Machine Learning-Based Production Prediction Model and Its Application in Duvernay Formation

被引:12
|
作者
Guo, Zekun [1 ]
Wang, Hongjun [1 ]
Kong, Xiangwen [1 ]
Li Shen [1 ]
Jia, Yuepeng [1 ]
机构
[1] Res Inst Petr Explorat & Dev CNPC, Beijing 100083, Peoples R China
关键词
machine learning; sensitivity analysis; production prediction; grey relation analysis; RESERVOIRS; INSIGHTS;
D O I
10.3390/en14175509
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
The production of a single gas well is influenced by many geological and completion factors. The aim of this paper is to build a production prediction model based on machine learning technique and identify the most important factor for production. Firstly, around 159 horizontal wells were collected, targeting the Duvernay Formation with detailed geological and completion records. Secondly, the key factors were selected using grey relation analysis and Pearson correlation. Then, three statistical models were built through multiple linear regression (MLR), support vector regression (SVR), gaussian process regression (GPR). The model inputs include fluid volume, proppant amount, cluster counts, stage counts, total horizontal lateral length, gas saturation, total organic carbon content, condensate-gas ratio. The model performance was assessed by root mean squared errors (RMSE) and R-squared value. Finally, sensitivity analysis was applied based on best performance model. The analysis shows following conclusions: (1) GPR model shows the best performance with the highest R-squared value and the lowest RMSE. In the testing set, the model shows a R-squared of 0.8 with a RMSE of 280.54 x 10(4) m(3) in the prediction of cumulative gas production within 1st 6 producing months and gives a R-squared of 0.83 with a RMSE of 1884.3 t in the prediction of cumulative oil production within 1st 6 producing months (2) Sensitivity analysis based on GPR model indicates that condensate-gas ratio, fluid volume, and total organic carbon content are the most important features to cumulative oil production within 1st 6 producing months. Fluid volume, Stages, and total organic carbon content are the most significant factors to cumulative gas production within 1st 6 producing months. The analysis progress and results developed in this study will assist companies to build prediction models and figure out which factors control well performance.
引用
收藏
页数:17
相关论文
共 50 条
  • [31] Developing an Explainable Machine Learning-Based Thyroid Disease Prediction Model
    Arjaria, Siddhartha Kumar
    Rathore, Abhishek Singh
    Chaubey, Gyanendra
    INTERNATIONAL JOURNAL OF BUSINESS ANALYTICS, 2022, 9 (03)
  • [32] Machine Learning-based Model for Early Prediction of Coronary Artery Disease
    Ahmad, Nabeel
    Yadav, Sudeept Singh
    Moharana, Alok Kumar
    CARDIOMETRY, 2022, (24): : 373 - 378
  • [33] Fuel consumption cost prediction model for ro-ro carriers: a machine learning-based application
    Su, Miao
    Lee, HeeJeong Jasmine
    Wang, Xueqin
    Bae, Sung-Hoon
    MARITIME POLICY & MANAGEMENT, 2025, 52 (02) : 229 - 249
  • [34] A machine learning-based multiscale model to predict bone formation in scaffolds
    Wu, Chi
    Entezari, Ali
    Zheng, Keke
    Fang, Jianguang
    Zreiqat, Hala
    Steven, Grant P.
    Swain, Michael V.
    Li, Qing
    NATURE COMPUTATIONAL SCIENCE, 2021, 1 (08): : 532 - 541
  • [35] Machine learning-assisted production data analysis in liquid-rich Duvernay Formation
    Kong, Bing
    Chen, Zhuoheng
    Chen, Shengnan
    Qin, Tianjie
    JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2021, 200 (200)
  • [36] Machine Learning-based BGP Traffic Prediction
    Farasat, Talaya
    Rathore, Muhammad Ahmad
    Khan, Akmal
    Kim, JongWon
    Posegga, Joachim
    2023 IEEE 22ND INTERNATIONAL CONFERENCE ON TRUST, SECURITY AND PRIVACY IN COMPUTING AND COMMUNICATIONS, TRUSTCOM, BIGDATASE, CSE, EUC, ISCI 2023, 2024, : 1925 - 1934
  • [37] A machine learning-based multiscale model to predict bone formation in scaffolds
    Chi Wu
    Ali Entezari
    Keke Zheng
    Jianguang Fang
    Hala Zreiqat
    Grant P. Steven
    Michael V. Swain
    Qing Li
    Nature Computational Science, 2021, 1 : 532 - 541
  • [38] Machine learning-based prediction models in neurosurgery
    Habashy, Karl J.
    Arrieta, Victor A.
    Feghali, James
    NEUROSURGICAL FOCUS, 2023, 55 (03)
  • [39] Machine Learning-based Prediction of Test Power
    Dhotre, Harshad
    Eggersgluess, Stephan
    Chakrabarty, Krishnendu
    Drechsler, Rolf
    2019 IEEE EUROPEAN TEST SYMPOSIUM (ETS), 2019,
  • [40] Machine Learning-based Water Potability Prediction
    Alnaqeb, Reem
    Alrashdi, Fatema
    Alketbi, Khuloud
    Ismail, Heba
    2022 IEEE/ACS 19TH INTERNATIONAL CONFERENCE ON COMPUTER SYSTEMS AND APPLICATIONS (AICCSA), 2022,