Forecasting the carsharing service demand using uni and multivariable models

Author:

Alencar Victor AquilesORCID,Pessamilio Lucas Ribeiro,Rooke Felipe,Bernardino Heder Soares,Borges Vieira Alex

Abstract

AbstractCarsharing is ana lternative to urban mobility that has been widely adopted recently. This service presents three main business models: two of these models base their services on stations while the remainder, the free-floating service, is free of fixed stations. Despite the notable advantages of carsharing, this service is prone to several problems, such as fleet imbalance due to the variance of the daily demand in large urban centers. Forecasting the demand for the service is a key task to deal with this issue. In this sense, in this work, we analyze the use of well-known techniques to forecast a carsharing service demand. More in deep, we evaluate the use of the Long Short-Term Memory (LSTM) and Prophet techniques to predict the demand of three real carsharing services. Moreover, we also evaluate seven state-of-the-art forecasting models on a given free-floating carsharing service, highlighting the potentials of each technique. In addition to historical carsharing service data, we have also used climatic series to enhance the forecasting. Indeed, the results of our analysis have shown that the addition of meteorological data improved the models’ performance. In this case, the mean absolute error of LSTM may fall by half, when using the climate data. When considering the free-floating carsharing service, and prediction for the short-term (i.e., 12 hours), the boosting algorithms (e.g. XGBoost, Catboost, and LightGBM) present superior performance, with less than 20% of mean absolute error when compared to the next best-ranked model (Prophet). On the other hand, Prophet performed better for predictions conducted on long-term periods.

Funder

Coordena??o de Aperfei?oamento de Pessoal de N?vel Superior

Funda??o de Amparo ? Pesquisa do Estado de Minas Gerais

Conselho Nacional de Desenvolvimento Cient?fico e Tecnol?gico

Publisher

Sociedade Brasileira de Computacao - SB

Subject

Computer Networks and Communications,Computer Science Applications

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1. Short-term Forecasting of the Wind Power Generation of Brazilian Power Stations Using an LSTM Model;Proceedings of the 20th Brazilian Symposium on Information Systems;2024-05-20

2. A Unified Spatio-Temporal Inference Network for Car-Sharing Serial Prediction;Sensors;2024-02-16

3. Fake it till you make it: Synthetic data for emerging carsharing programs;Transportation Research Part D: Transport and Environment;2024-02

4. A Space-Time Model for Demand in Free-Floating Carsharing Systems;Journal of Advanced Transportation;2023-09-30

5. CARSHARING AS AN ELEMENT OF MOBILITY MANAGEMENT;Polish Journal of Management Studies;2023-06

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