Real-Time Data-Driven Drilling Optimization

Drilling a well for exploration or production of petroleum resources is a costly and complicated procedure. There is a great potential for cost reduction by drilling safer, faster and with less Non-Productive Time (NPT). Reducing the time spent on drilling will not only save costs, it also provides...

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Published in:Journal of Offshore Mechanics and Arctic Engineering
Main Author: Nystad, Magnus
Other Authors: Pavlov, Alexey, Hovda, Sigve, Aadnøy, Bernt Sigve
Format: Doctoral or Postdoctoral Thesis
Language:English
Published: NTNU 2021
Subjects:
Online Access:https://hdl.handle.net/11250/2832368
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author Nystad, Magnus
author2 Pavlov, Alexey
Hovda, Sigve
Aadnøy, Bernt Sigve
author_facet Nystad, Magnus
author_sort Nystad, Magnus
collection NTNU Open Archive (Norwegian University of Science and Technology)
container_issue 3
container_title Journal of Offshore Mechanics and Arctic Engineering
container_volume 144
description Drilling a well for exploration or production of petroleum resources is a costly and complicated procedure. There is a great potential for cost reduction by drilling safer, faster and with less Non-Productive Time (NPT). Reducing the time spent on drilling will not only save costs, it also provides the benefit of lowering the environmental impact of drilling operations. From a mechanical standpoint, achieving high efficiency drilling can be realized by optimizing the applied Weight on Bit (WOB) and drillstring rotational speed (Revolutions per Minute - RPM). However, selection of optimal values for WOB and RPM is a complex task. The drilling action at the bit happens at distances often several kilometers away from the rig, and only indirect measurements performed at the surface are routinely available to gauge what is happening down the hole. The task is further complicated by uncontrollable changes in downhole conditions such as variations in rock properties and wear and tear on the bit, which can alter the bit/rock interaction so that the WOB and RPM that was optimal a few minutes ago might no longer be the most efficient solution. Furthermore, the information required to accurately model the downhole conditions might not be directly measurable or available in real-time, which could preclude available models from predicting the optimal WOB and RPM. In this work, an adaptive model-free algorithm called Extremum Seeking (ES) is investigated for the purpose of optimizing the WOB and RPM in real-time. The method is data-driven and relies on continuously performing small tests with the applied WOB and RPM while drilling ahead, to gather information about the current downhole conditions. The test results are used to generate a local linear model, based on which the ES algorithm continuously performs automatic adjustments in WOB and RPM in the direction that increases Rate of Penetration (ROP) or reduces Mechanical Specific Energy (MSE). This process is designed to iteratively drive the WOB and RPM to their optimal ...
format Doctoral or Postdoctoral Thesis
genre Arctic
genre_facet Arctic
id ftntnutrondheimi:oai:ntnuopen.ntnu.no:11250/2832368
institution Open Polar
language English
op_collection_id ftntnutrondheimi
op_doi https://doi.org/10.1115/1.405312710.3390/en14051298
op_relation Doctoral theses at NTNU;2021;348
Article 1. Nystad, Magnus, Pavlov, Alexey. Micro-Testing While Drilling for Rate of Penetration Optimization. The American Society of Mechanical Engineers (ASME) 2020, 39th International Conference on Ocean, Offshore and Arctic Engineering. Volume 11: Petroleum Technology. OMAE 2020-18838. DOI 10.1115/OMAE2020-18838.
