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A high throughput geocomputing system for remote sensing quantitative retrieval and a case study
Authors:Yong Xue  Ziqiang Chen  Hui Xu  Jianwen Ai  Shuzheng Jiang  Yingjie Li  Ying Wang  Jie Guang  Linlu Mei  Xijuan Jiao  Xingwei He  Tingting Hou
Institution:1. Center for Earth Observation and Digital Earth, Chinese Academy of Sciences, No. 9 Dengzhuang South Road, Haidian District, Beijing 100094, China;2. Faculty of Computing, London Metropolitan University, 166-220 Holloway Road, London N7 8DB, UK;3. State Key Laboratory of Remote Sensing Science, Jointly Sponsored by the Institute of Remote Sensing Applications (IRSA) of the Chinese Academy of Sciences (CAS) and Beijing Normal University, IRSA, CAS, PO Box 9718, Beijing 100101, China;4. Shandong University of Science and Technology, Qingdao, Shandong, China;5. Graduate University of the Chinese Academy Sciences, Beijing, China
Abstract:The quality and accuracy of remote sensing instruments have been improved significantly, however, rapid processing of large-scale remote sensing data becomes the bottleneck for remote sensing quantitative retrieval applications. The remote sensing quantitative retrieval is a data-intensive computation application, which is one of the research issues of high throughput computation. The remote sensing quantitative retrieval Grid workflow is a high-level core component of remote sensing Grid, which is used to support the modeling, reconstruction and implementation of large-scale complex applications of remote sensing science. In this paper, we intend to study middleware components of the remote sensing Grid – the dynamic Grid workflow based on the remote sensing quantitative retrieval application on Grid platform. We designed a novel architecture for the remote sensing Grid workflow. According to this architecture, we constructed the Remote Sensing Information Service Grid Node (RSSN) with Condor. We developed a graphic user interface (GUI) tools to compose remote sensing processing Grid workflows, and took the aerosol optical depth (AOD) retrieval as an example. The case study showed that significant improvement in the system performance could be achieved with this implementation. The results also give a perspective on the potential of applying Grid workflow practices to remote sensing quantitative retrieval problems using commodity class PCs.
Keywords:Grid Computing  Workflow  Service  Remote sensing quantitative retrieval  Scheduling  Aerosol
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