Nonlinear inversion of electrical resistivity imaging using pruning Bayesian neural networks
Jiang Fei-Bo1,2, Dai Qian-Wei2, and Dong Li2,3
1. College of Physics and Information Science, Hunan Normal University, Changsha 410081, China.
2. School of Geosciences and Info-Physics, Central South University, Changsha 410083, China.
3. Department of Information Science and Engineering, Hunan International Economics University, Changsha 410205, China.
Abstract:
Conventional artificial neural networks used to solve electrical resistivity imaging (ERI) inversion problem suffer from overfitting and local minima. To solve these problems, we propose to use a pruning Bayesian neural network (PBNN) nonlinear inversion method and a sample design method based on the K-medoids clustering algorithm. In the sample design method, the training samples of the neural network are designed according to the prior information provided by the K-medoids clustering results; thus, the training process of the neural network is well guided. The proposed PBNN, based on Bayesian regularization, is used to select the hidden layer structure by assessing the effect of each hidden neuron to the inversion results. Then, the hyperparameter αk, which is based on the generalized mean, is chosen to guide the pruning process according to the prior distribution of the training samples under the small-sample condition. The proposed algorithm is more efficient than other common adaptive regularization methods in geophysics. The inversion of synthetic data and field data suggests that the proposed method suppresses the noise in the neural network training stage and enhances the generalization. The inversion results with the proposed method are better than those of the BPNN, RBFNN, and RRBFNN inversion methods as well as the conventional least squares inversion.
JIANG Fei-Bo,DAI Qian-Wei,DONG Li. Nonlinear inversion of electrical resistivity imaging using pruning Bayesian neural networks[J]. APPLIED GEOPHYSICS, 2016, 13(2): 267-278.
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