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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >A First Assessment of the P-SBAS DInSAR Algorithm Performances Within a Cloud Computing Environment
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A First Assessment of the P-SBAS DInSAR Algorithm Performances Within a Cloud Computing Environment

机译:对云计算环境中P-SBAS DInSAR算法性能的首次评估

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摘要

We present in this work a first performance assessment of the Parallel Small BAseline Subset (P-SBAS) algorithm, for the generation of Differential Synthetic Aperture Radar (SAR) Interferometry (DInSAR) deformation maps and time series, which has been migrated to a Cloud Computing (CC) environment. In particular, we investigate the scalable performances of the P-SBAS algorithm by processing a selected ENVISAT ASAR image time series, which we use as a benchmark, and by exploiting the Amazon Web Services (AWS) CC platform. The presented analysis shows a very good match between the theoretical and experimental P-SBAS performances achieved within the CC environment. Moreover, the obtained results demonstrate that the implemented P-SBAS Cloud migration is able to process ENVISAT SAR image time series in short times (less than 7 h) and at low costs (about USD 200). The P-SBAS Cloud scalable performances are also compared to those achieved by exploiting an in-house High Performance Computing (HPC) cluster, showing that nearly no overhead is introduced by the presented Cloud solution. As a further outcome, the performed analysis allows us to identify the major bottlenecks that can hamper the P-SBAS performances within a CC environment, in the perspective of processing very huge SAR data flows such as those coming from the existing COSMO-SkyMed or the upcoming SENTINEL-1 constellation. This work represents a relevant step toward the challenging Earth Observation scenario focused on the joint exploitation of advanced DInSAR techniques and CC environments for the massive processing of Big SAR Data.
机译:我们在这项工作中展示了并行小BAseline子集(P-SBAS)算法的首次性能评估,用于生成差分合成孔径雷达(SAR)干涉测量(DInSAR)变形图和时间序列,该算法已迁移到云中计算(CC)环境。特别是,我们通过处理选定的ENVISAT ASAR图像时间序列(我们将其用作基准)并利用Amazon Web Services(AWS)CC平台来研究P-SBAS算法的可扩展性能。所呈现的分析表明,在CC环境下实现的理论和实验P-SBAS性能非常匹配。此外,获得的结果表明,已实施的P-SBAS Cloud迁移能够在短时间内(不到7小时)以低成本(约200美元)处理ENVISAT SAR图像时间序列。还将P-SBAS Cloud可扩展性能与通过利用内部高性能计算(HPC)集群获得的性能进行了比较,表明所提出的Cloud解决方案几乎没有引入任何开销。作为进一步的结果,执行的分析使我们能够从处理非常大的SAR数据流(例如来自现有COSMO-SkyMed或SAR数据流的SAR数据流)的角度识别出可能阻碍CC环境下P-SBAS性能的主要瓶颈。即将到来的SENTINEL-1星座。这项工作代表了朝着具有挑战性的地球观测方案迈出的重要一步,该方案专注于联合开发先进的DInSAR技术和CC环境,以大规模处理大SAR数据。

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