利用遗传训练的多层次细胞神经网络分离电位异常

E. Bilgili, O. Nucan, A. Muhittin Albora, I. Cem Goknar
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引用次数: 3

摘要

本文将多层遗传细胞神经网络(ML-GCNN)应用于潜在异常分离的地球物理问题,与经典的确定性方法相比,获得了令人满意的结果。ML-GCNN是一种基于模板优化的随机图像处理技术,利用像素的邻域关系。用于定位决策的残余异常分离是地球物理学中的主要问题之一。本文提出的方法在土耳其Dumluca铁矿区进行了评价。
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Potential anomaly separation using genetically trained multi-level cellular neural networks
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.
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