Potential anomaly separation using genetically trained multi-level cellular neural networks

E. Bilgili1, O. Nucan2, A. Muhittin Albora3, I. Cem Goknar4
1TUBITAK Marmara Research Center., Gebze High Technology Institutue, Gebze, Kocaeli, Turkey
2EE Department, Istanbul University Avcilar, Istanbul, Turkey
3Geophysics Department, Istanbul University, Istanbul, Turkey
4ECE Department, Doğuş University, Istanbul, Turkey

Tóm tắt

In this paper, multi-level genetic cellular neural networks (ML-GCNN) are applied to the geophysical problem of potential anomaly separation and satisfactory results are obtained, compared to classical deterministic approaches. ML-GCNN is a stochastic image processing technique which is based on template optimisation using neighbourhood relationships of the pixels. The residual anomaly separation used in location decisions is one of the main problems in geophysics. The method proposed here is used in evaluating the Dumluca iron ore region of Turkey.

Từ khóa

#Cellular neural networks #Magnetic separation #Image processing #Geophysics #Magnetic fields #Filtering #Genetic algorithms #Stochastic processes #Pixel #Iron

Tài liệu tham khảo

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