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首页> 外文期刊>Journal of Computing in Civil Engineering >Urban Data Integration Using Proximity Relationship Learning for Design, Management, and Operations of Sustainable Urban Systems
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Urban Data Integration Using Proximity Relationship Learning for Design, Management, and Operations of Sustainable Urban Systems

机译:使用邻近关系学习进行城市数据集成,以进行可持续城市系统的设计,管理和运营

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摘要

The world is rapidly urbanizing, with 66% of the world's population expected to reside in cities by 2050. This massive influx of new urban citizens is putting enormous pressure on city systems and bringing forth challenges at the intersection of urban infrastructure, governance, and the environment. As a result, researchers and practitioners have turned to new advanced sensing and data analytics developed under the burgeoning smart city movement to improve the design, management, and operations of urban systems. However, it has been challenging to integrate, organize, and analyze the data emerging from urban systems due to their natural spatial, temporal and typological heterogeneity. This paper introduces an urban data integration (UDI) framework that is capable of integrating heterogeneous urban data. The proposed UDI framework is extensible to multiple types of urban systems, scalable to the growing volume of data streams (as a result of increasing geographical areas, higher sampling frequencies, and so on), and interpretable enough to help inform municipal decision-making. The UDI framework uses a series of proximity relationship learning algorithms to reconstruct urban data in a graph database. The merits, applicability, and efficacy of the proposed framework is demonstrated by validating and testing it on data from a midsize city in the United States and by benchmarking its interpretability and computational performance for a typical urban analytics scenario against current practice (i.e., a relational database). Results indicate that the UDI framework provides easier and more computationally efficient exploration and querying of urban data, and in turn can enable new computational approaches to urban system design, management, and operations.
机译:世界正在迅速城市化,到2050年,预计将有66%的人口居住在城市中。大量的新城市居民涌入给城市系统带来了巨大压力,并在城市基础设施,治理和城市发展的交汇处带来了挑战。环境。结果,研究人员和从业人员转向了在新兴的智能城市运动下开发的新的先进传感和数据分析,以改善城市系统的设计,管理和运营。但是,由于其自​​然的空间,时间和类型异质性,整合,组织和分析城市系统中出现的数据一直是一项挑战。本文介绍了一种能够集成异类城市数据的城市数据集成(UDI)框架。拟议的UDI框架可扩展到多种类型的城市系统,可扩展到不断增长的数据流(由于地理区域的增加,更高的采样频率等),并且可以解释为足以帮助市政决策。 UDI框架使用一系列邻近关系学习算法在图形数据库中重建城市数据。通过对来自美国中型城市的数据进行验证和测试,并针对典型的城市分析场景,将其可解释性和计算性能与当前实践(即关系分析)进行基准比较,可以证明所提出框架的优点,适用性和有效性。数据库)。结果表明,UDI框架提供了对城市数据的更轻松,更有效的计算和查询,进而可以为城市系统设计,管理和运营提供新的计算方法。

著录项

  • 来源
    《Journal of Computing in Civil Engineering》 |2019年第2期|04018063.1-04018063.16|共16页
  • 作者单位

    Stanford Univ, Dept Civil & Environm Engn, Urban Informat Lab, 473 Via Ortega,Room 269B, Stanford, CA 94305 USA;

    Stanford Univ, Dept Civil & Environm Engn, Urban Informat Lab, 473 Via Ortega,Room 269B, Stanford, CA 94305 USA;

    Stanford Univ, Dept Civil & Environm Engn, Urban Informat Lab, 473 Via Ortega,Room 269A, Stanford, CA 94305 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Data integration; Graph database; Proximity learning; Smart city; Urban data;

    机译:数据集成;图形数据库;就近学习;智慧城市;城市数据;

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