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Automated eigenmode classification for airfoils in the presence of fixation uncertainties

机译:存在固定不确定性的翼型自动本征模式分类

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摘要

Automated structural design optimization should take into account risk of failure which depends on eigenmodes, since eigenmode shapes determine failure risk by their characteristic stress concentration pattern, as well as by their specific interaction with excitations. Thus, such a process needs to be able to identify eigenmodes with low error rate. This is a rather challenging task, because eigenmodes depend on the geometry of the structure which is changing during the design process, and on boundary conditions which are not clearly defined due to uncertainties in the assembly and running conditions. The present investigation aims to find a proper classification method for eigenmodes of compressor airfoils. Specific data normalization and data dependent initialization of a neural network using principle-component directions as initial weight vectors have led to the development of a classification and decision procedure enabling automatic assignment of proper uncertainty bands to eigenfrequencies of a specific eigenmode shape. Application to compressor airfoils of a stationary gas-turbine with hammer-foot and dove-tail roots demonstrates the high performance of the proposed procedure.
机译:自动化的结构设计优化应考虑取决于本征模的失效风险,因为本征模形状通过其特征应力集中模式及其与激发的特定相互作用来确定失效风险。因此,这样的过程需要能够识别具有低错误率的本征模式。这是一个相当具有挑战性的任务,因为本征模式取决于在设计过程中变化的结构的几何形状,并且取决于由于装配和运行条件的不确定性而无法明确定义的边界条件。本研究旨在为压缩机翼型的本征模式找到合适的分类方法。使用主分量方向作为初始权重向量的神经网络的特定数据归一化和依赖数据的初始化导致了分类和决策程序的发展,该程序能够将适当的不确定带自动分配给特定本征模形状的本征频率。在具有锤脚和燕尾形根的固定式燃气轮机的压缩机翼型上的应用证明了所提出程序的高性能。

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