Title :
Prediction of PVT properties in crude oil systems using support vector machines
Author :
Nagi, Jawad ; Kiong, Tiong Sieh ; Ahmed, Syed Khaleel ; Nagi, Farrukh
Author_Institution :
Dept. of Electron. & Commun. Eng., Univ. Tenaga Nasional, Kajang, Malaysia
Abstract :
Calculation of reserves in an oil reservoir and the determination of its performance and economics require good knowledge of its physical properties. Accurate determination of the pressure-volume-temperature (PVT) properties such as the bubble point pressure (Pb) and the oil formation volume factor (Bob) are important in the primary and subsequent development of an oil field. This paper proposes Support Vector Machines (SVMs) as a novel machine learning technique for predicting outputs in uncertain situations using the ¿-Support Vector Regression (¿-SVR) method. The objective of this research is to investigate the capability of SVRs in modeling PVT properties of crude oil systems and solving existing Artificial Neural Network (ANN) drawbacks. Three datasets used for training and testing the SVR prediction model were collected from distinct published sources. The ¿-SVR model incorporates four input features from the datasets: (1) solution gas-oil ratio, (2) reservoir temperature, (3) oil gravity and, (4) gas relative density. A comparative study is carried out to compare ¿-SVR performance with ANNs, nonlinear regression, and different empirical correlation techniques. The results obtained reveal that the ¿-SVR once successfully trained and optimized is more accurate, reliable, and outperforms the other existing approaches such as empirical correlation for estimating crude oil PVT properties.
Keywords :
crude oil; economics; hydrocarbon reservoirs; learning (artificial intelligence); neural nets; regression analysis; support vector machines; artificial neural network; crude oil systems; economics; empirical correlation techniques; machine learning; nonlinear regression; oil reservoir; pressure-volume-temperature properties; support vector machines; ¿-support vector regression; Artificial neural networks; Economic forecasting; Gravity; Hydrocarbon reservoirs; Machine learning; Petroleum; Predictive models; Support vector machines; Temperature; Testing; PVT properties; Support vector machine; bubble point pressue; oil formation volume factor; support vector regression;
Conference_Titel :
Energy and Environment, 2009. ICEE 2009. 3rd International Conference on
Conference_Location :
Malacca
Print_ISBN :
978-1-4244-5144-9
Electronic_ISBN :
978-1-4244-5145-6
DOI :
10.1109/ICEENVIRON.2009.5398681