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Swarm intelligence based on modified PSO algorithm for the optimization of axial-flow pump impeller

机译:基于改进PSO算法的群智能优化轴流泵叶轮

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This paper presents a multi-objective optimization of the impeller shape of an axial-flow pump based on the Modified particle swarm optimization (MPSO) algorithm. At first, an impeller shape was designed and used as a reference in the optimization process then NPSHr and eta of the axial flow pump were numerically investigated by using the commercial software ANSYS with the design variables concerning hub angle beta(h), chord angle beta(c), cascade solidity of chord sigma(c) and maximum thickness of blade H. By using the Group method of data handling (GMDH) type neural networks in commercial software DTREG, the corresponding polynomial representation for NPSHr and eta with respect to the design variables were obtained. A benchmark test was employed to evaluate the performance of the MPSO algorithm in comparison with other particle swarm algorithms. Later the MPSO approach was used for Pareto based optimization. Finally, the MPSO optimization result and CFD simulation result were compared in a re-evaluation process. By using swarm intelligence based on the modified PSO algorithm, better performance pump with higher efficiency and lower NPSHr could be obtained. This novel algorithm was successfully applied for the optimization of axial-flow pump impeller shape design.
机译:本文提出了一种基于改进微粒群算法(MPSO)的轴流泵叶轮形状多目标优化方法。首先,设计了一个叶轮形状,并在优化过程中用作参考,然后使用商业软件ANSYS对轴流泵的NPSHr和eta进行数值研究,其设计变量涉及轮毂角β(h),弦角β (c),弦的总和(c)和叶片H的最大厚度。通过使用商用软件DTREG中的数据处理组方法(GMDH)型神经网络,NPSHr和eta的相应多项式表示获得设计变量。与其他粒子群算法相比,基准测试用于评估MPSO算法的性能。后来,MPSO方法用于基于Pareto的优化。最后,在重新评估过程中比较了MPSO优化结果和CFD仿真结果。通过使用基于改进的PSO算法的群体智能,可以获得性能更高,效率更高,NPSHr更低的泵。该新算法已成功应用于轴流泵叶轮形状设计的优化。

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