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Application concept of artificial neural networks for turbo- machinery design

机译:人工神经网络在涡轮机械设计中的应用概念

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This paper presents the results of an extensive investigation evaluating and improving the development of artificial neural network (ANN) models for turbomachinery design purposes. A set of 1100 differing axial compressor geometries based on 5 single-stage compressor rigs was prepared. Computations with the mean line analysis tool AXIAL? took place to determine the according compressor maps defined by 15 operating points each. The challenge of ANN model development in terms of dimensionality reduction (feature selection), data normalization, defining the networks necessary plasticity, and network training is discussed using the example of three different models. As a result, the first model is able to predict the total pressure loss of the rotor blade row with a mean magnitude of the relative error (MMRE) of 3.6%. The second model predicts the total pressure ratio with an average accuracy of 0.8%. The third and last model was trained to predict basic geometrical parameters by presenting the load level and the performance data as an input. The achieved MMRE varied between 2.4% and 5.6% in respect of the particular output variable. The results show that ANNs are applicable to develop efficient models for turbomachinery design and analysis purposes, respectively.
机译:本文介绍了评估和改进用于涡轮机械设计目的的人工神经网络(ANN)模型的开发的广泛研究的结果。基于5个单级压缩机装置,准备了一组1100种不同的轴向压缩机几何形状。用均线分析工具AXIAL计算吗?确定每个压缩机的15个工作点所定义的相应压缩机图。使用三个不同模型的示例讨论了ANN模型开发在降维(特征选择),数据标准化,定义网络必要的可塑性以及网络训练方面所面临的挑战。结果,第一模型能够以3.6%的相对误差(MMRE)的平均幅度来预测转子叶片排的总压力损失。第二个模型预测平均压力比为0.8%。第三个也是最后一个模型经过训练,可以通过显示负载水平和性能数据作为输入来预测基本几何参数。就特定的输出变量而言,获得的MMRE在2.4%和5.6%之间变化。结果表明,人工神经网络分别适用于为涡轮机械设计和分析目的开发有效模型。

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    Institute of Flight Systems and Automatic Control Technische Universitaet Darmstadt 64287 Darmstadt, Germany;

    Institute of Jet Propulsion and Turbomachinery RWTH Aachen University 52062 Aachen, Germany;

    Institute of Jet Propulsion and Turbomachinery RWTH Aachen University 52062 Aachen, Germany;

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  • 入库时间 2022-08-18 01:05:22

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