Forecasting the carsharing service demand using uni and multivariable models

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Alencar, Victor Aquiles, Pessamilio, Lucas Ribeiro, Rooke, Felipe, Bernardino, Heder Soares, Borges Vieira, Alex
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引用次数: 3

Abstract

Carsharing 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.
基于单变量和多变量模型的汽车共享服务需求预测
汽车共享是最近被广泛采用的城市交通的另一种选择。这项服务提供了三种主要的商业模式:其中两种模式的服务基于电台,而其余的自由浮动服务则没有固定电台。尽管拼车有明显的优势,但这种服务也容易出现一些问题,比如由于大城市中心的日常需求差异而导致车队不平衡。预测服务需求是解决这一问题的关键。从这个意义上说,在这项工作中,我们分析了使用众所周知的技术来预测汽车共享服务的需求。更深入地,我们评估了使用长短期记忆(LSTM)和先知技术来预测三种真实的汽车共享服务的需求。此外,我们还在给定的自由浮动汽车共享服务上评估了七个最先进的预测模型,突出了每种技术的潜力。除了历史共享汽车服务数据外,我们还使用气候序列来增强预测。事实上,我们的分析结果表明,气象数据的加入提高了模型的性能。在这种情况下,当使用气候数据时,LSTM的平均绝对误差可能会下降一半。当考虑到自由浮动的汽车共享服务,以及短期(即12小时)的预测时,增强算法(例如XGBoost, Catboost和LightGBM)表现出卓越的性能,与排名第二的模型(Prophet)相比,平均绝对误差小于20%。另一方面,先知在长期预测方面表现更好。
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来源期刊
Journal of Internet Services and Applications
Journal of Internet Services and Applications COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.70
自引率
0.00%
发文量
2
审稿时长
13 weeks
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