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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >An On-Demand Approach to Build Reusable, Fast-Responding Spatial Data Services
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An On-Demand Approach to Build Reusable, Fast-Responding Spatial Data Services

机译:一种按需构建可重复使用,快速响应的空间数据服务的方法

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Many applications for global climate change research heavily rely on analyzing geospatial data collaboratively and always accompanying with complex computational algorithms. It is desirable to study a flexible and efficient approach for easy interoperation among heterogeneous datasets and computation models, thus providing quick responses for decision making. Early research on services-based mechanisms can ensure interoperability of geo-data resources and interoperability of geo-processing sources, but cannot ensure interoperability of both geo-data resources and geo-processing sources simultaneously due to their different characteristics on service deployment and management. An important issue is to find a way to keep diversity of data sources and maintain advantages of various geo-processing algorithms whereas data resources and processing sources can be chained together at a certain level of granularity. To address this need, we propose Data Service Entity Node (DSEN) to take the spatial data sources and geo-processing function as isomorphic service in a uniform manner based on service clustering method. We have applied our on-demand data service model to China Spatial Information Grid (SIG) test-bed and report a case study of flood monitoring application. The result shows our advantages and powerful capabilities by running two algorithms and process models for water extraction in an efficient way. The proposed on-demand approach can be used to build reusable spatial data service and respond quickly, and dynamically support different requirements of targeted applications.
机译:全球气候变化研究的许多应用严重依赖于协同分析地理空间数据,并且总是伴随着复杂的计算算法。希望研究一种灵活高效的方法,以方便异构数据集和计算模型之间的互操作,从而为决策提供快速响应。对基于服务的机制的早期研究可以确保地理数据资源的互操作性和地理处理源的互操作性,但是由于地理数据资源和地理处理源在服务部署和管理方面的不同特性,因此无法同时确保地理数据资源和地理处理源的互操作性。一个重要的问题是找到一种方法,以保持数据源的多样性并保持各种地理处理算法的优势,而数据资源和处理源可以按一定的粒度级别链接在一起。为了满足这一需求,我们提出了基于服务聚类方法的数据服务实体节点(DSEN),以统一的方式将空间数据源和地理处理功能作为同构服务。我们已将按需数据服务模型应用于中国空间信息网格(SIG)测试平台,并报告了洪水监控应用案例研究。结果通过有效地运行两种用于水提取的算法和过程模型,显示了我们的优势和强大的功能。所提出的按需方法可用于构建可重用的空间数据服务并快速响应,并动态支持目标应用程序的不同需求。

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