Optimized Random Vector Functional Link network to predict oil production from Tahe oil field in China; Oil & Gas Science and Technology - Revue d'IFP Energies nouvelles; Vol. 76

Opis bibliograficzny
Parent link:Oil & Gas Science and Technology - Revue d'IFP Energies nouvelles
Vol. 76.— 2021.— [3, 10 p.]
Korporacja: Национальный исследовательский Томский политехнический университет Инженерная школа информационных технологий и робототехники Отделение информационных технологий
Kolejni autorzy: Alalimi A. Ahmed, Pan Lin, Al-qaness Mohammed A. A., Ewees A. A. Ahmed, Xiaoyan Wang, Mokhamed Elsaed (Mohamed Abd Elaziz) A. M. Akhmed Mokhamed
Streszczenie:Title screen
In China, Tahe Triassic oil field block 9 reservoir was discovered in 2002 by drilling wells S95 and S100. The distribution of the reservoir sand body is not clear. Therefore, it is necessary to study and to predict oil production from this oil field. In this study, we propose an improved Random Vector Functional Link (RVFL) network to predict oil production from Tahe oil field in China. The Spherical Search Optimizer (SSO) is applied to optimize the RVFL and to enhance its performance, where SSO works as a local search method that improved the parameters of the RVFL. We used a historical dataset of this oil field from 2002 to 2014 collected by a local partner. Our proposed model, called SSO-RVFL, has been evaluated with extensive comparisons to several optimization methods. The outcomes showed that, SSO-RVFL achieved accurate predictions and the SSO outperformed several optimization methods.
Język:angielski
Wydane: 2021
Hasła przedmiotowe:
Dostęp online:https://doi.org/10.2516/ogst/2020081
Format: Elektroniczne Rozdział
KOHA link:https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=663292

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330 |a In China, Tahe Triassic oil field block 9 reservoir was discovered in 2002 by drilling wells S95 and S100. The distribution of the reservoir sand body is not clear. Therefore, it is necessary to study and to predict oil production from this oil field. In this study, we propose an improved Random Vector Functional Link (RVFL) network to predict oil production from Tahe oil field in China. The Spherical Search Optimizer (SSO) is applied to optimize the RVFL and to enhance its performance, where SSO works as a local search method that improved the parameters of the RVFL. We used a historical dataset of this oil field from 2002 to 2014 collected by a local partner. Our proposed model, called SSO-RVFL, has been evaluated with extensive comparisons to several optimization methods. The outcomes showed that, SSO-RVFL achieved accurate predictions and the SSO outperformed several optimization methods. 
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