Oil-CO2 MMP Determination in Competition of Neural Network, Support Vector Regression, and Committee Machine

被引:24
|
作者
Asoodeh, Mojtaba [1 ]
Gholami, Amin [2 ]
Bagheripour, Parisa [3 ]
机构
[1] Islamic Azad Univ, Birjand Branch, Birjand, Iran
[2] Petr Univ Technol, Abadan, Iran
[3] Islamic Azad Univ, Gachsaran Branch, Dept Petr Engn, Gachsaran, Iran
关键词
Committee machine; minimum miscible pressure; miscible CO2 injection; neural network; support vector regression; MINIMUM MISCIBILITY PRESSURE; WELL LOG DATA; PREDICTION; IMPURE; MODEL;
D O I
10.1080/01932691.2013.803255
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Oil-CO2 minimum miscible pressure (MMP) has significance in selecting appropriate reservoir for miscible gas injection and greatly governs performance of local displacement. Accurate determination of MMP is very expensive, time-consuming, and labor intensive. Therefore, the quest for a method to determine MMP accurately and save time and money is necessary. This study held a competition between neural network and support vector regression models and assessed their performance in prediction of MMP for both pure and impure miscible CO2 injection. Subsequently, a committee machine was constructed based on divide and conquer principle to reap benefits of both model and increases the precision of final prediction. Results indicated committee machine performed more satisfyingly compared with individual intelligent models performing alone.
引用
收藏
页码:564 / 571
页数:8
相关论文
共 50 条
  • [1] Oil-CO2 minimum miscible pressure (MMP) determination using a stimulated smart approach
    Zargar, Ghassem
    Bagheripour, Parisa
    Asoodeh, Mojtaba
    Gholami, Amin
    CANADIAN JOURNAL OF CHEMICAL ENGINEERING, 2015, 93 (10): : 1730 - 1735
  • [2] Prediction of minimum miscibility pressure (MMP) of the crude oil-CO2 systems within a unified and consistent machine learning framework
    Huang, Can
    Tian, Leng
    Wu, Jianbang
    Li, Mingyi
    Li, Zhongcheng
    Li, Jinlong
    Wang, Jiaxin
    Jiang, Lili
    Yang, Daoyong
    FUEL, 2023, 337
  • [3] Newborn jaundice determination by reflectance spectroscopy using multiple polynomial regression, neural network, and support vector regression
    Karamavus, Yunus
    Ozkan, Mehmed
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2019, 51 : 253 - 263
  • [4] Analog neural network for support vector machine learning
    Perfetti, Renzo
    Ricci, Elisa
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2006, 17 (04): : 1085 - 1091
  • [5] On the Equivalence between Neural Network and Support Vector Machine
    Chen, Yilan
    Huang, Wei
    Nguyen, Lam M.
    Weng, Tsui-Wei
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 34 (NEURIPS 2021), 2021, 34
  • [6] Integrating support vector regression with genetic algorithm for CO2-oil minimum miscibility pressure (MMP) in pure and impure CO2 streams
    Bian, Xiao-Qiang
    Han, Bing
    Du, Zhi-Min
    Jaubert, Jean-Noel
    Li, Ming-Jun
    FUEL, 2016, 182 : 550 - 557
  • [7] Generalized recurrent neural network for ε-insensitive support vector regression
    Zhao, Yan
    Liu, Qingshan
    MATHEMATICS AND COMPUTERS IN SIMULATION, 2012, 86 : 2 - 9
  • [8] Comparison of Artificial Neural Network, Linear Regression and Support Vector Machine for Prediction of Solar PV Power
    Kuriakose, Ans Maria
    Kariyalil, Denny Philip
    Augusthy, Marymol
    Sarath, S.
    Jacob, Joffie
    Antony, Neenu Rose
    2020 IEEE PUNE SECTION INTERNATIONAL CONFERENCE (PUNECON), 2020, : 53 - 58
  • [9] LTE Downlink Channel Estimation based on Artificial Neural Network and Complex Support Vector Machine Regression
    Charrada, Anis
    Samet, Abdelaziz
    2016 4TH INTERNATIONAL CONFERENCE ON CONTROL ENGINEERING & INFORMATION TECHNOLOGY (CEIT), 2016,
  • [10] Regional Load Clustering Integration Forecasting Based on Convolutional Neural Network Support Vector Regression Machine
    Shen Z.
    Yuan S.
    Dianwang Jishu/Power System Technology, 2020, 44 (06): : 2237 - 2244