AI-driven rental bicycle system: An Ensemble learning approach
Cu Kim Long, Trinh Thi Thu Hoang, Gloria Jeanette Rinco'n Aponte, Vikram Puri
DOI: http://dx.doi.org/10.15439/2023R87
Citation: Proceedings of the 2023 Eighth International Conference on Research in Intelligent Computing in Engineering, Pradeep Kumar, Manuel Cardona, Vijender Kumar Solanki, Tran Duc Tan, Abdul Wahid (eds). ACSIS, Vol. 38, pages 35–39 (2023)
Abstract. Bicycle sharing is a notable sustainable transporta- tion option for metropolitan regions and communities seeking to address environmental concerns, reduce traffic congestion, and combat air pollution while promoting public health and improving connections. There are already technologies to support this system, including typical mobile applications and kiosks strategically positioned at the bicycle station. Nevertheless, most proposed solutions cannot accurately forecast the demand for bicycle availability, efficiently redistribute bicycles, create routes to circumvent traffic congestion and conduct comprehensive user analysis. To address these challenges, a framework for an AI- enabled bicycle-sharing system has been presented to predict the count of bicycle rentals. To assess performance, four distinct ensemble-based models are implemented and tested using various statistical parameters.
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