This paper proposes a comprehensive approach for supporting clustering-based spatio-temporal analysis of big atmospheric data via specializing on the interesting applicative setting represented by Greenhouse Gas Emissions (GGEs), a relevant instance of Big Data that empathize the Variety aspect of the well-known 3V Big Data axioms. In particular, in our research we consider GGEs from three EU countries, namely UK, France and Italy. The deriving Big Data Mining model turns to be useful for decision support processes in both the governmental and industrial contexts.

Clustering-based spatio-temporal analysis of big atmospheric data

CUZZOCREA, Alfredo Massimiliano;
2016-01-01

Abstract

This paper proposes a comprehensive approach for supporting clustering-based spatio-temporal analysis of big atmospheric data via specializing on the interesting applicative setting represented by Greenhouse Gas Emissions (GGEs), a relevant instance of Big Data that empathize the Variety aspect of the well-known 3V Big Data axioms. In particular, in our research we consider GGEs from three EU countries, namely UK, France and Italy. The deriving Big Data Mining model turns to be useful for decision support processes in both the governmental and industrial contexts.
2016
9781450340632
Big data mining
Big environmental and atmospheric data
Clustering-based spatio-temporal analysis of big data
Human-Computer Interaction
Computer Networks and Communications
1707
Software
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11770/312732
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