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中文
Yongchen Song

Professor
Supervisor of Doctorate Candidates
Supervisor of Master's Candidates


Gender:Male
Alma Mater:大连理工大学
Degree:Doctoral Degree
School/Department:能源与动力学院
Discipline:Energy and Environmental Engineering
Business Address:能动大楼810
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Current position: Home >> Scientific Research >> Paper Publications
The sensitivity analysis of wellbore heat transfer during the CO2 injection process

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Indexed by:Journal Article

Date of Publication:2013-12-18

Journal:Advanced Materials Research

Included Journals:Scopus、CPCI-S、EI

Volume:889-890

Page Number:1638-1643

ISSN:9783038350156

Key Words:CO2 wellbore heat transfer; sensitivity analysis; oil field simulation

Abstract:The sensitivity analysis of wellbore heat transfer during the CO2 injection process is of vital importance to Carbon dioxide utilization and sequestration (CCUS). A numerical simulation method is developed to simulate the process of wellbore heat transfer during injecting carbon dioxide by amending the classical heat transfer model-Ramey models. It analyses how the selected parameters affect the distribution of the wellbore temperature and pressure, which include CO2 injection temperature, pressure and density, the injection flow rate and Joule Thomson coefficient. The results show that, CO2 injection temperature has greater impact on the initial level of the temperature distribution; higher injection pressure raises the temperature mainly because of the effect of Joule Thomson coefficient; also, when the injection process lasts a longer time, the distribution is much more stable. When the injection flow rate is higher, the strata temperature has less influence on the flow temperature. The injection pressure and density has very appreciable effect on the pressure distribution. However, the other parameters have less influence on it. The modified simulation method was applied in Jiangsu Caoshe oil field and the simulation results coincided with the measuring data well.