...
首页> 外文期刊>Transportation Research Procedia >An optimization model for renting public parking slots to carsharing services
【24h】

An optimization model for renting public parking slots to carsharing services

机译:租用公共停车槽到Carsharing Services的优化模型

获取原文
           

摘要

Smart mobility systems represent a new generation of transport systems that are strongly supported by information and communications technologies, allowing a continuous connection between the system administrators, the customers/users, the transport infrastructures and the vehicles. A major example of these systems is represented by carsharing. Carsharing can relieve people from the costly and non-sustainable burden of owning a car, especially when residing in a city. Furthermore, it can reduce pollution and traffic congestion and has been worldwide recognized as a fundamental component of smart cities by policy-makers In this study, we provide an overview of relevant regulations for carsharing, highlighting in particular the importance of parking policies. Given this importance, we propose a mathematical optimization model that can be used by a local government to analytically choose the best subset of parking slots to rent to carsharing companies, in order to improve urban mobility. We test the model on realistic data of the city of Rome, showing that we can obtain a fair territorial distribution of the parking slots that satisfies population needs. The data were defined on the basis of our collaboration with professionals of the electric utility company Enel within E-Go Car Sharing, an electrical vehicle carsharing service established at the University Roma Tre.
机译:智能移动系统代表新一代的传输系统,这些传输系统被信息和通信技术强烈支持,允许系统管理员,客户/用户,运输基础设施和车辆之间的连续连接。这些系统的一个主要示例由Carsharing表示。 Carsharing可以缓解来自拥有汽车的昂贵和不可持续的责任,特别是在居住在一个城市时。此外,它可以减少污染和交通拥堵,并在全球范围内通过本研究的政策制定者被公认为智慧城市的基本组成部分,我们概述了卡松的相关法规,特别突出了停车政策的重要性。鉴于这一重要性,我们提出了一个数学优化模型,可以由当地政府使用,分析为租用汽车公司的最佳停车位子集,以改善城市移动性。我们在罗马市的现实数据上测试模型,表明我们可以获得满足人口需求的驻车槽的公平领土分布。该数据是根据我们在E-Go Car分享中与电气公用事业公司ENEL的专业人士合作的基础上定义的,该服务于大学ROMA TRE建立的电动汽车。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号