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OPTIMIZATION OF A TWO-STAGE TRANSONIC AXIAL FAN TO ENHANCE AERODYNAMIC STABILITY

机译:两级跨音速轴向风扇的优化,提高空气动力学稳定性

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In this paper, a multi-objective optimization of a transonic axial fan to enhance aerodynamic stability has been conducted using three-dimensional Reynolds-Averaged Navier-Stokes equations, surrogate modeling and multi-objective genetic algorithm (MOGA). Hub radius and first rotor chord length of the axial fan were chosen as design variables for the optimization. Peak adiabatic efficiency of the axial fan and stall margin at 60% of the designed rotational speed, were used as objective functions. Latin Hypercube Sampling (LHS) method was used to select design points in the design space. The objective functions were formulated using the response surface approximation (RSA) model. Three LHS samples with different distributions of twelve design points were tested to study their effects on prediction accuracy of the RSA model and optimization results. MOGA with the RSA models based on the best LHS sample, was used to obtain the Pareto-optimal front. As a result of optimization, an improvement of 17.2% in the stall margin at 60% of the designed rotational speed and 2.96% in peak adiabatic efficiency were obtained compared to the reference design. It was also found that distribution of the design points generated by LHS affects the effectiveness of the surrogate-based optimization.
机译:本文使用三维雷诺平均的Navier-Stokes方程,代理建模和多目标遗传算法(MOGA)已经进行了多目标优化以增强空气动力学稳定性。选择轴向风扇的轮毂半径和第一转子弦长作为优化的设计变量。轴向风扇的峰值绝热效率和60%设计的转速的失速余量,用作客观功能。拉丁超级采样(LHS)方法用于选择设计空间中的设计点。使用响应表面近似(RSA)模型配制客观函数。测试了具有12个设计点不同分布的三个LHS样本,以研究它们对RSA模型预测准确性的影响和优化结果。使用基于最佳LHS样本的RSA模型的MOGA用于获得Pareto-Optimal Front。优化的结果,与参考设计相比,在设计的转速的60%的失速余量中的提高17.2%,达到绝热效率为2.96%。还发现,LHS产生的设计点的分布影响了基于代理的优化的有效性。

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