Title :
Estimating one-dimensional models from frequency-domain electromagnetic data using modular neural networks
Author :
Poulton, Mary M. ; Birken, Ralf A.
Author_Institution :
Dept. of Min. & Geol. Eng., Arizona Univ., Tucson, AZ, USA
fDate :
3/1/1998 12:00:00 AM
Abstract :
An artificial neural network interpretation system is being used to interpret data from a frequency-domain electromagnetic (EM) geophysical system in near real time. The interpretation system integrates 45 separate networks in a data visualization shell. The networks produce interpretations at three different transmitter-receiver (Tx-Rx) separations for half-space and layered-Earth interpretations. Modular neural networks (MNNs) were found to be the only paradigm that could successfully perform the layered-Earth interpretations. An MNN with 16 inputs, five local experts, each with seven hidden processing elements, and three outputs was trained on 4795 patterns for 200 epochs. For two-layer models with a resistivity contrast greater than 2:1, resistivity estimates had greater than 96% accuracy for the first-layer resistivity, greater than 98% for the second-layer resistivity, and greater than 96% for the thickness of the first layer. If the contrast is less than 2:1, the resistivity accuracies are unaffected but thickness estimates for layers less than 2 m are unreliable. A Tx-Rx separation of 16 m with maximum depth of penetration of 8 m was assumed for the example cited
Keywords :
electromagnetic induction; feedforward neural nets; geophysical prospecting; geophysical techniques; geophysics computing; terrestrial electricity; EM induction; data visualization shell; feedforward neural net; frequency-domain electromagnetic data; geoelectric method; geophysical measurement technique; geophysics computing; half-space; layered medium; modular neural network; one-dimensional model; prospecting; terrestrial electricity; transmitter-receiver separation; two-layer model; Artificial neural networks; Conductivity; Earth; Electromagnetic modeling; Frequency estimation; Geology; Gravity; Laboratories; Neural networks; Power engineering and energy;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on