رزومه وب سایت شخصی


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دکتر خالد معروفی

دکتر خالد معروفی

استادیار

دانشکده: مهندسی نفت و گاز

مقطع تحصیلی: دکترای تخصصی

رزومه وب سایت شخصی
EN
دکتر خالد معروفی

استادیار دکتر خالد معروفی

دانشکده: مهندسی نفت و گاز مقطع تحصیلی: دکترای تخصصی |

Dr. Khaled Maroufi

Assistant Professor of Petroleum Engineering

  • Assistant Professor at Sahand University of Technology (SUT), Faculty of Petroleum and Natural Gas Engineering (2021-now).
  • Senior Geochemist, Tehran Energy Consultants Company (2020-2021).
  • Well-site Geologist Supervisor at the South-Azadegan oilfield, Tehran Energy Consultants Company (2016-2018).
  • Well-site Geologist at the South Pars Gas Field, Dana Energy Group (2013-2016).
  • Mud Logger and Data Engineer at onshore and offshore rigs along with geological job, Geo-Data Company (2010-2013).

 

Education

Current
Assistant Professor of Sahand University of Technology (SUT)

  • Ph.D: Faculty of Geosciences, Shahid Chamran University, Ahwaz, Iran (Petroleum Geology) (2012-2017)
  • Ms.c: Faculty of Geosciences, Shahid Chamran University, Ahwaz, Iran (Petroleum Geology) (2009-2011)
  • BSc Degree: Faculty of Sciences, Tabriz University, Tabriz, Iran (Geology) (2005-2009)

 

Technical Skills

  • Reservoir Geochemistry
  • Petroleum System Modeling
  • Source rock characterization
  • Artificial Intelligence Techniques
  • Reservoir Characterization
  • Sequence Stratigraphy

 

Contact us:

POBox: 51335/1996 Tabriz–Iran
Tel: +98 41 33459492 
Fax: +98 41 33444345
E-mail: maroufi@sut.ac.ir
Last Updated: Mar 21, 2024

نمایش بیشتر

Estimating source rock parameters using wireline data: An example from Dezful Embayment, South West of Iran

نویسندگانBahram Alizadeh, Khaled Maroufi, Mohamad Hossein Heidarifard
نشریهJournal of Petroleum Science and Engineering
نوع مقالهFull Paper
تاریخ انتشارDecember 2017
رتبه نشریهISI
نوع نشریهالکترونیکی
کشور محل چاپایران

چکیده مقاله

Availability and high potential of wireline data to correlate with geochemical properties convinced petroleum geologists to use them for source rock detection and calculating their richness. In this research, intelligent techniques and mathematical relationships were used to evaluate source rock potential and organic matter type indirectly. Artificial neural networks (ANN) and ΔLogR techniques were successfully used to model the relation between wireline logs and Total Organic Carbon (TOC) content. Furthermore, wireline data and TOC values were used as input data to model a second ANN for S2 parameter (present hydrocarbon potential) calculation. Owing to its great ability in the course of solving non-linear problems with overwhelming complexity, the back propagation method was used to train the networks using 70 points datasets. Predicted TOC contents were validated by Rock-Eval pyrolysis results of which revealed dependency of the ΔLogR accuracy to the organic richness and lithology, and therefore higher precision of the ANN outputs in compare to the ΔLogR results. Hydrogen Index (HI) and kerogen type were also effectively predicted using mathematical relationship between TOC and S2 factors. Reliability of all steps of the methodology was approved using a 16 members retest dataset for which testing predicted parameters against measured data demonstrated good correlation coefficients combined with negligible errors. Finally, applicability of the methodology was checked by applying it on two wells in the Dezful Embayment to evaluate geochemical and depositional properties of the Paleocene-Early Oligocene Pabdeh Formation. © 2017

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