Low-Cost Surrogate Modeling of Miniaturized Microwave Components Using Nested Kriging
Keywords:
design optimization, microwave design, miniaturized structures, nested kriging, surrogate modelingAbstract
In the paper, a recently reported nested kriging methodology is employed for modeling of miniaturized microwave components. The approach is based on identifying the parameter space region that contains high-quality designs, and, subsequently, rendering the surrogate in this subset. The results obtained for a miniaturized unequal-power-split rat-race coupler and a compact three-section impedance transformer demonstrate reliability of the method even for highly-dimensional parameter spaces, as well as its superiority over conventional modeling methods.
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