Detuning Optimization of Nonlinear Mistuned Bladed Disks Using a Probabilistic Learning Tool

Conference proceedings of the Society for Experimental Mechanics(2023)

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摘要
This chapter deals with the detuning optimization of a mistuned bladed disk in the presence of geometrical nonlinearities. A full data basis is constructed by using a finite element model of a bladed disk with cyclic order 12, which allows all the possible detuning configurations to be computed. It is then proposed to reformulate the combinatorial optimization problem in a probabilistic framework using and adapting the recent probabilistic learning on manifolds (PLoM) tool to the detuning context. The available full data basis is used in order to validate the proposed method.
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关键词
nonlinear mistuned bladed disks,optimization,learning
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