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Keywords: artificial neural network
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Journal Articles
Journal:
Journal of Turbomachinery
Publisher: ASME
Article Type: Research Papers
J. Turbomach. June 2022, 144(6): 061005.
Paper No: TURBO-21-1022
Published Online: January 28, 2022
... the blade profile and shock losses introduced by Pazireh and Defoe [ 20 ] is used in this paper. The model is based on an artificial neural network (ANN) trained on a large dataset of cascade computations and was shown to have good agreement in loss coefficient predictions for blade sections whose geometric...