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Drilling Parameter Optimization in Real-Time

Abstract

The objective of this paper is to demonstrate how drilling parameter optimization in real-time provides a drilling team with an Edge-system that can continuously improve performance and avoid problems without the need for subject-matter experts.

An Edge-system based on cloud technology with Model based reasoning in Artificial Intelligence (AI) is made to give real-time and forward advice for operational parameters, see (Lahlou et al, 2021) for description. The key enabler for such system is "automatic" auto-calibration of models to be used for multiple forward-looking and what-if to find optimal drilling parameters within the well envelope ahead. A simplified configuration has been made so that the rig-team can operate and maintain the system without the need for subject matter experts. "Automatic" Auto-calibration at stable conditions and/or during ramping conditions removes the need for such experts.

Results from testing of the Edge-system on multiple wells from several operators will be presented both related to automatic auto-calibration of real-time prediction models and for optimization of drilling parameters. As expected, a major challenge has been to design a calibration algorithm that improves accuracy of calculations without being kicked out by any data quality issues, and without masking upcoming actual anomalies like kicks, losses and issues related to hole cleaning. This challenge has been approached by using a combination of time-delayed robust calibration methods and testing on a comprehensive set of data from diverse operations.

Category

Academic chapter

Language

English

Author(s)

  • Sven Inge Ødegård
  • Stig Helgeland
  • Maryam Gholami Mayani
  • Andrey Trebler
  • Knut Steinar Bjørkevoll
  • Jan Ole Skogestad
  • Morten Lien
  • Tore Weltzin
  • Bjørn Rudshaug

Affiliation

  • SINTEF Industry / Applied Geoscience
  • Equinor
  • Andre institusjoner

Year

2022

Publisher

Society of Petroleum Engineers

Book

IADC/SPE International Drilling Conference and Exhibition March 8–10, 2022

ISBN

9781613998427

View this publication at Norwegian Research Information Repository