Prediction of penetration Rate and cost with Artificial Neural Network for Alhafaya Oil Field
DOI:
https://doi.org/10.31699/IJCPE.2018.4.3Keywords:
Rate of Penetration, Artificial Neural NetworkAbstract
Prediction of penetration rate (ROP) is important process in optimization of drilling due to its crucial role in lowering drilling operation costs. This process has complex nature due to too many interrelated factors that affected the rate of penetration, which make difficult predicting process. This paper shows a new technique of rate of penetration prediction by using artificial neural network technique. A three layers model composed of two hidden layers and output layer has built by using drilling parameters data extracted from mud logging and wire line log for Alhalfaya oil field. These drilling parameters includes mechanical (WOB, RPM), hydraulic (HIS), and travel transit time (DT). Five data set represented five formations gathered from five drilled wells were involved in modeling process.Approximatlly,85 % of these data were used for training the ANN models, and 15% to assess their accuracy and direction of stability. The results of the simulation showed good matching between the raw data and the predicted values of ROP by Artificial Neural Network (ANN) model. In addition, a good fitness was obtained in the estimation of drilling cost from ANN method when compared to the raw data.
Received on 01/10/2018
Accepted on 05/11/2018
Published on 30/12/2018
References
Rahimzadeh,H.et al.,2010.Comparison of the Penetration Rate Models Using Field Data for One of the Gas Fields in Persian Gulf Area.In Proceedings of International Oil and Gas Conference and Exhibition in China.Society of Petroleum Engineers.
Mendes,J.R.P.,FONSECA,T.C.& SERAPIAO,A.,2007.Applying AGenetic Neurol Model Reference Adaptive Controller in Drilling Optimization.World Oil,228(10).
Wang,F.& Salehi,S.,2015.Drilling Hydraulic Optimization Using Neurol Networks.SPE 173420,SPE Digital Energy Conference and Exhibition,Texas,USA,3-5 March.
Bahari,M.,H. et al(2008).Determining Bourgoyne and Young Model Coefficients Using Genetic Algorithm to Predict Drilling Rate.Journal of Applied Science 8(17):3050-3054.
Jahanbakhish,R.and Keshavarzi,R.,2012.Real-Time Prediction of Rate of Penetration During Drilling Operation in Oil and Gas Wells.46th American Rock Mechanics/Geomechanics Symposium,Chicago,IL,USA,24-27 June.
Bataee,M.& Mohseni,S.,2011.Application of Artificial Intelligent Systems in ROP Optimization:a Case study in Shadegan Oil Field.SPE 140029,SPE Middle East Unconventional Gas Conference and Exhibition,Muscat,Oman,31 January-2 February.
Bontempi,G.,Bersini,H.& Birattari,M.,2001. The Local Paradigm for modeling and Control:from Neuro-Fuzzy Sets and Systems,121(1),pp.59-72.
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