Title :
A preliminary study on well-based surrogate reservoir model
Author :
Memon, Paras Q. ; Suet-Peng Yong ; Pao, William ; Sean, Pau J.
Author_Institution :
Dept. of Comput. Inf. & Sci., Univ. Teknol. Petronas, Tronoh, Malaysia
Abstract :
Reservoir simulation software is an important tool in oil and gas industries to predict the multiphase flow of reservoirs. The output from reservoir simulation consists of production history, reservoir pressure, grid block saturation, porosity and permeability change etc. Due to the intrinsic set of uncertainty in reservoir simulation prediction, considerable number of simulation runs to be performed. As reservoir models becoming more complex, the size of the resulting reservoir models become larger and larger. Making hundreds and thousands of simulations require considerable amount of time and sometimes simply impractical. Hence, Well-based Surrogate Reservoir Model (SRM) is a potential candidate to be used as a solution tool to solve this issue. This paper presents a workflow of Well-based SRM that mines the output data from conventional dynamic reservoir simulation. As a part of this system, it is proposed to develop Well-based SRM extraction based on Artificial Neural Network (ANN) to enhance the realization run time. Well-based SRM is used for fast track analysis, decision optimization and has the capability of generating shorter time simulation response in relation to the conventional dynamic reservoir model.
Keywords :
gas industry; hydrocarbon reservoirs; neural nets; petroleum industry; production engineering computing; ANN; artificial neural network; conventional dynamic reservoir simulation; decision optimization; fast track analysis; gas industries; grid block saturation; multiphase flow; oil industries; permeability change; porosity; production history; reservoir pressure; reservoir simulation prediction; reservoir simulation software; simulation response; well-based SRM extraction; well-based surrogate reservoir model; workflow; Analytical models; Artificial neural networks; Neurons; Permeability; Predictive models; Production; Reservoirs; Artificial Neural Network and Data Mining; Filtering; Surrogate Reservoir Model;
Conference_Titel :
Research and Development (SCOReD), 2013 IEEE Student Conference on
Conference_Location :
Putrajaya
DOI :
10.1109/SCOReD.2013.7002595