 1-18, May.
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Keywords
urban rail transit station; peak deviation coefficient; transportation and land use; geographically weighted regression; station design;All these keywords.
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