A deep learning model for rate of penetration prediction and drilling performance optimization using genetic algorithm

ASME 41st International Conference on Ocean -- Offshore and Arctic Engineering (OMAE) -- JUN 05-10 -- 2022 -- Hamburg -- GERMANY In this study, a deep learning model is proposed that can accurately predict the rate of penetration during geothermal or oil and gas well construction operations. Also, a...

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Bibliographic Details
Main Authors: Özbayoğlu, Evren, Erge, Öney, Özbayoğlu, Murat
Format: Conference Object
Language:English
Published: Amer Soc Mechanical Engineers 2022
Subjects:
Online Access:https://hdl.handle.net/20.500.11851/11591
Description
Summary:ASME 41st International Conference on Ocean -- Offshore and Arctic Engineering (OMAE) -- JUN 05-10 -- 2022 -- Hamburg -- GERMANY In this study, a deep learning model is proposed that can accurately predict the rate of penetration during geothermal or oil and gas well construction operations. Also, a genetic algorithm is applied and used together with the deep learning model to determine the optimum values for the drilling parameters: weight on bit (WOB) and drillstring rotation rate (RPM). It is vital to estimate the optimal set of values for drilling parameters to construct wellbores quickly and efficiently. Traditionally, drill-off tests are conducted by halting the normal drilling operation and manually changing the WOB and RPM values to search for the highest ROP output. This operation can be repetitive and can lead to an inaccurate estimation of parameters because only a few different parameters are tried. The proposed learning algorithm estimates the optimum WOB and RPM, based on the historical values and can keep learning as the drilling proceeds, which is essential for fully automated well construction. The proposed deep learning model is trained with actual drilling datasets that showed an accurate prediction of the rate of penetration and mechanical specific energy ( MSE). This model is used together with the genetic algorithm and the optimum drilling parameters are determined that yield minimum MSE. The results showed a significant performance improvement compared to the historical values. The proposed model can be used as an advisory system to the driller or the output can be used within the control system to automate the drilling process. The proposed learning model showed the capability to further optimize the drilling-rate and mitigate any invisible lost time (ILT) and potential non-productive time (NPT) by completing the well as soon as possible. Amer Soc Mech Engineers, Ocean, Offshore Arctic Engn Div