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A Deep Neural Network as Surrogate Model for Forward Simulation of Borehole Resistivity Measurements

机译:一种深度神经网络作为钻孔电阻率测量前向模拟的代理模型

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Inverse problems appear in multiple industrial applications. Solving such inverse problems require the repeated solution of the forward problem. This is the most time-consuming stage when employing inversion techniques, and it constitutes a severe limitation when the inversion needs to be performed in real-time. In here, we focus on the real-time inversion of resistivity measurements for geosteering. We investigate the use of a deep neural network (DNN) to approximate the forward function arising from Maxwell’s equations, which govern the electromagnetic wave propagation through a media. By doing so, the evaluation of the forward problems is performedoffline,allowing for theonlinereal-time evaluation (inversion) of the DNN.
机译:多个工业应用中出现逆问题。解决这种逆问题需要重复的前向问题的解决方案。这是在采用反转技术时最耗时的阶段,并且当需要实时进行反转时,它构成了严重的限制。在这里,我们专注于地统治性电阻率测量的实时反演。我们调查使用深神经网络(DNN)来近似于Maxwell等式所产生的前向功能,该方程式通过媒体控制电磁波传播。通过这样做,对前向问题的评估是执行OFFLINE的,允许DNN的inonlineral-time评估(反演)。

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