An improved interwell connectivity model to obtain interwell connectivity information by using complex well data

Author:

Liu Shun1,Cao Lin2,He Heng3,Yang Tao4,Zhou De-sheng1

Affiliation:

1. Shaanxi Key Laboratory of Advanced Stimulation Technology for Oil & Gas Reservoirs, Engineering Research Center of Development and Management for Low to Ultra-low Permeability Oil & Gas Reservoirs in West China (Ministry of Education), Xi’an Shiyou University, China

2. School of Petroleum Engineering, Yangtze University, China

3. Research Institute of Oil and Gas Technology, Changqing Oilfield Company, China

4. School of Safety Engineering, North China Institute of Science & Technology, China

Abstract

Information on interwell connectivity is important in reservoir field dynamic analysis. However, all conventional methods, such as the tracer test, interference well test, and numerical simulation, have disadvantages. These disadvantages include the length of time taken, high costs, and the effect on oilfield production. Thus, research focus has been directed toward the development of approaches that use production and injection data to obtain interwell connectivity data. Prevailing interwell connectivity models are sensitive to shut-ins, and their corresponding inversion methods are unreliable. The improved interwell connectivity model presented in this study exhibits enhanced robustness to shut-ins. The application of seepage theories and numerical simulation methods enables the main model parameters to absorb prior geological knowledge to characterize the reservoir and improve the initial estimate of connectivity. Corresponding inverse methods for model parameters are implemented based on Bayesian inverse theory and the projection gradient method and obtain greater robustness for the model parameter, compared with those in previous studies. Testing of a heterogeneous synthetic reservoir and a Z16 reservoir block demonstrates that the methodology can precisely determine the interwell connectivity and can be used in real oilfields.

Funder

the China Important National Science & Technology Specific Projects

national natural science foundation of china

the Project of Open Fund of State Key Laboratory of Offshore Oil Exploitation

PetroChina Innovation Foundation

Publisher

SAGE Publications

Subject

Computer Graphics and Computer-Aided Design,Modeling and Simulation,Software

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