Use of neural networks for the prediction of frictional drag and transmission of axial load in horizontal wellbores

The use of mud motors and other tools to accomplish forward motion of the bit in extended reach and horizontal wells allows avoiding large amounts of torque caused by rotation of the whole drill string. The forward motion of the drill string, however, is resisted by excessive amount of friction. In...

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Veröffentlicht in:International journal for numerical and analytical methods in geomechanics 2003-02, Vol.27 (2), p.111-131
Hauptverfasser: Sadiq, Tanvir, B. Gharbi, Ridha, C. Juvkam-Wold, Hans
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container_title International journal for numerical and analytical methods in geomechanics
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creator Sadiq, Tanvir
B. Gharbi, Ridha
C. Juvkam-Wold, Hans
description The use of mud motors and other tools to accomplish forward motion of the bit in extended reach and horizontal wells allows avoiding large amounts of torque caused by rotation of the whole drill string. The forward motion of the drill string, however, is resisted by excessive amount of friction. In the presence of large compressive axial loads, the drill pipe or coiled tubing tends to buckle into a helix in horizontal boreholes. This causes additional frictional drag resisting the transmission of axial load (resulting from surface slack‐off force) to the bit. As the magnitude of the frictional drag increases, a buckled pipe may become ‘locked‐up’ making it almost impossible to drill further. In case of packers, the frictional drag may inhibit the transmission of set‐up load to the packer. A prior knowledge of the magnitude of frictional drag for a given axial load and radial clearance can help avoid lock‐up conditions and costly failure of the tubular. In this study a neural network model, for the prediction of frictional drag and axial load transmission in horizontal wellbores, is presented. Several neural network architectures were designed and tested to obtain the most accurate prediction. After cross‐validation of the Back Propagation Neural Network (BPNN) algorithm, a two‐hidden layer model was chosen for simultaneous prediction of frictional drag and axial load transmission. A comparison of results obtained from BPNN and General Regression Neural Network (GRNN) algorithms is also presented. Copyright © 2002 John Wiley & Sons, Ltd.
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source Wiley Online Library Journals Frontfile Complete
subjects Applied sciences
Buildings. Public works
Computation methods. Tables. Charts
contact force
Exact sciences and technology
Geotechnics
horizontal drilling
Miscellaneous
neural networks
porous media
slack-off and axial loads
Structural analysis. Stresses
title Use of neural networks for the prediction of frictional drag and transmission of axial load in horizontal wellbores
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