空气污染监测的关联数据

M. A. Rasyid, I. Syarif, Ilham Akbar Hasbiya Putra
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引用次数: 5

摘要

关联数据是语义网技术的一部分,也就是众所周知的web版本3。语义网与以前的web版本有着非常不同的概念。通过语义网,可以将数据以特殊的关系连接起来,形成意义。这是通过使用三元组的概念和图形表示的数据来实现语义web的。关联数据的好处是能够交换数据和提供相关信息。空气污染是世界上每个国家都面临的问题。高水平的污染将使健康下降,死亡率将上升。仍然有许多人不太关心他们的环境状况。虽然已经安装了一些传感器,但它只给出数字,数据只有一个来源。为了丰富各种来源的空气污染信息,本文使用关联数据概念和web语义技术从aqicn.org和DBPedia中提取传感器数据。实验结果表明,链接数据技术可以将各种来源的环境信息连接起来,更加可行和有意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linked data for air pollution monitoring
Linked data is a part of semantic web technology better known as web version 3. Semantic web has a very different concept with previous web version. With semantic web, data can be connected with a special relationship and form meaning. This is done semantic web using the concept of triples and data represented by graphs. The benefit of linked data is the ability to exchange data and provide related information. Air pollution is a problem of every country in the world. High levels of pollution will make health decline and mortality will increase. There are still many people who are less concerned about their environmental conditions. Although some sensors are already installed, but it is only give numbers only and the data come one source. To enrich air pollution information from various sources, this paper uses linked data concept and web semantic technology to extract the sensor data from aqicn.org and DBPedia. The results of experiment show that linked data technology can connect the environmental information from various sources more feasible and meaningful.
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