Abstract
A robust multi-fidelity optimization methodology has been developed, focusing on efficiently handling industrial runner design of hydraulic Francis turbines. The computational task is split between low- and high-fidelity phases in order to properly balance the CFD cost and required accuracy in different design stages. In the low-fidelity phase, a physics-based surrogate optimization loop manages a large number of iterative optimization evaluations. Two derivative-free optimization methods use an inviscid flow solver as a physics-based surrogate to obtain the main characteristics of a good design in a relatively fast iterative process. The case study of a runner design for a low-head Francis turbine indicates advantages of integrating two derivative-free optimization algorithms with different local- and global search capabilities.
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Bahrami, S., Tribes, C., von Fellenberg, S., Vu, T. C., & Guibault, F. (2015). Physics-based surrogate optimization of francis turbine runner blades, Using mesh adaptive direct search and evolutionary algorithms. International Journal of Fluid Machinery and Systems, 8(3), 209–219. https://doi.org/10.5293/IJFMS.2015.8.3.209
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