Density-Matching for Turbomachinery Optimization Under Uncertainty
classification
📊 stat.AP
math.OC
keywords
turbomachineryuncertaintydensity-matchingmonotonicoptimizationunderaleatoryapplied
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A monotonic, non-kernel density variant of the density-matching technique for optimization under uncertainty is developed. The approach is suited for turbomachinery problems which, by and large, tend to exhibit monotonic variations in the circumferentially and radially mass-averaged quantities--such as pressure ratio, efficiency and capacity--with common aleatory turbomachinery uncertainties. The method is successfully applied to de-sensitize the effect of an uncertainty in rear-seal leakage flows on the fan stage of a modern jet engine.
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