利用图数据库管理配备传感器的交通网络数据

IF 1.8 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY Geoscientific Instrumentation Methods and Data Systems Pub Date : 2024-06-28 DOI:10.5194/gi-2024-3
Erik Bollen, Rik Hendrix, Bart Kuijpers
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引用次数: 0

摘要

摘要在本文中,我们关注的是与交通网络相关的数据,交通网络是物体沿着类似图形的结构移动的模型。我们假设这些网络配备有传感器,可监测网络和沿网络移动的物体。这些传感器产生时间序列数据,形成传感器网络。例如河网、路网和电网。地理信息系统用于收集、存储和分析数据,我们将重点放在装有传感器的交通网络所产生的数据上。虽然在许多情况下都有量身定制的解决方案,但目前对于配备传感器的网络而言,这些解决方案还很有限。我们将时间序列数据视为网络的时间属性,并从属性图的角度来处理这个问题。在本文中,我们调整并扩展了现有属性图数据库的理论,以建立空间网络模型,其中节点和边可以包含时间属性,即来自传感器的时间序列数据。我们提出了一种用时间序列查询这些属性图的语言,其中时间序列和测量模式可与图模式相结合,以描述、检索和分析现实生活中的情况。我们通过在 Neo4j 中实现这两种模式和语言,展示了实践中的模式和语言,并探讨了水文研究人员在水互联网背景下提出的问题,包括伊泽尔河流域的盐度分析。
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Managing Data of Sensor-Equipped Transportation Networks using Graph Databases
Abstract. In this paper, we are concerned with data pertinent to transportation networks, which model situations in which objects move along a graph-like structure. We assume that these networks are equipped with sensors that monitor the network and the objects moving along it. These sensors produce time-series data resulting in sensor networks. Examples are river-, road- and electricity networks. Geographical information systems are used to gather, store and analyse data, and we focus on these tasks in the context of data emerging from transportation networks equipped with sensors. While tailored solutions exist for many contexts, they are limited for sensor-equipped networks at this moment. We view time-series data as temporal properties of the network and approach the problem from the viewpoint of property graphs. In this paper, we adapt and extend the theory of the existing property graph databases to model spatial networks, where nodes and edges can contain temporal properties that are time-series data originating from the sensors. We propose a language for querying these property graphs with time series, in which time-series and measurement patterns may be combined with graph patterns to describe, retrieve and analyse real-life situations. We demonstrate the model and language in practice by implementing both in Neo4j and explore questions hydrology researchers pose in the context of the Internet of Water, including salinity analysis in the Yser river basin.
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来源期刊
Geoscientific Instrumentation Methods and Data Systems
Geoscientific Instrumentation Methods and Data Systems GEOSCIENCES, MULTIDISCIPLINARYMETEOROLOGY-METEOROLOGY & ATMOSPHERIC SCIENCES
CiteScore
3.70
自引率
0.00%
发文量
23
审稿时长
37 weeks
期刊介绍: Geoscientific Instrumentation, Methods and Data Systems (GI) is an open-access interdisciplinary electronic journal for swift publication of original articles and short communications in the area of geoscientific instruments. It covers three main areas: (i) atmospheric and geospace sciences, (ii) earth science, and (iii) ocean science. A unique feature of the journal is the emphasis on synergy between science and technology that facilitates advances in GI. These advances include but are not limited to the following: concepts, design, and description of instrumentation and data systems; retrieval techniques of scientific products from measurements; calibration and data quality assessment; uncertainty in measurements; newly developed and planned research platforms and community instrumentation capabilities; major national and international field campaigns and observational research programs; new observational strategies to address societal needs in areas such as monitoring climate change and preventing natural disasters; networking of instruments for enhancing high temporal and spatial resolution of observations. GI has an innovative two-stage publication process involving the scientific discussion forum Geoscientific Instrumentation, Methods and Data Systems Discussions (GID), which has been designed to do the following: foster scientific discussion; maximize the effectiveness and transparency of scientific quality assurance; enable rapid publication; make scientific publications freely accessible.
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