The article describes the software system of geotechnical control (SSGC) developed in Rosneft Oil Company with use of import-substituting technologies as well as provides information on the system functionality and applications. The SSGC provides the means for automating geotechnical monitoring processes carried out in order to improve environmental safety of oil and gas facilities located in areas of permafrost. The authors consider the general structure and features of the developed system modules as well as sources and techniques of data entry. The visualization functionality of SSGC enables a user to interact with the data stored in the system database, including working with a map of infrastructure facilities. The calculation modules of SSGC have been developed in accordance with building regulations and designed for modeling the thermal state of permafrost in a given area and calculating the pile foundation loads. The analytical module of the SSGC comes with a set of standard reports. The innovative part of the system is the module of geotechnical reports, which helps an expert to make control decisions using a neural network algorithm. The paper reveals the estimation of common efficiency of the proposed neural network algorithm, provides the basic perspectives of future development and further implementation of the created SSGC in Rosneft subsidiaries.
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