|Table of Contents|

Tight Gas Resource Evaluation Based on ArcGIS Spatial Graph Interpolation Method—A Case Study of Timan-Pechora Basin in Russia(PDF)

《地球科学与环境学报》[ISSN:1672-6561/CN:61-1423/P]

Issue:
2023年第05期
Page:
1246-1256
Research Field:
庆贺汤中立院士从事地质工作七十周年专辑
Publishing date:

Info

Title:
Tight Gas Resource Evaluation Based on ArcGIS Spatial Graph Interpolation Method—A Case Study of Timan-Pechora Basin in Russia
Author(s):
WANG Yong-hua1 YU Yuan-jiang12* WU Zhen-zhen1 ZHANG Qian1 WANG Hong-jun1 MA Feng1 LIU Zuo-dong1 ZHANG Xin-shun1
(1. Research Institute of Petroleum Exploration and Development, PetroChina, Beijing 100083, China; 2. National Energy Shale Gas R&D(Experiment)Center, Beijing 100083, China)
Keywords:
tight gas resource evaluation ArcGIS spatial graph interpolation method graphics key parameter data parameter interpolation method interpolation operation Russia
PACS:
TE19; P618.13
DOI:
10.19814/j.jese.2023.04026
Abstract:
Tight gas exhibits a large area of continuous accumulation distribution, strong reservoir heterogeneity, and significant differences in resource abundance. Traditional volumetric resource evaluation cannot characterize key parameters and resource heterogeneity, as well as differences in resource abundance plane distribution. Based on the basic exploration and development data of global unconventional oil and gas of PetroChina, the global commercial database of oil and gas basins, and the data management and spatial overlay analysis functions provided by ArcGIS software, ArcGIS spatial graph interpolation method(ArcGIS SGIM)and its seven-step technical process for evaluating tight gas resources were established. The process converts the key graphics and data parameters of the evaluation area into ArcGIS spatial vector data, delineate the evaluation area and evaluation units based on the similarity of geological attributes, and grid on the area. The common Kriging interpolation method is preferred to carry out spatial interpolation and assignment on each parameter using the grid as a unit, stack the key parameter grid map in space, calculate and integrate the grid resources. Finally, the geological resource amount, recoverable resource amount, abundance and map of the whole evaluation area are obtained. This method is applied to evaluate the tight gas resource of Timan-Pechora Basin in Russia. The results show that the total recoverable resource potential of Permian is 3 400×108 m3. The “sweet-spot areas” are mainly distributed in the uplift zone and piedmont depression zone in the north, south and east of the evaluation area. The northern and eastern piedmont depression zones have favorable reservoir formation combinations, shallow burial depth of Permian in the platform area, and the lowest exploration degree in some parts of Arctic sea. It is predicted to have the most potential and is an important stronghold for opening a strategic base for Arctic resources.

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Last Update: 2023-10-15