During present offshore gas-condensate production, multiphase flow-meters, due to its exceedingly high cost, are being substituted by a soft sensing (SS) technique for estimating total and single-well flowrates through sensor measurements and physical models. In this work, the inverse problem is solved by data reconciliation (DR), minimizing weighted sum of errors with constraints integrating multiple two-phase flow models. The DR problem is solved by parallel genetic algorithm (PGA) without complex calculations required by conventional optimization. The newly developed SS method is tested by data from a realistic gas-condensate production system. The method is proved of good accuracy and robustness with invalid individual pressure sensor or unavailable total flowrate measurements. Meanwhile, the proposed method shows good parallel performance and the time cost of each DR process can meet the demand of engineering application.
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December 2019
Research-Article
Soft Sensing for Gas-Condensate Field Production Using Parallel-Genetic-Algorithm-Based Data Reconciliation
Dan Wang,
Dan Wang
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: wangdanradio@126.com
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: wangdanradio@126.com
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Jing Gong,
Jing Gong
Professor
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: ydgj@cup.edu.cn
National Engineering Laboratory for Pipeline Safety,
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: ydgj@cup.edu.cn
Search for other works by this author on:
Qi Kang,
Qi Kang
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: kangqichn@qq.com
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: kangqichn@qq.com
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Di Fan,
Di Fan
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: 904533915@qq.com
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: 904533915@qq.com
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Juheng Yang
Juheng Yang
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: yangjuheng@126.com
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: yangjuheng@126.com
Search for other works by this author on:
Dan Wang
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: wangdanradio@126.com
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: wangdanradio@126.com
Jing Gong
Professor
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: ydgj@cup.edu.cn
National Engineering Laboratory for Pipeline Safety,
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: ydgj@cup.edu.cn
Qi Kang
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: kangqichn@qq.com
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: kangqichn@qq.com
Di Fan
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: 904533915@qq.com
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: 904533915@qq.com
Juheng Yang
National Engineering Laboratory for Pipeline Safety,
Changping, Beijing 102249,
e-mail: yangjuheng@126.com
China University of Petroleum-Beijing
,Changping, Beijing 102249,
China
e-mail: yangjuheng@126.com
1
Present address: PetroChina International Co., Ltd., Beijing 100033, China.
Manuscript received December 25, 2018; final manuscript received April 24, 2019; published online June 7, 2019. Assoc. Editor: Matthew I. Campbell.
J. Comput. Inf. Sci. Eng. Dec 2019, 19(4): 044501 (8 pages)
Published Online: June 7, 2019
Article history
Received:
December 25, 2018
Revision Received:
April 24, 2019
Accepted:
April 27, 2019
Citation
Wang, D., Gong, J., Kang, Q., Fan, D., and Yang, J. (June 7, 2019). "Soft Sensing for Gas-Condensate Field Production Using Parallel-Genetic-Algorithm-Based Data Reconciliation." ASME. J. Comput. Inf. Sci. Eng. December 2019; 19(4): 044501. https://doi.org/10.1115/1.4043671
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