Energies (Oct 2021)

A New Modeling Framework for Geothermal Operational Optimization with Machine Learning (GOOML)

  • Grant Buster,
  • Paul Siratovich,
  • Nicole Taverna,
  • Michael Rossol,
  • Jon Weers,
  • Andrea Blair,
  • Jay Huggins,
  • Christine Siega,
  • Warren Mannington,
  • Alex Urgel,
  • Jonathan Cen,
  • Jaime Quinao,
  • Robbie Watt,
  • John Akerley

DOI
https://doi.org/10.3390/en14206852
Journal volume & issue
Vol. 14, no. 20
p. 6852

Abstract

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Geothermal power plants are excellent resources for providing low carbon electricity generation with high reliability. However, many geothermal power plants could realize significant improvements in operational efficiency from the application of improved modeling software. Increased integration of digital twins into geothermal operations will not only enable engineers to better understand the complex interplay of components in larger systems but will also enable enhanced exploration of the operational space with the recent advances in artificial intelligence (AI) and machine learning (ML) tools. Such innovations in geothermal operational analysis have been deterred by several challenges, most notably, the challenge in applying idealized thermodynamic models to imperfect as-built systems with constant degradation of nominal performance. This paper presents GOOML: a new framework for Geothermal Operational Optimization with Machine Learning. By taking a hybrid data-driven thermodynamics approach, GOOML is able to accurately model the real-world performance characteristics of as-built geothermal systems. Further, GOOML can be readily integrated into the larger AI and ML ecosystem for true state-of-the-art optimization. This modeling framework has already been applied to several geothermal power plants and has provided reasonably accurate results in all cases. Therefore, we expect that the GOOML framework can be applied to any geothermal power plant around the world.

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