大型智慧城市模拟中基于相扑的停车管理框架

Lara Codecà, J. Erdmann, Jérôme Härri
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引用次数: 11

摘要

我们共同决定,投资智慧城市,进而投资智能交通,是解决交通拥堵和可持续增长问题的正确方向。在与交通拥堵相关的问题中,我们发现了高效的多模式通勤和最终寻找停车位的复杂性。理想情况下,对于用户来说,移动出行应该是一种透明的服务,寻找停车位的问题不应该摆在首位。为了实现这一目标,我们需要研究大规模的停车场管理优化。最近,我们达到了模拟和优化大型城市的计算能力,但诸如模型的复杂性,可靠数据源的可用性以及灵活的模拟框架等问题仍然是一个现实。我们提出了通用的Python停车监控库(PyPML)和移动性模拟框架。我们将讨论实现细节,重点关注多模式移动功能。我们提供了多个用例来展示功能,并强调为什么我们需要大规模模拟。最后,我们评估了PyPML的性能,并讨论了它的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A SUMO-Based Parking Management Framework for Large-Scale Smart Cities Simulations
We collectively decided that investing in smart cities, and consequently smart mobility, is the appropriate direction to solve traffic congestion and sustainable growth issues. Among the problems linked to traffic congestion, we find the complexity of efficient multi-modal commuting and the eventual search of a parking spot. Ideally, mobility should be a transparent service for the users and the quest to find parking should not exist in the first place. In order to achieve this goal, we need to study large-scale parking management optimizations. Recently we reached the computational power to simulate and optimize large-scale cities, but problems such as the complexity of the models, the availability of a reliable source of data, and flexible simulation frameworks are still a reality. We present the general-purpose Python Parking Monitoring Library (PyPML) and the mobility simulation framework. We discuss the implementation details, focusing on multi-modal mobility capabilities. We present multiple use-cases to showcase features and highlight why we need large-scale simulations. Finally, we evaluate PyPML performances, and we discuss its evolution.
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