An Interactive System for Analysis of Global Cloud Imagery

Karen Woodberry Center for Atmospheric Theory and Analysis, University of Colorado. Boulder, Colorado

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Ken Tanaka Center for Atmospheric Theory and Analysis, University of Colorado. Boulder, Colorado

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Harry Hendon Center for Atmospheric Theory and Analysis, University of Colorado. Boulder, Colorado

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Murry Salby Center for Atmospheric Theory and Analysis, University of Colorado. Boulder, Colorado

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Abstract

Synoptic images of the global cloud pattern composited from six contemporaneous satellites provide an unprecedented view of the global cloud field. Having horizontal resolution of about 0.5° and temporal resolution of 3 h, the global cloud imagery (GCI) resolves most of the variability of organized convection, including several harmonies of the diurnal cycle. Although the GCI has these attractive features, the dense and three-dimensional nature of that data make it a formidable volume of information to treat in a practical and efficient manner.

An interactive image analysis system (IAS) has been developed to investigate the space-time variability of global cloud behavior. In the IAS, data, hardware, and software are integrated into a single system providing a variety of space-time covariance analyses in menu-driven format. Owing to its customized architecture and certain homogeneous properties of the GCI, the IAS calculates such quantities with exceptional performance. Many covariance statistics are derived from three-dimensional data with interactive speed, allowing the user to interrogate the archive iteratively in a single session. The three-dimensional nature of those analyses and the speed with which they are performed distinguish the IAS from conventional image processing of two-dimensional data and suggest the IAS as a prototype for dealing with large volumes of multidimensional data as will be produced by NASA's Earth Observing System.

Abstract

Synoptic images of the global cloud pattern composited from six contemporaneous satellites provide an unprecedented view of the global cloud field. Having horizontal resolution of about 0.5° and temporal resolution of 3 h, the global cloud imagery (GCI) resolves most of the variability of organized convection, including several harmonies of the diurnal cycle. Although the GCI has these attractive features, the dense and three-dimensional nature of that data make it a formidable volume of information to treat in a practical and efficient manner.

An interactive image analysis system (IAS) has been developed to investigate the space-time variability of global cloud behavior. In the IAS, data, hardware, and software are integrated into a single system providing a variety of space-time covariance analyses in menu-driven format. Owing to its customized architecture and certain homogeneous properties of the GCI, the IAS calculates such quantities with exceptional performance. Many covariance statistics are derived from three-dimensional data with interactive speed, allowing the user to interrogate the archive iteratively in a single session. The three-dimensional nature of those analyses and the speed with which they are performed distinguish the IAS from conventional image processing of two-dimensional data and suggest the IAS as a prototype for dealing with large volumes of multidimensional data as will be produced by NASA's Earth Observing System.

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