Article 2. Magnus Nystad, Bernt Sigve Aadnøy, Alexey Pavlov. Micro-Testing While Drilling for Rate of Penetration Optimization: Experiments and Simulations. ASME Journal of Offshore Mechanics and Arctic Engineering, OMAE-21-1039 DOI https://doi.org/10.1115/1.4053127
Article 3. Nystad, Magnus; Aadnøy, Bernt Sigve; Pavlov, Alexey. Real-Time Minimization of Mechanical Specific Energy with Multivariable Extremum Seeking. Energies 2021, 14(5), 1298. DOI https://doi.org/10.3390/en14051298
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spelling ftntnutrondheimi:oai:ntnuopen.ntnu.no:11250/2832368 2025-05-18T13:56:58+00:00 Real-Time Data-Driven Drilling Optimization Nystad, Magnus Pavlov, Alexey Hovda, Sigve Aadnøy, Bernt Sigve 2021 application/pdf https://hdl.handle.net/11250/2832368 eng eng NTNU Doctoral theses at NTNU;2021;348 Article 1. Nystad, Magnus, Pavlov, Alexey. Micro-Testing While Drilling for Rate of Penetration Optimization. The American Society of Mechanical Engineers (ASME) 2020, 39th International Conference on Ocean, Offshore and Arctic Engineering. Volume 11: Petroleum Technology. OMAE 2020-18838. DOI 10.1115/OMAE2020-18838. Article 2. Magnus Nystad, Bernt Sigve Aadnøy, Alexey Pavlov. Micro-Testing While Drilling for Rate of Penetration Optimization: Experiments and Simulations. ASME Journal of Offshore Mechanics and Arctic Engineering, OMAE-21-1039 DOI https://doi.org/10.1115/1.4053127 Article 3. Nystad, Magnus; Aadnøy, Bernt Sigve; Pavlov, Alexey. Real-Time Minimization of Mechanical Specific Energy with Multivariable Extremum Seeking. Energies 2021, 14(5), 1298. DOI https://doi.org/10.3390/en14051298 https://hdl.handle.net/11250/2832368 VDP::Teknologi: 500::Berg‑ og petroleumsfag: 510 Doctoral thesis 2021 ftntnutrondheimi https://doi.org/10.1115/1.405312710.3390/en14051298 2025-04-23T04:50:47Z Drilling a well for exploration or production of petroleum resources is a costly and complicated procedure. There is a great potential for cost reduction by drilling safer, faster and with less Non-Productive Time (NPT). Reducing the time spent on drilling will not only save costs, it also provides the benefit of lowering the environmental impact of drilling operations. From a mechanical standpoint, achieving high efficiency drilling can be realized by optimizing the applied Weight on Bit (WOB) and drillstring rotational speed (Revolutions per Minute - RPM). However, selection of optimal values for WOB and RPM is a complex task. The drilling action at the bit happens at distances often several kilometers away from the rig, and only indirect measurements performed at the surface are routinely available to gauge what is happening down the hole. The task is further complicated by uncontrollable changes in downhole conditions such as variations in rock properties and wear and tear on the bit, which can alter the bit/rock interaction so that the WOB and RPM that was optimal a few minutes ago might no longer be the most efficient solution. Furthermore, the information required to accurately model the downhole conditions might not be directly measurable or available in real-time, which could preclude available models from predicting the optimal WOB and RPM. In this work, an adaptive model-free algorithm called Extremum Seeking (ES) is investigated for the purpose of optimizing the WOB and RPM in real-time. The method is data-driven and relies on continuously performing small tests with the applied WOB and RPM while drilling ahead, to gather information about the current downhole conditions. The test results are used to generate a local linear model, based on which the ES algorithm continuously performs automatic adjustments in WOB and RPM in the direction that increases Rate of Penetration (ROP) or reduces Mechanical Specific Energy (MSE). This process is designed to iteratively drive the WOB and RPM to their optimal ... Doctoral or Postdoctoral Thesis Arctic NTNU Open Archive (Norwegian University of Science and Technology) Journal of Offshore Mechanics and Arctic Engineering 144 3
spellingShingle VDP::Teknologi: 500::Berg‑ og petroleumsfag: 510
Nystad, Magnus
Real-Time Data-Driven Drilling Optimization
title Real-Time Data-Driven Drilling Optimization
title_full Real-Time Data-Driven Drilling Optimization
title_fullStr Real-Time Data-Driven Drilling Optimization
title_full_unstemmed Real-Time Data-Driven Drilling Optimization
title_short Real-Time Data-Driven Drilling Optimization
title_sort real-time data-driven drilling optimization
topic VDP::Teknologi: 500::Berg‑ og petroleumsfag: 510
topic_facet VDP::Teknologi: 500::Berg‑ og petroleumsfag: 510
url https://hdl.handle.net/11250/2832368