Residual Separation of Magnetic Fields Using a Cellular Neural Network Approach

被引:0
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作者
A. M. Albora
A. Özmen
O. N. Uçan
机构
[1] Istanbul University,
[2] Engineering Faculty Geophysical Department 34850,undefined
[3] Avcılar,undefined
[4] İstanbul,undefined
[5] Turkey. E-mail: muhittin@istanbul.edu.tr,undefined
[6] Istanbul University,undefined
[7] Engineering Faculty Electrical–Electronic Department 34850,undefined
[8] Avcılar,undefined
[9] İstanbul,undefined
[10] Turkey. E-mail: uosman@istanbul.edu.tr,undefined
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Key words: Magnetic anomaly, cellular neural network.;
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摘要
 — In this paper, a Cellular Neural Network (CNN) has been applied to a magnetic regional/residual anomaly separation problem. CNN is an analog parallel computing paradigm defined in space and characterized by the locality of connections between processing neurons. The behavior of the CNN is defined by the template matrices A, B and the template vector I. We have optimized weight coefficients of these templates using Recurrent Perceptron Learning Algorithm (RPLA). The advantages of CNN as a real-time stochastic method are that it introduces little distortion to the shape of the original image and that it is not effected significantly by factors such as the overlap of power spectra of residual fields. The proposed method is tested using synthetic examples and the average depth of the buried objects has been estimated by power spectrum analysis. Next the CNN approach is applied to magnetic data over the Golalan chromite mine in Elazig which lies East of Turkey. This area is among the largest and richest chromite masses of the world. We compared the performance of CNN to classical derivative approaches.
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页码:1797 / 1818
页数:21
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