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The comparison of multi-objective particle swarm optimization and NSGA II algorithm: applications in centrifugal pumps

机译:多目标粒子群算法与NSGA II算法的比较:离心泵中的应用

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摘要

In the present study, multi-objective optimization of centrifugal pumps is performed in three steps. In the first step, efficiency (η) and the required net positive suction head (NPSHr) in a set of centrifugal pumps are numerically investigated using commercial software. Two meta-models based on the evolved group method of data handling (GMDH) type neural networks are obtained in the second step for modeling of η and NPSHr with respect to geometrical design variables. Finally, using the obtained polynomial neural networks, a multi-objective particle swarm optimization method (MOPSO) is used for Pareto-based optimization of centrifugal pumps considering two conflicting objectives, η and NPSHr. The Pareto results of the MOPSO method are also compared with those of a multi-objective genetic algorithm (NSGA II). 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 metamodels representing η and NPSHr characteristics.
机译:在本研究中,离心泵的多目标优化分三个步骤执行。第一步,使用商业软件对一组离心泵中的效率(η)和所需的净正吸头(NPSHr)进行数值研究。在第二步中,获得了两个基于数据处理的进化组方法(GMDH)型神经网络的元模型,用于对几何设计变量进行η和NPSHr建模。最后,使用获得的多项式神经网络,将多目标粒子群优化方法(MOPSO)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。还将MOPSO方法的Pareto结果与多目标遗传算法(NSGA II)的结果进行比较。结果表明,可以通过对获得的代表η和NPSHr特性的多项式元模型进行基于Pareto的多目标优化,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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