3D MODELING OF SATELLITE-DERIVED GEOSPATIAL DATA FOR OIL AND GAS SYSTEM DESIGN
Keywords:
Design of oil and gas systems, Satellite, GIS, satellite imagery, map, MODIS, Landsat, SentinelAbstract
In recent decades, during the period of rapid development of science and technology, a new fundamental method for identifying and studying resources in oil and gas fields has enabled the use of a satellite system. Having a detailed understanding of the types of satellites and their use, as well as the use of AI tools, ensures the acquisition of fast and accurate information. This article presents information on the creation and use of a software package for creating 3D models of satellite geospatial data in the design of oil and gas systems.
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Copyright (c) 2025 Mаrkhаbо Shukurоvа, E'zoza Abdurakhmanova, Feruza Usarkulova, Munisbek Botirov

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