Affiliation:
1. King Fahd University of Petroleum & Minerals
Abstract
Abstract
The static Young's Modulus (Estatic) is an important parameter affecting the design of different aspects related to oil and gas producing wells. It is significantly changing based on the type of the formation, and hence, an accurate method of identifying Estatic is required. This study evaluates the performance of support vector regression (SVR) for prediction of the Estatic. The SVR model was learned to evaluate the Estatic from the well logs of the bulk formation density in addition to compressional and shear transit time. It was learned and tested on 592 training datasets of the inputs and their corresponding Estatic, these datasets were obtained from a sandstone formation in Well-A. The learned SVR model was then validated on 38 data points from Well-B, the performance of the optimized SVR on predicting the Estatic for the validation data was also compared with these of the early optimized artificial neural networks (ANN) and functional neural networks (FNN). As a result, all machine learning models showed high precision in predicting the Estatic for the validation data where Estatic was estimated with average absolute percentage errors of 3.80%, 2.54, and 2.03% and correlation coefficients of 0.991, 0.997, and 0.999 using the optimized ANN, FNN, and SVR models, respectively. This result shows the high accuracy of the SVR on predicting the Estatic.
Reference37 articles.
1. Abdulraheem, A., Ahmed, M., Vantala, A., & Parvez, T.
Prediction of Rock Mechanical Parameters for Hydrocarbon Reservoirs Using Different Artificial Intelligence Techniques. In Proceedings of the SPE Saudi Arabia Section Technical Symposium, Al-Khobar, Saudi Arabia, 9-11 May 2009. SPE-126094-MS. https://doi.org/10.2118/126094-MS
2. Ahmed, S.A., Mahmoud, A.A., and Elkatatny, S., 2019a. Fracture Pressure Prediction Using Radial Basis Function. Paper AADE-19-NTCE-061 Presented at the 2019 AADE National Technical Conference and Exhibition, Denver, Colorado, USA, April 9-10.
3. Ahmed, S.A., Mahmoud, A.A., and Elkatatny, S., Mahmoud, M., and Abdulraheem, A., 2019b. Prediction of Pore and Fracture Pressures Using Support Vector Machine. Paper IPTC-19523-MS Presented at the 2019 International Petroleum Technology Conference, Beijing, China, 26-28 March. https://doi.org/10.2523/IPTC-19523-MS
4. Prediction of the Rate of Penetration while Drilling Horizontal Carbonate Reservoirs Using the Self-Adaptive Artificial Neural Networks Technique;Al-Abduljabbar;Sustainability,2020
5. Artificial neural network model for real-time prediction of the rate of penetration while horizontally drilling natural gas-bearing sandstone formations;Al-Abduljabbar;Arabian Journal of Geosciences 14,2020
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献