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Pareto Based Multi-Objective Optimization of Centrifugal Pumps Using CFD, Neural Networks and Genetic Algorithms

机译:基于CFD,神经网络和遗传算法的基于帕累托的离心泵多目标优化

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Abstract:Increase of efficiency (η) and decrease of the required NPSH simultaneously are important objectives in the design of centrifugal pumps. In the present study, multi-objective optimization of centrifugal pumps is performed in three steps. In the first step, η and NPSHr in a set of centrifugal pumps are numerically investigated using commercial software NUMECA. Two meta-models based on the evolved Group Method of Data Handling (GMDH) type neural networks are obtained. The second step is the modeling of η and NPSHr with respect to geometrical design variables. Finally, using obtained polynomial neural networks, multi-objective genetic algorithms are used for Pareto based optimization of centrifugal pumps considering two conflicting objectives, η and NPSHr. It is shown that some interesting and important relationships as useful optimal design principles involved in the performance of centrifugal pumps can be discovered by Pareto based multi-objective optimization of the obtained polynomial meta-model...
机译:摘要:效率(η)的提高和所需NPSH的降低是离心泵设计中的重要目标。在本研究中,离心泵的多目标优化分三个步骤执行。第一步,使用商业软件NUMECA对一组离心泵中的η和NPSHr进行数值研究。获得了基于改进的数据处理分组方法(GMDH)型神经网络的两个元模型。第二步是关于几何设计变量对η和NPSHr进行建模。最后,使用获得的多项式神经网络,将多目标遗传算法用于基于帕累托的离心泵优化,其中考虑了两个相互冲突的目标η和NPSHr。结果表明,通过基于Pareto的多项式元模型的多目标优化,可以发现一些有趣且重要的关系,作为涉及离心泵性能的有用的最佳设计原则...

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