Web服务用于多平台探索性分析二级和三级NEWS合并的A-Train数据

H. Hua, E. Fetzer, A. Braverman, Seungwon Lee, Mathew Henderson, S. Lewis, V. Dang, M. de la Torre Juárez, A. Guillaume
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摘要

为了简化获取大型和复杂的卫星数据集进行气候分析和模式验证,开发了一个基于服务导向体系结构的工具,以帮助研究气候、水和能源循环以及天气变率的长期和全球尺度趋势。NASA的A-Train卫星星座2级数据集可用于创建气候学,包括A-Train传感器观测到的温度、水蒸气和云特性之间的相关性。然而,2级数据的数量和不均匀性通常很难搜索和获取,或者耗时。这往往会导致小规模或短期的分析。我们认识到需要设计良好的分布式服务,这样用户就可以在他们自己熟悉的计算环境中执行分析,而不是强加给用户一个经常是严格的和限制性的基于web的分析环境。最近生成了大量合并的2级数据,其中包含来自A-Train的各种仪器数据。科学家接下来想要有效地访问这些合并数据的选定集并执行他们的分析。开发了服务器端功能来卸载处理并减少要传输到客户机的数据量。相应地,开发了客户端处理api,使科学家能够从他们自己熟悉的计算环境(Java、Python、Matlab、IDL、C/ c++和Fortran90)中执行大量服务器端数据的分析。
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Web services for multiplatform exploratory analysis of level 2 and 3 NEWS merged A-Train data
To simplify access to large and complex satellite data sets for climate analysis and model verification, a service-oriented architecture-based tool was developed to help study long-term and global-scale trends in climate, water and energy cycle, and weather variability. NASA's A-Train satellite constellation set of Level 2 data can be used to enable creation of climatologies that include correlation between observed temperature, water vapor and cloud properties from the A-Train sensors. However, the volume and inhomogeneity of Level 2 data have typically been difficult or time consuming to search and acquire. This tends to result in small-scale or short-term analysis. Instead of imposing on the user an often rigid and limiting web-based analysis environment, we recognize the need for well-designed distributed services so that users can perform analysis in their own familiar computing environments. Voluminous merged Level 2 data containing the various instrument data from the A-Train have recently been generated. Scientists next want to efficiently access selected sets of this merged data and perform their analysis. Server-side capabilities were developed to off-load processing and reduce the amount of data to be transferred to the client. Correspondingly, client-side processing APIs were developed to enable scientists to perform analysis of voluminous server-side data from within their own familiar computing environment (Java, Python, Matlab, IDL, C/C++, and Fortran90).
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