以大众为本的环保行程规划

Dimitrios Tomaras, V. Kalogeraki, T. Liebig, D. Gunopulos
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引用次数: 7

摘要

近年来,我们见证了人们对旨在组织智能城市日常旅行计划的旅行计划系统的兴趣日益浓厚。这种系统使用专门的引擎来寻找两个地理空间端点之间的最佳交通方式,为市民提供穿越城市的短途路线建议。与此同时,其他交通工具,如共享单车系统,已经取得了巨大的成功,因为它们为日常通勤者和游客提供了一个绿色和便捷的解决方案。然而,自行车共享系统的一个主要挑战是,在高峰时段或由于地形的原因,自行车在车站之间的分布可能相当不均匀。这往往导致自行车短缺,失望的用户越来越多。现有的文献工作是有限的,因为他们只关注预测需求或应用后验方法来平衡车站的负荷。此外,这些工作都没有考虑到这些系统的好处。在这项工作中,我们提出了“MOToR”(多模式行程再平衡),这是一个建立在OpenTripPlanner框架之上的系统,它在平衡自行车站之间的自行车可用性的同时,纳入了动态交通调度数据。我们的实验评估表明,我们的方法是实用的,有效的,并且优于最先进的路线规划方法。
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Crowd-Based Ecofriendly Trip Planning
In recent years we have witnessed a growing interest in trip planning systems aiming at organizing daily travel schedules in smart cities. Such systems use specialized engines to find optimal means of transport between two geospatial endpoints to provide recommendations to citizens for short routes across the city. At the same time, alternative means of transportation, such as bike sharing systems, have enjoyed tremendous success since they offer a green and facile solution for daily commuters and tourists. However, one major challenge of the bike sharing systems is that the distribution of bikes among the stations can be quite uneven during rush hours or due to topography. This often results in shortage of bikes and increasing numbers of disappointed users. Existing works in the literature are limited since they only focus on predicting the demand or apply a-posteriori methods for balancing the load of stations. Furthermore, none of these works consider the benefit of these systems in concert. In this work, we present "MOToR" (MultimOdal Trip Rebalancing), a system that builds upon the OpenTripPlanner framework to incorporate dynamic transit schedule data while balancing the availability of bikes among the bike stations. Our experimental evaluation shows that our approach is practical, efficient and outperforms state-of-the-art methods for route planning.
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