Record Details

Title Machine learning opportunities for geothermal drilling operations: An overview
Authors A. Aspiras, S.J. Zarrouk, R. Winmill, A.W. Kempa-Liehr
Year 2023
Conference New Zealand Geothermal Workshop
Keywords Geothermal well drilling, MWD, Machine Learning, Geothermal drilling challenges
Abstract Geothermal energy has been providing low carbon and reliable renewable resource for electricity generation since the 1950’s; however, the total geothermal installed capacity comprises only 0.5% of total renewables-based capacity as of 2021, growing only ~3.5 annually. High upfront costs and resource risks associated with geothermal development proved a challenge for future investments and wide-scale adoption.
As heat is harnessed from the depths of the earth, drilling wells towards a viable resource is critical to the success of the project. Drilling has only ~83% success rate in the operation phase and accounts for 35-40% of the total capital expenditure of the project. Improving drilling performance by de-risking drilling operations will be a game-changer in pushing interest towards geothermal development.
With the recent advent of artificial intelligence (AI) technology, there is a renewed interest in looking at Machine Learning for optimising different drilling applications. Machine learning is a subfield of AI that automates the modelling of complex data sets for problem specific tasks. Combining these models with a problem specific decision model leads to AI. This paper summarises the challenges of geothermal drilling operations and gives an overview of machine learning applications in drilling operations.
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