基于机器学习的离心叶轮设计优化

IF 1.1 Q4 ENGINEERING, MECHANICAL Journal of the Global Power and Propulsion Society Pub Date : 2022-04-12 DOI:10.33737/jgpps/150663
Ao Zhang, Yang Liu, Jinguang Yang, Zhi Li, Chuan-Gui Zhang, Yiwen Li
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引用次数: 1

摘要

大数据和机器学习发展迅速,在离心叶轮等涡轮机械气动设计中的应用受到广泛关注。本文以流量系数较大(0.18–0.22)的离心叶轮为研究对象。首先,通过一维设计和优化,得到了离心叶轮的主要一维几何参数。随后,使用内部参数化程序和拉丁超立方体采样方法获得了数百个离心叶轮样本。NUMECA软件用于CFD计算,以建立离心叶轮的样本库。然后,应用人工神经网络(ANN)对样本库中的数据进行处理,建立了这些离心叶轮的流量系数、几何参数与气动性能之间的非线性模型,该模型可以代替CFD计算。最后,借助多目标遗传算法,对流量系数在0.18–0.22范围内的离心叶轮进行了全局优化,实现了快速设计优化。文中提供的三个实例表明,与传统的设计方法相比,上述设计和优化方法更快、更可靠。该方法为离心叶轮的快速设计提供了一条新途径。
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Machine learning based design optimization of centrifugal impellers
Big data and machine learning are developing rapidly, and their applications in the aerodynamic design of centrifugal impellers and other turbomachinery have attracted wide attention. In this paper, centrifugal impellers with large flow coefficient (0.18–0.22) are taken as research objects. Firstly, through one-dimensional design and optimization, main one-dimensional geometric parameters of those centrifugal impellers are obtained. Subsequently, hundreds of samples of centrifugal impellers are obtained by using an in-house parameterization program and Latin hypercube sampling method. The NUMECA software is used for CFD calculations to build a sample library of centrifugal impellers. Then, applying the artificial neural network (ANN) to deal with the data in the sample library, a nonlinear model between the flow coefficients, the geometric parameters of these centrifugal impellers and the aerodynamic performance is constructed, which can replace CFD calculations. Lastly with the help of the multi-objective genetic algorithm, a global optimization is carried out to fulfull a rapid design optimization for centrifugal impellers with flow coefficients in the range of 0.18–0.22. Three examples provided in the paper show that the design and optimization method described above is faster and more reliable compared with the traditional design method. This method provides a new way for the rapid design of centrifugal impellers.
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来源期刊
Journal of the Global Power and Propulsion Society
Journal of the Global Power and Propulsion Society Engineering-Industrial and Manufacturing Engineering
CiteScore
2.10
自引率
0.00%
发文量
21
审稿时长
8 weeks
期刊最新文献
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