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A new approach for border detection of the Dumluca (Turkey) iron ore area: Wavelet cellular neural networks

机译:Dumluca(土耳其)铁矿石区域边界检测的新方法:小波细胞神经网络

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摘要

Anomaly analysis is used for various geophysics applications such as determination of geophysical structure's location and border detections. Besides the classical geophysical techniques, artificial intelligence based image processing algorithms have been found attractive for geophysical anomaly analysis. Recently, cellular neural networks (CNN) have been applied to geophysical data and satisfactory results are reported. CNN provides fast and parallel computational capability for geophysical image processing applications due to its filtering structure. The behavior of CNN is defined by two template matrices that are adjusted by a properly supervised learning algorithm. After training stage for geophysical data, Bouguer anomaly maps can be processed and analyzed sequentially. In this paper, CNN learning and processing capability have been improved, combining Wavelet functions and backpropagation learning algorithms. The new architecture is denoted as Wavelet-Cellular Neural networks (Wave-CNN) and it is employed to analyze Bouguer anomaly maps which are important to extract useful information in geophysics. At first, Wave-CNN performance is tested on synthetic geophysical data, which are created by a computer environment. Then, Bouguer anomaly maps of the Dumluca iron ore field have been analyzed and results are reported in comparison to real drilling results.
机译:异常分析可用于各种地球物理应用程序,例如确定地球物理结构的位置和边界检测。除了经典的地球物理技术外,基于人工智能的图像处理算法还被发现对地球物理异常分析具有吸引力。近年来,细胞神经网络(CNN)已应用于地球物理数据,并取得了令人满意的结果。由于其过滤结构,CNN为地球物理图像处理应用程序提供了快速和并行的计算能力。 CNN的行为由两个模板矩阵定义,这两个模板矩阵由适当监督的学习算法进行调整。在对地球物理数据进行训练之后,可以对布格异常图进行顺序处理和分析。本文结合小波函数和反向传播学习算法,提高了CNN的学习和处理能力。新的架构称为小波细胞神经网络(Wave-CNN),用于分析布格异常图,这对于提取地球物理学中的有用信息非常重要。首先,在计算机环境创建的合成地球物理数据上测试Wave-CNN的性能。然后,分析了Dumluca铁矿田的布格异常图,并与实际钻探结果进行了比较。

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