数据驱动的城市活动监测数字孪生

Matteo Mendula, Armir Bujari, L. Foschini, P. Bellavista
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引用次数: 1

摘要

传感和通信技术推出的步伐越来越快,为智慧城市应用的具体部署铺平了道路,使数据驱动的流程和环境建模成为可能。特别是,城市设施管理(UFM)进程日益重要,被认为对我们城市的可持续性和发展具有直接影响。在b[1]中,我们提出了UFM过程的数字孪生解决方案的系统视图。该解决方案依赖于(近)实时数据来量化感兴趣领域的活动指数,作为规划决策的基础。在本研究中,我们将重点放在预测子系统上,该子系统的任务是计算活动指数的近中期预测,为UFM运营商提供灵活的决策支持系统。在不丧失一般性的情况下,我们分析了车辆交通成分,活动指数的一部分,评估了不同预测方案的准确性,讨论了一些操作影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-Driven Digital Twin for Urban Activity Monitoring
The increasing pace of sensing and communication technology rollout is paving the way for concrete deployments of smart city applications, enabling a data-driven modeling of processes and the environment. In particular, the Urban Facility Management (UFM) process is growing in importance, recognized to have a direct impact on the sustainability and the development of our cities. In [1] we presented a system's view of a Digital Twin solution for the UFM process. The solution relies on (near)real-time data to quantify the activity index in an area of interest, used as a basis for planning decisions. In this study, we focus on the predictive subsystem, tasked with computing near-to-mid term predictions of the activity index, equipping UFM operators with a flexible decision-support system. Without loss of generality, we present an analysis of the vehicular traffic component, part of the activity index, assessing the accuracy of different predictive schemes, discussing some operational implications.
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