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Geospatial Sensor Network eLearning Collaboratory - A Portal for Sensor Knowledge Acquisition and Representation

机译:地理空间传感器网络电子学习合作伙伴-传感器知识获取和表示的门户

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Nowadays, sensors and sensor networks are being widely used both in the theoretical research and in the engineering application. In order to meet the standardization requirement, the OGC (Open Geospatial Consortium) SWE (Sensor Web Enablement) framework is extended to enable all types of sensors, instruments, and imaging devices to be accessible. However, the raw sensor data cannot represent a wealth of information especially semantic information, and cannot be easily recognized by computers either. With semantic Web proposed, formal definitions are captured in ontologies, making it possible for computers to interpret and relate data content more effectively. In the paper, we review the methods of knowledge acquisition and representation, propose to adopt semantic Web to acquire and represent sensor knowledge. We are designing and developing a Web portal named GSNC (Geospatial Sensor Network eLearning Collaboratory) under the SWE framework. The GSNC application combines sensor data with semantics identified by human and machines, and makes the sensor knowledge acquisition and representation available. In addition, the GSNC project provides the Web-based Sensor ML (Sensor Model Language) editor toolkit which can be migrated to other applications.
机译:如今,传感器和传感器网络已在理论研究和工程应用中得到广泛使用。为了满足标准化要求,扩展了OGC(开放地理空间联盟)SWE(传感器网络启用)框架,以使所有类型的传感器,仪器和成像设备都可以访问。但是,原始传感器数据不能代表大量信息,尤其是语义信息,也不能轻易被计算机识别。借助提出的语义Web,可以在本体中捕获形式定义,从而使计算机可以更有效地解释和关联数据内容。在本文中,我们回顾了知识获取和表示的方法,提出采用语义网来获取和表示传感器知识。我们正在SWE框架下设计和开发一个名为GSNC(地理空间传感器网络电子学习合作伙伴)的Web门户。 GSNC应用程序将传感器数据与人和机器识别的语义相结合,并使传感器知识获取和表示可用。此外,GSNC项目提供了基于Web的Sensor ML(传感器模型语言)编辑器工具箱,可以将其迁移到其他应用程序。

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