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Qualification of shape characteristics by using Neural Nets

机译:使用神经网络对形状特征进行鉴定

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摘要

A new methodology which uses a neural network to evaluate the quality of an airfoil by interpreting the distribution of flow parameters on a quasi-3D surface has been developed. The training data was generated by Computational Fluid Dynamics (CFD) analysis of randomly perturbed airfoil. Heuristic rules based on Fluid boundary layer analysis were used for evaluating the flow parameters on the airfoil. Two different heuristic measures of quality are used 1) Diffusion which is a measure of losses due to local pressure changes in the flow distribution, and 2) Deviation which is a measure of losses due to non-uniformity of acceleration of the flow. These two parameters were used as the outputs of the neural network.
机译:已经开发出一种新的方法,该方法使用神经网络通过解释准3D表面上的流动参数分布来评估机翼质量。通过随机扰动翼型的计算流体动力学(CFD)分析生成训练数据。基于流体边界层分析的启发式规则用于评估翼型上的流动参数。使用两种不同的启发式质量度量:1)扩散,它是由于流量分布中局部压力变化而导致的损失的度量;以及2)偏差,是由于流量的加速度不均匀所导致的损失的度量。这两个参数被用作神经网络的输出。

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