Article ID Journal Published Year Pages File Type
8124536 Journal of Petroleum Science and Engineering 2018 61 Pages PDF
Abstract
In this study, a three-layer feedforward multilayered perceptron artificial neural network model is presented. This model aims to estimate compressional wave transit time and shear wave transit time using real gamma ray and formation density logs. The validation of the model is confirmed by using an oil and gas offshore shaley sandstone reservoir located in West Africa. The results of the validation show that the model presented in this study can be used to determine the sanding potential of the formation without performing a compressive geoscientific analysis in the absence of sonic well logs. The developed model's effectiveness is tested by comparing the predicted results with results obtained from the measured well log. The paper provides a tool to give preliminary recommendations of the likelihood of the formation to produce sand. Implementation of the proposed model can serve as a cost-effective and reliable alternative for the oil and gas industry.
Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Economic Geology
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