Abstract
This chapter reviews the basics of derivative-free optimization methods based on surrogate models and outlines how these methods can straightforwardly be applied to autonomously steering experimentation. It summarizes general solution approaches that use surrogate models and active learning. Surrogate modeling is often combined with active learning strategies, where in each iteration of the optimization algorithm, the surrogate model is used to identify which new inputs should be evaluated next and given the new input-output pair, the surrogate model is updated. Regardless of feasibility, the surrogate models for the constraints are updated in each iteration of the optimization algorithm, while the surrogate model for the objective function is only updated when a feasible point has been found. Similarly to the case of computationally cheap constraints, the surrogate models of the constraints should be incorporated into the definition of the auxiliary optimization problem that is solved to select new sample points.
Original language | American English |
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Title of host publication | Methods and Applications of Autonomous Experimentation |
Editors | M. Noack, D. Ushizima |
DOIs | |
State | Published - 2023 |
NREL Publication Number
- NREL/CH-2C00-85761
Keywords
- active learning
- autonomous experimentation
- optimization
- surrogate models