Title of article :
Detection of Mo geochemical anomaly in depth using a new scenario based on spectrum–area fractal analysis
Author/Authors :
Mahdiyanfar, H Department of Mining Engineering - University of Gonabad - Gonabad, Iran
Abstract :
Detection of deep and hidden mineralization using the surface geochemical data is a
challenging subject in the mineral exploration. In this work, a novel scenario based on
the spectrum–area fractal analysis (SAFA) and the principal component analysis (PCA)
has been applied to distinguish and delineate the blind and deep Mo anomaly in the Dalli
Cu–Au porphyry mineralization area. The Dalli mineral deposit is located on the
volcanic–plutonic belt of Sahand–Bazman in the central part of Iran. The geochemical
data was transformed to the frequency domain using the Fourier transformation, and
SAFA was applied for classification of geochemical frequencies and detection of
geochemical populations. The very low-frequency signals in the fractal method were
separated using the low-pass filter function and were interpreted using PCA. This
scenario demonstrates that the Mo element has an important role in the mineralization
phase in the very low-frequency signals that are related to the deep mineralization; it is
an important innovation in this work. Then the Mo geochemical anomaly has been
mapped using the inverse Fourier transformation. This research work shows that the
high-power spectrum values in SAFA are related to the background elements and the
deep mineralization. Two exploratory boreholes drilled inside and outside the deep Mo
anomaly area properly confirm the results of the proposed approach.
Keywords :
Pattern Recognition , Blind Geochemical Anomaly , Principal Component Analysis , Anomaly Separation , Power Spectrum–Area Fractal Analysis
Journal title :
Astroparticle Physics