The current work deals with an intelligent application that uses machine learning to analyze and attribute the resulting seismic data to improve and predict the locations of exploration, drilling, and production operations in petrophysical oil. Statistical analyzes of exploratory data analysis (EDA) were used to extract seismic features. This follows the application of two intelligent approaches of Recurrent Neural Networks (RNN) and K-Nearest Neighbors (KNN) to predict porosity. The parameters of seismic data with different seismic attributes were detected at the site by the seismic time-series method. The long-term memory (LSTM) algorithm is the most appropriate way to handle serial data. LSTM has a high capacity for data structure manipulation, which is applied for porosity prediction. Which depends a lot on choosing the best attributes? The two approaches evaluate by absolute error (MAE) and root means square error (RMSE). The results for both models used showed that using (LSTM) is more effective than using (KNN) in predicting porosity through seismic data, where the mean absolute error was obtained. (MAE) 0.017, while with KNN the mean absolute error (MAE) is 0.260 and the results showed that the model used can predict porosity very effectively.
Dergi Türü : Uluslararası
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