Reservoir Permeability Estimation from Well Logs using Fuzzy Logic
eBook - PDF
Available until 10 Nov |Learn more

Reservoir Permeability Estimation from Well Logs using Fuzzy Logic

Naeem Kalvani, Aref Shahi

  1. 92 pages
  2. English
  3. PDF
  4. Available on iOS & Android
eBook - PDF
Available until 10 Nov |Learn more

Reservoir Permeability Estimation from Well Logs using Fuzzy Logic

Naeem Kalvani, Aref Shahi

Book details
Table of contents
Citations

About This Book

Reservoir characterization is a process of describing various reservoir characteristics using all the variable data to provide reliable reservoir models for obtaining an accurate reservoir performance prediction. Reservoir characterization plays a crucial role in modern reservoir management. The reservoir characteristics include pore and grain size distribution, permeability, porosity, facies distribution, and depositional environment. The types of data need to describe the characteristics are core data, well logs, well tests and seismic reflection data. Permeability and rock type (i.e. lithology, pore geometry and range of porosity and permeability) are the most important rock properties which can be used as input parameters to build a 3D petrophysical model of the hydrocarbon reservoir. These parameters are derived from core samples which may not be available for all boreholes, whereas almost all boreholes have well log data.

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Table of contents

    Citation styles for Reservoir Permeability Estimation from Well Logs using Fuzzy Logic

    APA 6 Citation

    Kalvani, N., & Shahi, A. (2018). Reservoir Permeability Estimation from Well Logs using Fuzzy Logic (1st ed.). LAP LAMBERT Academic Publishing. Retrieved from https://www.perlego.com/book/3431123 (Original work published 2018)

    Chicago Citation

    Kalvani, Naeem, and Aref Shahi. (2018) 2018. Reservoir Permeability Estimation from Well Logs Using Fuzzy Logic. 1st ed. LAP LAMBERT Academic Publishing. https://www.perlego.com/book/3431123.

    Harvard Citation

    Kalvani, N. and Shahi, A. (2018) Reservoir Permeability Estimation from Well Logs using Fuzzy Logic. 1st edn. LAP LAMBERT Academic Publishing. Available at: https://www.perlego.com/book/3431123 (Accessed: 3 July 2024).

    MLA 7 Citation

    Kalvani, Naeem, and Aref Shahi. Reservoir Permeability Estimation from Well Logs Using Fuzzy Logic. 1st ed. LAP LAMBERT Academic Publishing, 2018. Web. 3 July 2024.