Geospatial Analytics in the Large for Monitoring Depth of Cover for Buried Pipeline Infrastructure

Michael Hornacek,Daniel Schall,Philipp Glira,Sebastian Geiger, Andreas Egger, Andrei Filip, Claudia Windisch,Mike Liepe

2018 IEEE International Conference on Cloud Engineering (IC2E)(2018)

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摘要
Operators of pipeline infrastructure buried underground are in many countries required to ensure that depth of cover—a measure of the quantity of soil covering a pipeline—lie within prescribed bounds. Traditionally, monitoring depth of cover at scale has been carried out qualitatively by means of visual inspection. We proceed instead to rely on airborne remote sensing techniques to obtain densely sampled ground surface point measurements from the pipeline's right of way, from which we determine depth of cover using automated algorithms. Proceeding in our manner presents a reproducible, quantitative approach to monitoring depth of cover, yet the demands thus made by the scale of real-world pipeline monitoring scenarios on compute and storage resources can be substantial. We show that the scalability afforded by the cloud can be leveraged to address such scenarios, distributing the algorithms we employ to take advantage of multiple compute nodes and exploiting elastic storage. While the use case underlying this paper is monitoring depth of cover, our proposed architecture can be applied more broadly to a wide variety of geospatial analytics tasks carried out 'in the large', including change detection, semantic classification or segmentation, or computation of vegetation indices.
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关键词
cloud computing,geospatial analytics,distributed processing
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