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Magnetic inverse modelling of a dike using the artificial neural network approach

机译:使用人工神经网络方法对堤防进行磁逆建模

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Artificial neural systems have been used in a variety of problems in the fields of science and engineering. Here we describe a study of the application of neural networks in solving some geophysical inverse problems. In particular, we try to estimate the depth of dikes using magnetic data and a three-layer feed forward neural network. The network is trained by synthetic data as input and output. For forward neural network training we use the back-propagation algorithm. Results indicate that forward neural networks, if adequately trained, can predict a reasonably accurate depth for dikes. The proposed method was applied to magnetic data over the Darmian Iron field in Iran. Results were compared to real values from well data and proved the good performance of the trained neural network in predicting the dike's depth.
机译:人工神经系统已用于科学和工程领域的各种问题中。在这里,我们描述了对神经网络在解决一些地球物理逆问题中的应用的研究。特别是,我们尝试使用磁数据和三层前馈神经网络来估算堤防的深度。网络通过合成数据作为输入和输出进行训练。对于正向神经网络训练,我们使用反向传播算法。结果表明,如果训练有素,前向神经网络可以预测堤防的合理准确深度。所提出的方法被应用于伊朗达姆铁磁场上的磁数据。将结果与井数据中的实际值进行比较,并证明了受过训练的神经网络在预测堤防深度方面的良好性能。

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