• Title of article

    Development of an Intelligent System to Synthesize Petrophysical Well Logs

  • Author/Authors

    Nouri Taleghani، Morteza نويسنده Department of Petroleum Engineering, University of Tehran, Tehran, Iran Nouri Taleghani, Morteza , Saffarzadeh، Sadegh نويسنده Department of Petroleum Exploration Engineering, Petroleum University of Technology, Abadan, Iran Saffarzadeh, Sadegh , Karimi Khaledi، M. نويسنده Department of Petroleum Exploration Engineering, Petroleum University of Technology, Abadan, Iran Karimi Khaledi, M. , Zargar، Ghasem نويسنده Department of Petroleum Exploration Engineering, Petroleum University of Technology, Abadan, Iran Zargar, Ghasem

  • Issue Information
    فصلنامه با شماره پیاپی سال 2013
  • Pages
    14
  • From page
    11
  • To page
    24
  • Abstract
    Porosity is one of the fundamental petrophysical properties that should be evaluated for hydrocarbon bearing reservoirs. It is a vital factor in precise understanding of reservoir quality in a hydrocarbon field. Log data are exceedingly crucial information in petroleum industries, for many of hydrocarbon parameters are obtained by virtue of petrophysical data. There are three main petrophysical logging tools for the determination of porosity, namely neutron, density, and sonic well logs. Porosity can be determined by the use of each of these tools; however, a precise analysis requires a complete set of these tools. Log sets are commonly either incomplete or unreliable for many reasons (i.e. incomplete logging, measurement errors, and loss of data owing to unsuitable data storage). To overcome this drawback, in this study several intelligent systems such as fuzzy logic (FL), neural network (NN), and support vector machine are used to predict synthesized petrophysical logs including neutron, density, and sonic. To accomplish this, the petrophysical well logs data were collected from a real reservoir in one of Iran southwest oil fields. The corresponding correlation was obtained through the comparison of synthesized log values with real log values. The results showed that all intelligent systems were capable of synthesizing petrophysical well logs, but SVM had better accuracy and could be used as the most reliable method compared to the other techniques.
  • Journal title
    Iranian Journal of Oil and Gas Science and Technology(IJOGST)
  • Serial Year
    2013
  • Journal title
    Iranian Journal of Oil and Gas Science and Technology(IJOGST)
  • Record number

    1349197