地表水特征语义的应用本体

D. Varanka, E. L. Usery
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引用次数: 12

摘要

地表水土地覆盖在一系列地理研究中发挥着重要作用,包括气候周期、地貌形成和人类自然资源利用解决方案。地理信息系统、遥感和实时水文监测技术提供了广泛的地表水数据资源。设计了地表水应用本体,以创建一个信息框架来关联不同格式的数据。该项目的目的是测试基于制图关系表属性数据的GIS水文数据模型衍生的概念是否可以形式化用于语义技术,并检查使用数据库语义规范的本体有哪些明显的差异。地表水本体(SWO)最初来源于美国国家水文数据集(NHD) GIS数据模型。假设本体语义可以与长期经验收集的数据库保持一致。然后在上层本体的支持下,对类和属性进行自动转换。对结果进行了可靠的类关联、推断信息和使用SPARQL协议和RDF查询语言(SPARQL)的查询测试。本体反映了对物理环境的研究、支持机构的目标、GIS的重用和语义技术的适应。这些结果有助于本体模型的开发,该模型利用具有信息用户访问的大数据量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Applied Ontology for Semantics Associated with Surface Water Features
Surface water land cover plays a major role in a range of geographic studies, including climate cycles, landform generation, and human natural resource use settlement. Extensive surface water data resources exist from geographic information systems (GIS), remote sensing, and real-time hydrologic monitoring technologies. An applied ontology for surface water was designed to create an information framework to relate data in disparate formats. The objective for this project was to test whether concepts derived from a GIS hydrographic data model based on cartographic relational table attribute data can be formalized for semantic technology and to examine what differences are evident using the ontology for database semantic specification. The surface water ontology (SWO) was initially derived from the National Hydrography Dataset (NHD) GIS data model. The hypothesis was that ontology semantics can be consistent with a long-term empirically collected database. An automated conversion of classes and properties was then manually refined with the support of an upper ontology. The results were tested for reliable class associations, inferred information, and queries using SPARQL Protocol and RDF Query Language (SPARQL). The ontology reflects studies of the physical environment, the objectives of the supporting institution, the reuse of GIS, and the adaptation of semantic technology. The results contribute to the development of an ontology model that leverages large data volumes with information user access.
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