We have developed a Deep Learning method based on the neural network of the Feed Forward type to estimate the depth to the carbonate basement from potential fields. The data used to train and test the network are related to the Bishop synthetic model. The training was organized associating the depth values of the basement to the data through a moving window, running along profiles in the N-S and E-W directions. In this way we generated a set of about 300000 examples. We verified the robustness of the trained net by carrying out a test related to another synthetic model, extracted from the Himalaya Digital Elevation Model. The inherent ambiguity of the problem led us to test two hypotheses for the estimation of the basement depth, the first related to a priori information on the density contrast and the shallowest depth, the second assuming the knowledge of the depth at least at two points, but not that of the density contrast. In both cases, our data-driven approach yielded interesting results leading to estimate the maximum depth in the first case and the density contrast in the second one. We finally applied the method to the isostatic anomaly of the Yucca Flat sedimentary basin, Nevada. The results are consistent with previous interpretation of the area, that were based on gravity inversion methods.

Deep Learning to estimate the basement depth by gravity data using Feedforward neural network / Vitale, A.; Gabbriellini, G.; Fedi, M.. - In: GEOPHYSICS. - ISSN 0016-8033. - 88:3(2023), pp. 95-103. [10.1190/geo2022-0201.1]

Deep Learning to estimate the basement depth by gravity data using Feedforward neural network

Fedi M.
Ultimo
2023

Abstract

We have developed a Deep Learning method based on the neural network of the Feed Forward type to estimate the depth to the carbonate basement from potential fields. The data used to train and test the network are related to the Bishop synthetic model. The training was organized associating the depth values of the basement to the data through a moving window, running along profiles in the N-S and E-W directions. In this way we generated a set of about 300000 examples. We verified the robustness of the trained net by carrying out a test related to another synthetic model, extracted from the Himalaya Digital Elevation Model. The inherent ambiguity of the problem led us to test two hypotheses for the estimation of the basement depth, the first related to a priori information on the density contrast and the shallowest depth, the second assuming the knowledge of the depth at least at two points, but not that of the density contrast. In both cases, our data-driven approach yielded interesting results leading to estimate the maximum depth in the first case and the density contrast in the second one. We finally applied the method to the isostatic anomaly of the Yucca Flat sedimentary basin, Nevada. The results are consistent with previous interpretation of the area, that were based on gravity inversion methods.
2023
Deep Learning to estimate the basement depth by gravity data using Feedforward neural network / Vitale, A.; Gabbriellini, G.; Fedi, M.. - In: GEOPHYSICS. - ISSN 0016-8033. - 88:3(2023), pp. 95-103. [10.1190/geo2022-0201.1]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/959920
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