Enabling Scale-Up Through Multi-Fidelity Adaptive Computing

Research output: NRELPresentation

Abstract

We present ideas from our ongoing work in adaptive computing - an optimization framework that allows us to strategically deploy various fidelity level experiments and simulations to guide decision making. The framework aims to enable uncertainty quantified scale-up of simulations and experiments, which causes increased complexity. A key feature of the framework is the integration of user-specified local model trustworthiness estimates. Adaptive sampling strategies allow us to optimally exploit the multiple fidelity level information and trustworthiness measures to arrive at the best decisions within a highly limited budget of objective function evaluations.
Original languageAmerican English
Number of pages19
StatePublished - 2024

Publication series

NamePresented at the 2024 INFORMS Optimization Society (IOS) Conference, 22-24 March 2024, Houston, Texas

NREL Publication Number

  • NREL/PR-2C00-89329

Keywords

  • adaptive sampling
  • derivative-free
  • multi-fidelity
  • optimization

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