INTA安吉尔气象雷达数据处理体系研究

M. Diván, Yanina Bellini Saibene, Maria de los Ángeles Martín, María Laura Belmonte, Guillermo Lafuente, J. Caldera
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引用次数: 7

摘要

安吉尔试验农业站(EAS)的气象雷达(WR)每天产生17GB的数据量,相当于每年约6.2 Tb。这些数据产生后的使用,以及随后的管理、使用和向公众提供服务的可能性,在数量和复杂性方面都是一项挑战。基于测量元数据的数据流处理策略(SDSPbMM)是一个在测量和评估框架中维持的数据流管理器,通过使用测量和相关的元数据,它结合了检测和预测行为。本文提出了一种扩展SDSPbMM的处理体系结构,以纳入大数据的处理。这将提供在线数据的检测和预测行为的WR,并包括一个公共服务层,它鼓励使用INTA Anguil的WR生成的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Data Processing Architecture for the Weather Radar of the INTA Anguil
The Weather Radar (WR) of the Experimental Agricultural Station (EAS) INTA Anguil produces daily a volume of 17GB of data, which represents about 6.2 Tb annually. The use of such data when they are generated, as well as its subsequent management, use and the possibility of providing services to the public represent a challenge in terms of volume and complexity. The Strategy for Data Stream Processing based on Measurement Metadata (SDSPbMM) is a data stream manager sustained in a measurement and evaluation framework, which incorporates detective and predictive behavior, through the use of measurements and associated metadata. This paper proposes a processing architecture that extends the SDSPbMM to incorporate the processing of big data. This would provide the WR of a detective and predictive behavior on online data, as well as include a layer of public services, which encourages the consumption of data generated by the WR of INTA Anguil.
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