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An Intelligent Archive Testbed Incorporating Data Mining

机译:集成数据挖掘的智能存档测试平台

摘要

Many significant advances have occurred during the last two decades in remote sensing instrumentation, computation, storage, and communication technology. A series of Earth observing satellites have been launched by U.S. and international agencies and have been operating and collecting global data on a regular basis. These advances have created a data rich environment for scientific research and applications. NASA s Earth Observing System (EOS) Data and Information System (EOSDIS) has been operational since August 1994 with support for pre-EOS data. Currently, EOSDIS supports all the EOS missions including Terra (1999), Aqua (2002), ICESat (2002) and Aura (2004). EOSDIS has been effectively capturing, processing and archiving several terabytes of standard data products each day. It has also been distributing these data products at a rate of several terabytes per day to a diverse and globally distributed user community (Ramapriyan et al. 2009). There are other NASA-sponsored data system activities including measurement-based systems such as the Ocean Data Processing System and the Precipitation Processing system, and several projects under the Research, Education and Applications Solutions Network (REASoN), Making Earth Science Data Records for Use in Research Environments (MEaSUREs), and the Advancing Collaborative Connections for Earth-Sun System Science (ACCESS) programs. Together, these activities provide a rich set of resources constituting a value chain for users to obtain data at various levels ranging from raw radiances to interdisciplinary model outputs. The result has been a significant leap in our understanding of the Earth systems that all humans depend on for their enjoyment, livelihood, and survival. The trend in the community today is towards many distributed sets of providers of data and services. Despite this, visions for the future include users being able to locate, fuse and utilize data with location transparency and high degree of interoperability, and being able to convert data to information and usable knowledge in an efficient, convenient manner, aided significantly by automation (Ramapriyan et al. 2004; NASA 2005). We can look upon the distributed provider environment with capabilities to convert data to information and to knowledge as an Intelligent Archive in the Context of a Knowledge Building system (IA-KBS). Some of the key capabilities of an IA-KBS are: Virtual Product Generation, Significant Event Detection, Automated Data Quality Assessment, Large-Scale Data Mining, Dynamic Feedback Loop, and Data Discovery and Efficient Requesting (Ramapriyan et al. 2004).
机译:在过去的二十年中,遥感仪器,计算,存储和通信技术取得了许多重大进步​​。美国和国际机构发射了一系列地球观测卫星,并定期运行和收集全球数据。这些进步为科学研究和应用创造了一个数据丰富的环境。 NASA的地球观测系统(EOS)数据和信息系统(EOSDIS)自1994年8月开始运行,并支持EOS之前的数据。目前,EOSDIS支持所有EOS任务,包括Terra(1999),Aqua(2002),ICESat(2002)和Aura(2004)。 EOSDIS每天都在有效地捕获,处理和归档几TB的标准数据产品。它还一直以每天数TB的速度将这些数据产品分发给多样化且全球分布的用户社区(Ramapriyan等,2009)。 NASA还赞助了其他数据系统活动,包括基于测量的系统,例如海洋数据处理系统和降水处理系统,以及研究,教育和应用解决方案网络(REASoN)下的多个项目,制作了地球科学数据记录以供使用研究环境(MEaSUREs)以及“地-太阳系统科学”(ACCESS)计划中的“先进的协作联系”。这些活动在一起提供了丰富的资源集,构成了一条价值链,供用户获取从原始辐射度到跨学科模型输出的各种级别的数据。结果使我们对所有人享有的享乐,生计和生存所依赖的地球系统的理解有了重大飞跃。当今社区的趋势是向许多分布式的数据和服务提供者集合。尽管如此,对未来的愿景包括用户能够定位,融合和利用具有位置透明性和高度互操作性的数据,并能够以高效,便捷的方式将数据转换为信息和可用知识,并得到自动化的极大帮助( Ramapriyan等,2004; NASA,2005)。我们可以研究具有知识构建系统(IA-KBS)上下文中作为智能档案库的将数据转换为信息和知识的能力的分布式提供程序环境。 IA-KBS的一些关键功能包括:虚拟产品生成,重要事件检测,自动数据质量评估,大规模数据挖掘,动态反馈循环以及数据发现和有效请求(Ramapriyan等,2004)。

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