Cementing Quality Prediction in the Shunbei Block Based on Genetic Algorithm and Support Vector Regression

Author:

Wei Juntao12,Zheng Shuangjin12,Han Jiafan12,Bai Kai13

Affiliation:

1. Hubei Provincial Key Laboratory of Oil and Gas Drilling and Production Engineering, Wuhan 430100, China

2. National Engineering Research Center for Oil & Gas Drilling and Completion Technology, School of Petroleum Engineering, Yangtze University, Wuhan 430100, China

3. Cooperative Innovation Center of Unconventional Oil and Gas, Yangtze University (Ministry of Education & Hubei Province), Wuhan 430100, China

Abstract

There are a number of factors that can affect the quality of cementing, and they constrain each other. Current cementing quality prediction methods are still in the stage of development, and it is difficult to establish an analytical model for cementing quality prediction that meets the strict requirements of cementing design. In order to accurately predict the cementing quality in the Shunbei block of the Northwest Oilfield, in this study, we established a cementing quality prediction model based on support vector regression (SVR) and optimized the penalty parameter and kernel parameter by using grid search (GS), a Bayesian optimization algorithm (BOA), and a genetic algorithm (GA), which improve the prediction accuracy of SVR. The results show that the smallest root-mean-square error and average relative error (2.318% and 7.30%, respectively) and the highest accuracy are achieved when using GA–SVR as compared to SVR, GS–SVR, and BOA–SVR. Therefore, GA–SVR is suitable for cementing quality prediction in the Shunbei block.

Funder

the Open Foundation of Cooperative Innovation Center of Unconventional Oil and Gas, Yangtze University

the scientific research project of the Hubei Provincial Department of Education

Hubei Key Laboratory of Drilling and Production Engineering for Oil and Gas

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

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