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Volume Flow Rate Optimization of an Axial Fan by Artificial Neural Network and Genetic Algorithm

机译:基于人工神经网络和遗传算法的轴流风机体积流量优化。

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The present study is to improve the volume flow rate of an axial fan through optimizing the blade shape under the demand for a specified static pressure. Fourteen design variables were selected to control the blade camber lines and the stacking line and the values of these variables were determined by using the experimental design method of the Latin Hypercube Sampling (LHS) to generate forty designs. The optimization was carried out using the genetic algorithm (GA) coupled with the artificial neural network (ANN) to increase the volume flow rate of the axial fan under the constraint of a specific motor power and a required static pressure. Differences in the aerodynamic performance and the flow characteristics between the original model and the optimal model were analyzed in detail. The results showed that the volume flow rate of the optimal model increased by 33%. The chord length, the installation angle and the cascade turning angle changed considerably. The forward leaned blade was beneficial to improve the volume flow rate of the axial fan. The axial velocity distribution and the static pressure distribution on the blade surface were improved after optimization.
机译:本研究旨在通过在指定静压需求下优化叶片形状来提高轴流风扇的体积流量。选择了14个设计变量来控制叶片弯度线和堆叠线,并使用Latin Hypercube Sampling(LHS)的实验设计方法确定这些变量的值,以生成40个设计。使用遗传算法(GA)结合人工神经网络(ANN)进行了优化,以在特定电动机功率和所需静压力的约束下增加轴流风扇的体积流量。详细分析了原始模型和最佳模型之间在空气动力学性能和流动特性方面的差异。结果表明,最佳模型的体积流量增加了33%。弦长,安装角度和叶栅转向角度有很大变化。前倾叶片有利于提高轴流风机的体积流量。优化后改善了叶片表面的轴向速度分布和静压分布。

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