LAPSE:2019.0951
Published Article
LAPSE:2019.0951
Identification of the Thief Zone Using a Support Vector Machine Method
Cheng Fu, Tianyue Guo, Chongjiang Liu, Ying Wang, Bin Huang
August 14, 2019
Waterflooding is less effective at expanding reservoir production due to interwell thief zones. The thief zones may form during high water cut periods in the case of interconnected injectors and producers or lead to a total loss of injector fluid. We propose to identify the thief zone by using a support vector machine method. Considering the geological factors and development factors of the formation of the thief zone, the signal-to-noise ratio and correlation analysis method were used to select the relevant evaluation indices of the thief zone. The selected evaluation indices of the thief zone were taken as the input of the support vector machine model, and the corresponding recognition results of the thief zone were taken as the output of the support vector machine model. Through the training and learning of sample sets, the response relationship between thief zone and evaluation indices was determined. This method was used to identify 82 well groups in M oilfield, and the identification results were verified by a tracer monitoring method. The total identification accuracy was 89.02%, the positive sample identification accuracy was 92%, and the negative sample identification accuracy was 84.375%. The identification method easily obtains data, is easy to operate, has high identification accuracy, and can provide certain reference value for the formulation of profile control and water shutoff schemes in high water cut periods of oil reservoirs.
Keywords
correlation analysis, signal-to-noise ratio, support vector machine, thief zone, tracer monitoring
Suggested Citation
Fu C, Guo T, Liu C, Wang Y, Huang B. Identification of the Thief Zone Using a Support Vector Machine Method. (2019). LAPSE:2019.0951
Author Affiliations
Fu C: Key Laboratory of Enhanced Oil Recovery, Ministry of Education, College of Petroleum Engineering, Northeast Petroleum University, Daqing 163318, China; Post-Doctoral Scientific Research Station, Daqing Oilfield Company, Daqing 163413, China
Guo T: Key Laboratory of Enhanced Oil Recovery, Ministry of Education, College of Petroleum Engineering, Northeast Petroleum University, Daqing 163318, China
Liu C: Research Institute of Production Engineering, Daqing Oilfield, Daqing 163453, China
Wang Y: Aramco Asia, Beijing 100102, China
Huang B: Key Laboratory of Enhanced Oil Recovery, Ministry of Education, College of Petroleum Engineering, Northeast Petroleum University, Daqing 163318, China
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Journal Name
Processes
Volume
7
Issue
6
Article Number
E373
Year
2019
Publication Date
2019-06-16
Published Version
ISSN
2227-9717
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Original Submission
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PII: pr7060373, Publication Type: Journal Article
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LAPSE:2019.0951
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doi:10.3390/pr7060373
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Aug 14, 2019
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CC BY 4.0
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Aug 14, 2019
 
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Original Submitter
Calvin Tsay
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