A perceptron artificial neural network (PNN) model is proposed to discriminate zones of high mineral potential in the Eastern Desert of Egypt using remote sensing and airborne spectral gamma-ray data stored in a GIS database. A neural network model with one hidden unit was selected by means of a perceptron neuron, which uses the hard-limit transfer function. The trained network delineated a gold potential map efficiently, detected a previously known area as well as a suggested potentially mineralized one. These initial results suggest that PNN can be an effective tool for mineral exploration using spatial data modeling.
Fouad, K., & Hanafy, S. (2013). USE OF PERCEPTRON NEURAL NETWORKS AS A TOOL FOR MINERAL POTENTIAL MAPPING IN EGYPT. Journal of Egyptian Geophysical Society, 11(1), 75-80. doi: 10.21608/jegs.2013.384997
MLA
K.M. Fouad; S.M.M. Hanafy. "USE OF PERCEPTRON NEURAL NETWORKS AS A TOOL FOR MINERAL POTENTIAL MAPPING IN EGYPT", Journal of Egyptian Geophysical Society, 11, 1, 2013, 75-80. doi: 10.21608/jegs.2013.384997
HARVARD
Fouad, K., Hanafy, S. (2013). 'USE OF PERCEPTRON NEURAL NETWORKS AS A TOOL FOR MINERAL POTENTIAL MAPPING IN EGYPT', Journal of Egyptian Geophysical Society, 11(1), pp. 75-80. doi: 10.21608/jegs.2013.384997
VANCOUVER
Fouad, K., Hanafy, S. USE OF PERCEPTRON NEURAL NETWORKS AS A TOOL FOR MINERAL POTENTIAL MAPPING IN EGYPT. Journal of Egyptian Geophysical Society, 2013; 11(1): 75-80. doi: 10.21608/jegs.2013.384997