共享交通中的机器学习系统文献综述

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Julian Teusch;Jan Niklas Gremmel;Christian Koetsier;Fatema Tuj Johora;Monika Sester;David M. Woisetschläger;Jörg P. Müller
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引用次数: 0

摘要

共享交通已成为私人交通和传统公共交通的可持续替代方式,有望减少道路上的私家车数量,同时为用户提供更大的灵活性。如今,城市地区出现了无数创新服务,包括汽车共享、乘车共享以及轻便摩托车共享、自行车共享和电动滑板车共享等微型交通解决方案。鉴于共享交通系统竞争激烈、运营复杂,提供商越来越多地寻求专门的决策支持方法来提高运营效率。尽管最近的研究表明,先进的机器学习方法可以应对共享交通管理决策中的复杂挑战,但对现有研究进行全面评估对于充分把握其潜力和确定需要进一步探索的领域至关重要。本文针对机器学习在共享交通系统决策中的应用进行了系统的文献综述。我们的综述强调,机器学习为共享交通系统的有效运营所面临的具体管理挑战提供了方法论解决方案。我们深入探讨了所采用的方法和数据集,重点介绍了研究趋势,并指出了研究差距。我们的研究结果最终形成了一个机器学习技术的综合框架,该框架旨在支持管理决策,以应对共享交通系统在各个层面所面临的具体挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Systematic Literature Review on Machine Learning in Shared Mobility
Shared mobility has emerged as a sustainable alternative to both private transportation and traditional public transport, promising to reduce the number of private vehicles on roads while offering users greater flexibility. Today, urban areas are home to a myriad of innovative services, including car-sharing, ride-sharing, and micromobility solutions like moped-sharing, bike-sharing, and e-scooter-sharing. Given the intense competition and the inherent operational complexities of shared mobility systems, providers are increasingly seeking specialized decision-support methodologies to boost operational efficiency. While recent research indicates that advanced machine learning methods can tackle the intricate challenges in shared mobility management decisions, a thorough evaluation of existing research is essential to fully grasp its potential and pinpoint areas needing further exploration. This paper presents a systematic literature review that specifically targets the application of Machine Learning for decision-making in Shared Mobility Systems. Our review underscores that Machine Learning offers methodological solutions to specific management challenges crucial for the effective operation of Shared Mobility Systems. We delve into the methods and datasets employed, spotlight research trends, and pinpoint research gaps. Our findings culminate in a comprehensive framework of Machine Learning techniques designed to bolster managerial decision-making in addressing challenges specific to Shared Mobility across various levels.
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