2012
DOI: 10.7494/csci.2012.13.1.5
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Using Advanced Data Mining and Integration in Environmental Prediction Scenarios

Abstract: We present one of the meteorological and hydrological experiments performed in the FP7 project ADMIRE. It serves as an experimental platform for hydrologists, and we have used it also as a testing platform for a suite of advanced data integration and data mining (DMI) tools, developed within ADMIRE. The idea of ADMIRE is to develop an advanced DMI platform accessible even to users who are not familiar with data mining techniques. To this end, we have designed a novel DMI architecture, supported by a set of sof… Show more

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Cited by 3 publications
(1 citation statement)
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“…information about its occurrence is important as an input to various hydrological models of river flows and flooded areas, for meteorologists, agriculture, or as an input necessary for any local flood warning system. Data mining is emerging as a suitable method for extracting patterns from extensive sets of heterogeneous data related to prediction of meteorological phenomena [5], [6].…”
Section: Significant and Hazardous Meteorological Phenomenamentioning
confidence: 99%
“…information about its occurrence is important as an input to various hydrological models of river flows and flooded areas, for meteorologists, agriculture, or as an input necessary for any local flood warning system. Data mining is emerging as a suitable method for extracting patterns from extensive sets of heterogeneous data related to prediction of meteorological phenomena [5], [6].…”
Section: Significant and Hazardous Meteorological Phenomenamentioning
confidence: 99%