Often scientific applications are characterized by complex workflows and large datasets to manage. Usually, these applications run in dedicated high performance computing centers with low-latency interconnections which require a consistent initial cost. Public and private cloud computing environments, thanks to their features such as customized computing environments, flexibility, and elasticity represent a valid alternative with respect to HPC clusters in order to minimize costs and optimize processing. In this paper the migration of an advanced Differential Synthetic Aperture Radar Interferometry (DInSAR) methodology for the investigation of Earth surface deformation phenomena to the Amazon Web Services (AWS) cloud computing environment is presented. Such a technique which is referred to as Parallel Small Baseline Subset (P-SBAS) algorithm allows producing mean deformation velocity maps and the corresponding displacement time-series from a temporal sequence of radar images. Moreover, an experimental analysis aimed at evaluating the P-SBAS algorithm parallel performances which are achieved within the AWS cloud by exploiting two different families of instances and by taking into account different I/O and network bandwidth configurations is presented.

Performance Analysis of the DInSAR P-SBAS Algorithm within AWS Cloud

Zinno;Elefante;De Luca;Casu;Lanari;
2015

Abstract

Often scientific applications are characterized by complex workflows and large datasets to manage. Usually, these applications run in dedicated high performance computing centers with low-latency interconnections which require a consistent initial cost. Public and private cloud computing environments, thanks to their features such as customized computing environments, flexibility, and elasticity represent a valid alternative with respect to HPC clusters in order to minimize costs and optimize processing. In this paper the migration of an advanced Differential Synthetic Aperture Radar Interferometry (DInSAR) methodology for the investigation of Earth surface deformation phenomena to the Amazon Web Services (AWS) cloud computing environment is presented. Such a technique which is referred to as Parallel Small Baseline Subset (P-SBAS) algorithm allows producing mean deformation velocity maps and the corresponding displacement time-series from a temporal sequence of radar images. Moreover, an experimental analysis aimed at evaluating the P-SBAS algorithm parallel performances which are achieved within the AWS cloud by exploiting two different families of instances and by taking into account different I/O and network bandwidth configurations is presented.
2015
Istituto per il Rilevamento Elettromagnetico dell'Ambiente - IREA
Web services
cloud computing
geophysics computing
parallel algorithms
radar imag
radar interferometry
scientific information systems
synthetic aperture radar
time series
AWS cloud computing environment
Amazon Web services
DInSAR P-SBAS algorithm
DInSAR methodology
HPC cluster
advanced differential synthetic aperture radar interferometry
complex workflow
customized computing environment
displacement time-series
earth surface deformation phenomena
high performance computing center
low-latency interconnection
mean deformation velocity map
network bandwidth configuration
parallel small baseline subset algorithm
public and private cloud computing environment
radar images
scientific application
temporal sequence
Cloud computing
Earth
Interferometry
Monitoring
Remote sensing
Synthetic aperture radar
DInSAR
P-SBAS
cloud computing
compute optimized instances
e-science
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/341922
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