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Pareto based multi-objective optimization of a cyclone vortex finder using CFD, GMDH type neural networks and genetic algorithms

机译:基于帕累托的CFD,GMDH型神经网络和遗传算法对旋风涡流探测器的多目标优化

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摘要

In the present study, multi-objective optimization of a cyclone vortex finder is performed in three steps. In the first step, collection efficiency (η) and the pressure drop (Δp) in a set of cyclones with different vortex finder shapes are numerically investigated using CFD techniques. Two meta-models based on the evolved group method of data handling (GMDH) type neural networks are obtained in the second step, for modelling of η and Δp with respect to geometrical design variables. Finally, using the obtained polynomial neural networks, multi-objective genetic algorithms are used for Pareto-based optimization of a vortex finder considering two conflicting objectives, η and Δp.
机译:在本研究中,分三个步骤对旋风涡流探测器进行多目标优化。第一步,使用CFD技术对一组具有不同涡流探测器形状的旋风分离器中的收集效率(η)和压降(Δp)进行了数值研究。第二步,获得了基于数据处理的进化组方法(GMDH)型神经网络的两个元模型,用于对几何设计变量进行η和Δp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考虑两个冲突目标η和Δp的涡旋探测器的基于Pareto的优化。

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