March 2025
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2 Reads
Earth Science Informatics
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March 2025
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2 Reads
Earth Science Informatics
September 2024
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153 Reads
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3 Citations
Earth Science Informatics
The elastic modulus of basalt is a significant engineering parameter required for many projects. Therefore, a total of 137 datasets of basalts from Digor-Kilittasi, Turkey, were used to predict the elastic modulus of intact rock (Ei) for this study. P wave velocity, S wave velocity, apparent porosity, and dry density parameters were employed as input parameters. In order to predict Ei, seven different models with two or three inputs were constructed, employing four different machine learning methods such as Support Vector Machine (SVM), Gaussian Process Regression (GPR), Ensembles of Tree (ET), and Regression Trees (RT). The performance of datasets, models, and methods was evaluated using the coefficient of determination (R²), Root Mean Squared Error (RMSE), Mean Squared Error (MSE), and Mean Absolute Error (MAE). This study presented and analyzed the performance of four machine learning methods. A ranking approach was employed to determine the best performing method and dataset. Based on these evaluations, all four machine learning techniques effectively estimate the value of Ei. While they can be used as an appropriate choice for estimating the elastic modulus of basaltic rocks, the ET approach appears to be the most successful method. However, the performance of the GPR is the worst according to model assessments. The average R² values for Model 1 through 7 of the ET method for the five test datasets are 0.97, 0.93, 0.89, 0.97, 0.91, 0.99, and 0.99, respectively. The the average R² values for GPR from Models 1 to 7 for the five test datasets are 0.73, 0.55, 0.69, 0.48, 0.47, 0.73, 0.56, respectively. An additional indication that the ET performed better than all the other methods was the Taylor diagram, which made it simple to determine how well the model predictions matched the observations. Furthermore, these findings validate the performance of the machine learning techniques employed in this study as valuable instruments for future investigations into the modeling of complex engineering issues. The results of this study suggest that machine learning algorithms can help reduce the need for high-quality core samples and labor-intensive procedures in predicting the elastic modulus of basaltic rocks, resulting in time and cost savings.
... In recent years, machine learning has been successfully applied in various fields. It has been used to predict the elastic modulus of rocks, which is an important parameter for engineering geology [19], to predict the hypocenters of earthquakes [20], to measure uncertainties in the electrical grid for renewable energy production, and investigate the predictability of their behaviors [21], in the experimental analysis of a heat recovery air handling unit [22]. Heo et al. previous studies highlighted the lack of a theoretical formula to explain the temperature separation phenomenon due to the complex flow field, relying instead on narrow, data-driven models tailored to specific devices. ...
September 2024
Earth Science Informatics