Россия
Институт физики Земли им. О.Ю. Шмидта РАН
Москва, Россия
УДК 55 Геология. Геологические и геофизические науки
УДК 550.34 Сейсмология
УДК 550.383 Главное магнитное поле Земли
ГРНТИ 37.01 Общие вопросы геофизики
ГРНТИ 37.15 Геомагнетизм и высокие слои атмосферы
ГРНТИ 37.25 Океанология
ГРНТИ 37.31 Физика Земли
ГРНТИ 38.01 Общие вопросы геологии
ГРНТИ 36.00 ГЕОДЕЗИЯ. КАРТОГРАФИЯ
ГРНТИ 37.00 ГЕОФИЗИКА
ГРНТИ 38.00 ГЕОЛОГИЯ
ГРНТИ 39.00 ГЕОГРАФИЯ
ГРНТИ 52.00 ГОРНОЕ ДЕЛО
ОКСО 05.00.00 Науки о Земле
ББК 26 Науки о Земле
ТБК 63 Науки о Земле. Экология
BISAC SCI SCIENCE
An expert-based methodology for constructing an integrated spatial ranking of oil fields within petroleum provinces is presented. The approach is based on the attributive integration of normalized geological and technological parameters together with a relative capital intensity index (CAPEX) implemented within a GIS environment. The proposed method enables consistent comparative ranking of development targets and their cartographic representation, supporting strategic planning of hydrocarbon resource development. The study demonstrates the differentiation of major oil fields based on a combination of reservoir properties, technological development parameters, and natural–climatic conditions affecting field operations. The results indicate that high values of the integrated index are typically associated with fields characterized by favorable reservoir filtration–capacity properties (porosity–permeability characteristics) and moderate burial depths, whereas complex deep carbonate reservoirs tend to exhibit higher relative capital intensity. The results confirm the applicability of the integrated ranking methodology for comparative evaluation and spatial prioritization of prospective areas within major petroleum provinces, including territories located in the Arctic zone of the Russian Federation.
petroleum provinces, oil fields, geoinformatics, ranking, GIS, relative capital intensity index (CAPEX)
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