eecd30bb-a8ee-4494-a469-e06002e1135e20201231065210147wseamdt@crossref.orgMDT DepositWSEAS TRANSACTIONS ON COMPUTER RESEARCH1991-875510.37394/232018http://wseas.org/wseas/cms.action?id=13372352020352020810.37394/232018.2020.8http://www.wseas.org/wseas/cms.action?id=23207Forecasting Gas and Oil Potential of Subsoil Plots via Co-analysis of Satellite, Geological, Geophysical and Geochemical Information by Means of Subjective LogicMykhailo O.PopovScientific Centre for Aerospace Research of the Earth, National Academy of Sciences of Ukraine, 55-B Oles Gonchar str., Kiev, 01054, UKRAINEМaksym V.ТopolnytskyiScientific Centre for Aerospace Research of the Earth, National Academy of Sciences of Ukraine, 55-B Oles Gonchar str., Kiev, 01054, UKRAINEOlga V.TitarenkoScientific Centre for Aerospace Research of the Earth, National Academy of Sciences of Ukraine, 55-B Oles Gonchar str., Kiev, 01054, UKRAINESergey Α.StankevichScientific Centre for Aerospace Research of the Earth, National Academy of Sciences of Ukraine, 55-B Oles Gonchar str., Kiev, 01054, UKRAINEАrtem A.АndreievScientific Centre for Aerospace Research of the Earth, National Academy of Sciences of Ukraine, 55-B Oles Gonchar str., Kiev, 01054, UKRAINEThe purpose of the paper is to substantiate a new approach to forecasting hydrocarbon potential of subsoil plots via co-analysis of satellite, geo-geophysical and geochemical information by means of subjective logic. Basic concepts of subjective logic are given, the method of forecasting the oil and gas potential of a subsoil plots is described. The method is tested by applying it to real area with hydrocarbon deposits.68202068202090101https://www.wseas.org/multimedia/journals/computerresearch/2020/a225118-083.pdf10.37394/232018.2020.8.11https://wseas.org/multimedia/journals/computerresearch/2020/a225118-083.pdf- https://www.wseas.org/multimedia/journals/computerresearch/2020/a225118-083.pdf
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