Paper
10 November 2021 Geological hazard risk assessment of oil and gas gathering and transportation pipeline based on ARCGIS
Dongdong Yan, Xingyu Xu, Bo Tian, Xuefu Li, Jingjing Qi, Jianing Li, Kai Chen
Author Affiliations +
Proceedings Volume 12050, International Conference on Smart Transportation and City Engineering 2021; 120505X (2021) https://doi.org/10.1117/12.2614336
Event: 2021 International Conference on Smart Transportation and City Engineering, 2021, Chongqing, China
Abstract
In order to enhance oil and gas pipelines’ geological hazard risk identification and prevention and control capabilities, an important gas gathering pipeline in Southwestern China was selected for the study. The main influencing factors were optimized by comprehensively considering the risk of geological disasters and the vulnerability of disaster bearing bodies. The risk assessment method of geological disasters was constructed, and the evaluation factors were graded by using the spatial analysis function of ArcGIS. The risk of geological hazards in the study area was divided into five levels from high to low by normalization. The results show that this research method can effectively evaluate the current situation of geological hazard risks in gathering and transportation pipelines and provide reliable theoretical support for the management of geological hazards in mountainous oil and gas fields.
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Dongdong Yan, Xingyu Xu, Bo Tian, Xuefu Li, Jingjing Qi, Jianing Li, and Kai Chen "Geological hazard risk assessment of oil and gas gathering and transportation pipeline based on ARCGIS", Proc. SPIE 12050, International Conference on Smart Transportation and City Engineering 2021, 120505X (10 November 2021); https://doi.org/10.1117/12.2614336
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KEYWORDS
Hazard analysis

Superposition

Spatial analysis

Data modeling

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