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AXIAL-FLOW COMPRESSOR MODEL BASED ON A CASCADE STACKING TECHNIQUE AND NEURAL NETWORKS

机译:基于级联堆叠技术和神经网络的轴流压缩机模型

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This paper introduces a cascade-stacking technique for the development of a gas turbine multi-stage axial-flow compressor model. A large database of stationary and rotating cascade performance is first obtained by quasi three-dimensional CFD simulations and used to train neural networks for the prediction of cascade performance under generalized conditions. Then the model directly calculates the operating point of a compressor having known geometry characteristics, including variable inlet guide/stator vane effects, as a function of mass flow rate and rotational speed. The model can also be used as a valuable preliminary design tool, obtaining geometry characteristics by imposing flow patterns.
机译:本文介绍了一种级联堆叠技术,用于开发燃气轮机多级轴流压缩机模型。首先通过准立体CFD模拟首先获得静止和旋转级联性能的大型数据库,并用于培训神经网络,以预测在广义条件下的级联性能。然后,该模型直接计算具有已知几何特性的压缩机的操作点,包括可变入口引导/定子叶片效果,作为质量流量和转速。该模型也可用作有价值的初步设计工具,通过施加流动模式获得几何特征。

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