Multivariate Information Metallogenic Prognosis Model

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Abstract:

Metallogenic circumstances spatial of the same category mineral deposit structure had defined commonality in a certain region. The important was that studied mineral deposit informations and determine the nature or a segment quantitative investigation, integrated experts’ experience to make sure the weight of dominate mineral factors, and constructed metallogenic prognosis model, and then proceed metallogenic prognosis and mineral resource evaluation use in other regions. To overcome geologic investigation problem which not unity and manifold explanation about geology、geophysics、geochemistry、remote geology at present.

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282-286

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January 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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