Title of article :
Identification of geochemical anomalies associated with Cu mineralization by applying spectrum-area multi-fractal and wavelet neural network methods in Shahr-e-Babak mining area, Kerman, Iran
Author/Authors :
Hezarkhani, A Department of Mining and Metallurgy Engineering - Amirkabir University of technology (Tehran Polytechnic) - Tehran, Iran , Shokouh Saljoughi, B Department of Mining and Metallurgy Engineering - Amirkabir University of technology (Tehran Polytechnic) - Tehran, Iran
Abstract :
The Shahr-e-Babak district, as the studied area, is known for its large Cu resources. It is
located in the southern side of the Central Iranian volcano–sedimentary complex in SE
Iran. Shahr-e-Babak is currently facing a shortage of resources, and therefore, mineral
exploration in the deeper and peripheral spaces has become a high priority in this area.
This work aims to identify the geochemical anomalies associated with the Cu
mineralization using the Spectrum–Area (S–A) multi-fractal and Wavelet Neural
Network (WNN) methods. At first, the Factor Analysis (FA) is applied to integrate the
multigeochemical variables of a regional stream sediment dataset related to major
mineralization elements in the studied area. Then the S–A model is applied to
decompose the mixed geochemical patterns obtained from FA and compare with the
results obtained from the WNN method. The S–A model, based on the distinct
anisotropic scaling properties, reveals the local anomalies due to the consideration of the
spatial characteristics of the geochemical variables. Most of the research works show
that the capability (i.e. classification, pattern matching, optimization, and prediction) of
an ANN considering its successful application is suitable for inheriting uncertainties and
imperfections that are found in mining engineering problems. In this paper, an
alternative method is presented for mineral prospecting based on the integration of
wavelet theory and ANN or wavelet network. The results obtained for the WNN method
are in a good agreement with the known deposits, indicating that the WNN method with
Morlet transfer function consists of a highly complex ability to learn and track
unknown/undefined complicated systems. The hybrid method of FA, S–A, and WNN
employed in this work is useful to identify anomalies associated with the Cu
mineralization for further exploration of mineral resources.
Keywords :
Shahr-e-Babak , Geochemical Anomaly , Wavelet Neural Network , Spectrum-Area Multi- Fractal Model , Cu Mineralization
Journal title :
Astroparticle Physics