Energy Field Filling of NEIC Broadband Radiated Energy Catalogue Based on Support Vector Machine Regression Model

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Abstract:

Earthquake prediction is one of the most difficult problems in modern natural science. Undoubtedly, various seismic parameters included in broadband radiated energy catalogue of NEIC is very important data source of investigate correlation between different earthquake within specific time space scope. In the paper, a fitting mode of seismic energy based on Support Vector Machine is established, using which we can fill the absent energy filed in the broadband radiated energy catalogue.

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1514-1517

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November 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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