Abstract

Free-Floating Car Sharing (FFCS) services are currently available in tens of cities and countries spread all over the worlds. Depending on citizens’ habits, service policies, and road conditions, car usage profiles are rather variable and often hardly predictable. Even within the same city, different usage trends emerge in different districts and in various time slots and weekdays. Therefore, modeling car availability in FFCS systems is particularly challenging. For these reasons, the research community has started to investigate the applicability of Machine Learning models to analyze FFCS usage data. This paper addresses the problem of predicting the short-term level of availability of the FFCS service in the short term. Specifically, it investigates the applicability of Machine Learning models to forecast the number of available car within a restricted urban area. It seeks the spatial and temporal contexts in which nonlinear ML models, trained on past usage data, are necessary to accurately predict car availability. Leveraging ML has shown to be particularly effective while considering highly dynamic urban contexts, where FFCS service usage is likely to suddenly and unexpectedly change. To tailor predictive models to the real FFCS data, we study also the influence of ML algorithm, prediction horizon, and characteristics of the neighborhood of the target area. The empirical outcomes allow us to provide system managers with practical guidelines to setup and tune ML models.

Highlights

  • Carsharing is among the most innovative and sustainable ways to support mobility in Smart City contexts

  • Recent studies have shown a limited impact of the presence of carsharing on private car ownership [2], the diffusion of Free-Floating Car Sharing (FFCS) services has allowed for achieving significant environmental benefits [3] thanks to CO2 savings, to overcome urban barriers such as the limited dedicated parkings [4], and to provide a segment of the population with enhanced accessibility and mobility options [5]

  • This paper aims at answering the aforesaid question by exploring the spatial and temporal contexts in which regression models provide significant performance improvements compared to simpler linear predictors

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Summary

Introduction

Carsharing is among the most innovative and sustainable ways to support mobility in Smart City contexts. It allows car reservation via mobile app and self-service rental for short trips. Car Sharing (FFCS) Systems, cars can be picked up and returned in any place enabling one-way trips [1]. Recent studies have shown a limited impact of the presence of carsharing on private car ownership [2], the diffusion of FFCS services has allowed for achieving significant environmental benefits [3] thanks to CO2 savings, to overcome urban barriers such as the limited dedicated parkings [4], and to provide a segment of the population with enhanced accessibility and mobility options [5].

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