Abstract As an important task for the management of bike sharing systems, accurate forecast of travel demand could facilitate dispatch and relocation of bicycles to improve user satisfaction. In recent years, many deep learning algorithms have been introduced to improve bicycle usage forecast. A typical practice is to integrate convolutional (CNN) and recurrent neural network (RNN) to capture spatial–temporal dependency in historical travel demand. For typical CNN, the convolution operation is conducted through a kernel that moves across a “matrix-format” city to extract features over spatially adjacent urban areas. This practice assumes that areas close to each other could provide useful information that improves prediction accuracy. However, bicycle usage in neighboring areas might not always be similar, given spatial variations in built environment characteristics and travel behavior that affect cycling activities. Yet, areas that are far apart can be relatively more similar in temporal usage patterns. To utilize the hidden linkage among these distant urban areas, the study proposes an irregular convolutional Long-Short Term Memory model (IrConv+LSTM) to improve short-term bike sharing demand forecast. The model modifies traditional CNN with irregular convolutional architecture to leverage the hidden linkage among “semantic neighbors”. The proposed model is evaluated with a set of benchmark models in five study sites, which include one dockless bike sharing system in Singapore, and four station-based systems in Chicago, Washington, D.C., New York, and London. We find that IrConv+LSTM outperforms other benchmark models in the five cities. The model also achieves superior performance in areas with varying levels of bicycle usage and during peak periods. The findings suggest that “thinking beyond spatial neighbors” can further improve short-term travel demand prediction of urban bike sharing systems.

    Highlights Propose an Irregular Convolutional Long Short-Term Memory Network (IrConv+LSTM) model. Introduce the novel concept of semantic neighbors. IrConv+LSTM with semantic neighbors outperforms benchmark models in the five cities. Leveraging hidden linkage over areas with similar usage patterns facilitates the demand forecast.


    Zugriff

    Zugriff prüfen

    Verfügbarkeit in meiner Bibliothek prüfen

    Bestellung bei Subito €


    Exportieren, teilen und zitieren



    Titel :

    Improving short-term bike sharing demand forecast through an irregular convolutional neural network


    Beteiligte:
    Li, Xinyu (Autor:in) / Xu, Yang (Autor:in) / Zhang, Xiaohu (Autor:in) / Shi, Wenzhong (Autor:in) / Yue, Yang (Autor:in) / Li, Qingquan (Autor:in)


    Erscheinungsdatum :

    2022-12-05




    Medientyp :

    Aufsatz (Zeitschrift)


    Format :

    Elektronische Ressource


    Sprache :

    Englisch




    Temporal Travel Demand Analysis of Irregular Bike-Sharing Users

    Jaber, Ahmed / Csonka, Bálint | British Library Conference Proceedings | 2022



    Long-term & short-term bike sharing demand predictions using contextual data

    Tabandeh, Mirfarnam / Antoniou, Constantinos / Cantelmo, Guido | IEEE | 2023


    Short-Term Forecast of Bicycle Usage in Bike Sharing Systems: A Spatial-Temporal Memory Network

    Li, Xinyu / Xu, Yang / Chen, Qi et al. | IEEE | 2022

    Freier Zugriff

    Short-term demand forecasting for bike sharing system based on machine learning

    Yang, Hongtai / Zhang, Xundi / Zhong, Lizhi et al. | IEEE | 2019