Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/116210
Title: Predicting short-term urban bike sharing demand in a coupled continuous and network space
Authors: Liang, S 
Xu, Y 
Li, G 
Zhang, X
Li, Q
Issue Date: Jan-2026
Source: Travel behaviour and society, Jan. 2026, v. 42, 101152
Abstract: Bike sharing systems support sustainable urban development, with accurate demand prediction being essential for efficient operations. Previous studies have primarily modeled spatial dependency of bike sharing demand in Euclidean space or among bike stations, but often overlooked topological dependency of demand shaped by urban transportation networks. Metro and cycling networks could influence bike sharing usage through their functional connections with bike sharing systems. To address this gap, this study proposes GeoTopo-Net, a novel deep learning framework to improve short-term demand forecast for urban bike sharing systems. Different from existing solutions, GeoTopo-Net jointly models dependencies of travel demand in both continuous and network spaces. The model utilizes convolutional neural networks (CNNs) to capture spatial dependency between urban areas and their surroundings, while integrating graph convolutional networks (GCNs) to model the topological dependency introduced by urban transportation networks. Our evaluation across five global cities shows that GeoTopo-Net significantly reduces prediction errors, by up to 8.9% in RMSE, 6.8% in MAE, and 5.9% in MAPE. Incorporating dependencies from metro networks produces notable improvements in high-demand areas and those near the metro stations. These findings highlight the importance of incorporating urban transportation network structures in bike sharing demand forecast. The GeoTopo-Net architecture can also be adapted to improve short-term forecast for different types of travel demand (e.g., ride-hailing; electric vehicle charging demand) that involve complex interdependencies in continuous and network spaces.
Keywords: Bike sharing
Deep learning
Demand forecast
Shared mobility
Urban network
Publisher: Elsevier
Journal: Travel behaviour and society 
ISSN: 2214-367X
EISSN: 2214-3688
DOI: 10.1016/j.tbs.2025.101152
Appears in Collections:Journal/Magazine Article

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