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Fuzzy classifier based support vector regression framework for Poisson ratio determination
Institution:1. Department of Oncology, King Abdulaziz Medical City, National Guard Health Affairs, PO Box 22490, Riyadh 11426, Saudi Arabia;2. Basic Sciences Department, College of Science and Health Professions, King Saud Bin Abdulaziz University for Health Sciences, P.O.box 3660, Mail code 3127, Riyadh 11481, Saudi Arabia,;1. Department of Control, Automation, and System Analysis, Saint Petersburg State Forest Technical University, Institutsky pereulok 5, Saint-Petersburg 194021, Russia;2. Department of Mathematics, University of York, York YO10 5DD, United Kingdom;1. Cr Research Group, Department of Physics, University of Johannesburg, PO Box 524, Auckland Park, Johannesburg, South Africa;2. Department of Physics, Natural and Agricultural Sciences, PO Box 339, Bloemfontein 9300, University of the Free State, South Africa;3. Elettra – Sincrotrone Trieste S.C.p.A., s.s. 14 – km 163, 5 in AREA Science Park 34149 Basovizza, Trieste, Italy;1. Department of Applied Statistics, National Taichung University of Science and Technology, Taichung, Taiwan;2. Department of Mathematics, National Taiwan Normal University, Taipei, Taiwan
Abstract:Poisson ratio is considered as one of the most important rock mechanical properties of hydrocarbon reservoirs. Determination of this parameter through laboratory measurement is time, cost, and labor intensive. Furthermore, laboratory measurements do not provide continuous data along the reservoir intervals. Hence, a fast, accurate, and inexpensive way of determining Poisson ratio which produces continuous data over the whole reservoir interval is desirable. For this purpose, support vector regression (SVR) method based on statistical learning theory (SLT) was employed as a supervised learning algorithm to estimate Poisson ratio from conventional well log data. SVR is capable of accurately extracting the implicit knowledge contained in conventional well logs and converting the gained knowledge into Poisson ratio data. Structural risk minimization (SRM) principle which is embedded in the SVR structure in addition to empirical risk minimization (EMR) principle provides a robust model for finding quantitative formulation between conventional well log data and Poisson ratio. Although satisfying results were obtained from an individual SVR model, it had flaws of overestimation in low Poisson ratios and underestimation in high Poisson ratios. These errors were eliminated through implementation of fuzzy classifier based SVR (FCBSVR). The FCBSVR significantly improved accuracy of the final prediction. This strategy was successfully applied to data from carbonate reservoir rocks of an Iranian Oil Field. Results indicated that SVR predicted Poisson ratio values are in good agreement with measured values.
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