Affiliation:
1. University of Tyumen; Tyumen Oil Research Center
2. Tyumen Petroleum Research Center
Abstract
For solving the problems of operational control and optimization of the waterflooding system, the choice of a model should be based on an understanding of its predictive ability. The article obtained the results of assessing the predictive ability of the CRM analytical material balance model in the framework of a retrospective test at a real field site. In addition to the single-phase representation, classical for the CRM model, special attention is paid to the predictive qualities of the two-phase formulations of the model. Based on the test results, it is shown that the CRM model in a two-phase setting allows predicting oil production at a high level of accuracy with detailing to waterflooding elements.
Subject
General Earth and Planetary Sciences,General Environmental Science
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