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Forward modeling of seabed logging with controlled source electromagnetic method using radial basis function networks

机译:基于径向基函数网络的受控源电磁法海床测井正演模拟

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Forward modeling is an important step in processing data of seabed logging (SBL) with controlled source electromagnetic (CSEM) method to determine the location and dimension of a hydrocarbon layer under the seafloor. In this research, forward modeling was conducted using a radial basis function (RBF) network, which is an important type of artificial neural networks. To train this RBF network, a data set was generated using a simulation software: COMSOL Multiphysics. The network designed has 3 layers with 3 neurons in the input layer and 1 neuron in the output layer. The single hidden layer contained neurons whose number had been varied between 1 and 20 neurons. The performance comparison showed that the RBF network with 10 neurons in its hidden layer was the best to model SBL with CSEM method.
机译:正向建模是使用受控源电磁(CSEM)方法处理海底测井(SBL)数据以确定海底下碳氢化合物层的位置和尺寸的重要步骤。在这项研究中,正向建模是使用径向基函数(RBF)网络进行的,该网络是一种重要的人工神经网络。为了训练该RBF网络,使用模拟软件COMSOL Multiphysics生成了一个数据集。设计的网络分为3层,输入层为3个神经元,输出层为1个神经元。单个隐藏层包含神经元,其数量在1至20个神经元之间变化。性能比较表明,隐藏层中具有10个神经元的RBF网络是用CSEM方法建模SBL的最佳方法。

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