Bayesian prediction of potential depressions in the Erlian Basin based on integrated geophysical parameters

In this study, we analyzed the geological, gravity, magnetic, and electrical characteristics of depressions in the Erlian Basin. Based on the results of these analyses, we could identify four combined feature parameters showing strong correlations and sensibilities to the reservoir oil-bearing condi...

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Veröffentlicht in:Applied geophysics 2020-09, Vol.17 (3), p.338-348
Hauptverfasser: Xu, Feng-Jiao, Tang, Chuan-Zhang, Yan, Liang-Jun, Chen, Qing-Li, Feng, Guang-Ye
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container_start_page 338
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creator Xu, Feng-Jiao
Tang, Chuan-Zhang
Yan, Liang-Jun
Chen, Qing-Li
Feng, Guang-Ye
description In this study, we analyzed the geological, gravity, magnetic, and electrical characteristics of depressions in the Erlian Basin. Based on the results of these analyses, we could identify four combined feature parameters showing strong correlations and sensibilities to the reservoir oil-bearing conditions: the average residual gravity anomaly, the average magnetic anomaly, the average depth of the conductive key layer, and the average elevation of the depressions. The feature parameters of the 65 depressions distributed in the whole basin were statistically analyzed: each of them showed a Gaussian distribution and had the basis of Bayesian theory. Our Bayesian predictions allowed the definition of a formula to calculate the posterior probability of oil occurrence in the depressions based on the combined characteristic parameters. The feasibility of this prediction method was verified by considering the results obtained for the 22 drilled depressions. Subsequently, we were able to determine the oil-bearing threshold of hydrocarbon potential for the depressions in the Erlian Basin, which can be used as a standard for quantitative optimizations. Finally, the proposed prediction method was used to calculate the probability of hydrocarbons in the other 43 depressions. Based on this probability and on the oil-bearing threshold, the five depressions with the highest potential were selected as targets for future seismic explorations and drilling. We conclude that the proposed method, which makes full use of massive gravity, magnetic, electric, and geological data, is fast, effective, and allows quantitative optimizations; hence, it will be of great value for the comprehensive geophysical evaluation of oil and gas in basins with depression group characteristics.
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Subsequently, we were able to determine the oil-bearing threshold of hydrocarbon potential for the depressions in the Erlian Basin, which can be used as a standard for quantitative optimizations. Finally, the proposed prediction method was used to calculate the probability of hydrocarbons in the other 43 depressions. Based on this probability and on the oil-bearing threshold, the five depressions with the highest potential were selected as targets for future seismic explorations and drilling. 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We conclude that the proposed method, which makes full use of massive gravity, magnetic, electric, and geological data, is fast, effective, and allows quantitative optimizations; hence, it will be of great value for the comprehensive geophysical evaluation of oil and gas in basins with depression group characteristics.</abstract><cop>Beijing</cop><pub>Chinese Geophysical Society</pub><doi>10.1007/s11770-020-0823-9</doi><tpages>11</tpages></addata></record>
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subjects Bayesian analysis
Case Histories
Conditional probability
Drilling
Earth and Environmental Science
Earth Sciences
Elevation
Exploratory drilling
Feasibility studies
Gaussian distribution
Geologic depressions
Geological data
Geology
Geophysics
Geophysics/Geodesy
Geotechnical Engineering & Applied Earth Sciences
Gravity
Gravity anomalies
Hydrocarbons
Magnetic anomalies
Mathematical analysis
Normal distribution
Oil
Oil and gas exploration
Oil exploration
Parameter identification
Parameters
Predictions
Probability theory
Statistical analysis
title Bayesian prediction of potential depressions in the Erlian Basin based on integrated geophysical parameters
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