Renewable power generation systems are significantly
affected by
uncertainty due to intense variability often observed in energy sources.
Uncertainty should be considered during design to enable optimum performance
within constantly changing conditions. However, the resulting computational
complexity and effort is high, especially in view of flowsheets integrating
multiple subsystems. To address this challenge, the presented work
proposes the partitioning of the space representing uncertain realizations
to facilitate the development and continuous update of a surrogate
model in the course of optimization. A wide exploration of this strategy
reveals and addresses important issues in the implementation of the
partitioning and model regression layers. Formal statistical associations
are examined regarding the beneficial implications of partitioning
to computational efficiency and surrogate model development. The proposed
strategy is presented as part of a Simulated Annealing algorithm.
This is tested in terms of computational efficiency and solution robustness
against an adaptation of Stochastic Annealing, which addresses computational
intensity through a different approach while depending entirely on
a full system model. Results are illustrated through numerical examples
and case studies on a stand-alone, hybrid system using renewable energy
sources for power generation and storage.
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