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Inversion of 2-D DC resistivity data using rapid optimization and minimal complexity neural network

机译:使用快速优化和最小复杂度神经网络对二维直流电阻率数据进行反演

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The backpropagation (BP) artificial neural network (ANN) technique of optimization based on steepest descent algorithm is known to be inept for its poor performance and does not ensure global convergence. Nonlinear and complex DC resistivity data require efficient ANN model and more intensive optimization procedures for better results and interpretations. Improvements in the computational ANN modeling process are described with the goals of enhancing the optimization process and reducing ANN model complexity. Well-established optimization methods, such as Radial basis algorithm (RBA) and Levenberg-Marquardt algorithms (LMA) have frequently been used to deal with complexity and nonlinearity in such complex geophysical records. We examined here the efficiency of trained LMA and RB networks by using 2-D synthetic resistivity data and then finally applied to the actual field vertical electrical resistivity sounding (VES) data collected from the Puga Valley, Jammu and Kashmir, India. The resulting ANN reconstruction resistivity results are compared with the result of existing inversion approaches, which are in good agreement. The depths and resistivity structures obtained by the ANN methods also correlate well with the known drilling results and geologic boundaries. The application of the above ANN algorithms proves to be robust and could be used for fast estimation of resistive structures for other complex earth model also.
机译:众所周知,基于最速下降算法的反向传播(BP)人工神经网络(ANN)优化技术无能为力,并且不能确保全局收敛。非线性和复杂的直流电阻率数据需要有效的ANN模型和更深入的优化程序,才能获得更好的结果和解释。描述了计算ANN建模过程的改进,目的是增强优化过程并降低ANN模型的复杂性。完善的优化方法,例如径向基算法(RBA)和Levenberg-Marquardt算法(LMA),经常用于处理此类复杂地球物理记录中的复杂性和非线性。我们在这里通过使用二维合成电阻率数据检查了经过训练的LMA和RB网络的效率,然后最终将其应用于从印度查mu和克什米尔的Puga谷地收集的实际场垂直电阻率测深(VES)数据。将所得的ANN重建电阻率结果与现有反演方法的结果进行比较,结果吻合良好。通过人工神经网络方法获得的深度和电阻率结构也与已知的钻探结果和地质边界紧密相关。上面的人工神经网络算法的应用被证明是鲁棒的,并且可以用于其他复杂地球模型的电阻结构的快速估计。

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