Key words: geologic-technological model, artificial intelligence, wells process optimization.
At present, the important issue is to develop a system of effective management and monitoring of the oil and gas field, for which have been used hydrodynamic model. In this paper, the basic steps of creating a permanent geological and technological model (PDGTM) and the analysis of the data needed for its construction are presented. On the basis of PDGM and neural network models to improve the system of automatic control and monitoring of oil and gas development is proposed the system-integrated approach that takes into account the basic system principles of the oil and gas development design and control processes. To ensure matching of recovery rates and injection fluid it is proposed local automation and control system of oil production well operation modes. On this basis, the optimization solutions modeling method is functionally extended, providing options to optimize modeling and decision making in the control and management of oil and gas development system.
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