A platform for research: civil engineering, architecture and urbanism
Framework for hourly demand forecasting of bike-sharing stations: case study of the four main gate areas in Seoul
Shared bicycles represent a sharing economy for solving complex urban traffic problems. Therefore, their demand has been steadily increasing since the introduction of shared bicycles in Seoul. The demand for shared bicycles is influenced not only by temporal characteristics but also by various factors such as the characteristics of the city, the environment around shared bicycle rental station, and physical urban network. Therefore, the primary purpose of this study is to discover the factors affecting the demand for shared bicycles and develop models that predict the demand for each shared bicycle rental station over time, reflecting the influence of these factors. In this study, 263 shared bicycle rental stations in the four main gates at the centre of Seoul were classified through time-series clustering analysis, and the demand of each rental station was estimated by time using the random forest method. Consequently, it was found that the amount of rental and return an hour before and the temperature and precipitation an hour before were significant factors in predicting the demand for the next period. Furthermore, it was found that the cluster model considering the characteristics of time-series changes was more accurate than the models that were not cluster-specific. It is expected that future research will monitor the inventory of bicycles at rental stations and establish strategies for relocation using the predicted demand obtained by the framework of the analysis.
Framework for hourly demand forecasting of bike-sharing stations: case study of the four main gate areas in Seoul
Shared bicycles represent a sharing economy for solving complex urban traffic problems. Therefore, their demand has been steadily increasing since the introduction of shared bicycles in Seoul. The demand for shared bicycles is influenced not only by temporal characteristics but also by various factors such as the characteristics of the city, the environment around shared bicycle rental station, and physical urban network. Therefore, the primary purpose of this study is to discover the factors affecting the demand for shared bicycles and develop models that predict the demand for each shared bicycle rental station over time, reflecting the influence of these factors. In this study, 263 shared bicycle rental stations in the four main gates at the centre of Seoul were classified through time-series clustering analysis, and the demand of each rental station was estimated by time using the random forest method. Consequently, it was found that the amount of rental and return an hour before and the temperature and precipitation an hour before were significant factors in predicting the demand for the next period. Furthermore, it was found that the cluster model considering the characteristics of time-series changes was more accurate than the models that were not cluster-specific. It is expected that future research will monitor the inventory of bicycles at rental stations and establish strategies for relocation using the predicted demand obtained by the framework of the analysis.
Framework for hourly demand forecasting of bike-sharing stations: case study of the four main gate areas in Seoul
Hong, Jungyeol (author) / Han, Eunryong (author) / Park, Dongjoo (author)
International Journal of Urban Sciences ; 28 ; 735-750
2024-10-01
16 pages
Article (Journal)
Electronic Resource
English
A Method of Bike Sharing Demand Forecasting
British Library Conference Proceedings | 2014
|Optimization of pumping schedule based on forecasting the hourly water demand in Seoul
Online Contents | 2007
|Impacts of COVID-19 on bike-sharing usages in Seoul, South Korea
Elsevier | 2022
|