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Multi-objective aero acoustic optimization of rear end in a simplified car model by using hybrid Robust Parameter Design, Artificial Neural Networks and Genetic Algorithm methods

机译:混合鲁棒参数设计,人工神经网络和遗传算法相结合的简化汽车模型后端多目标航空声学优化

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摘要

In this paper, optimization of rear end of a simplified car model is performed considering aerodynamic and acoustic objectives. Slant angle, rear box angle, boat tail angle, and rear box length are considered as main variables of the rear end. For numerical simulation of flow around the model and studying aerodynamic noise, realizable turbulent model and broad band noise model are used, respectively. Simulation results are validated by the experimental results reported in the literature. To reduce number of simulations to reach optimum values of parameters, Taguchi method has been used. The results of Taguchi are in good agreement with simulation results. Then, the results of Taguchi have been used to obtain a relation between parameters and objectives employing Artificial Neural Networks. Optimization of the model has been conducted by the Neural Network and Multi Objective Genetic Algorithm methods. Finally, flow around the optimized model has been studied by numerical simulation and results have been reported.
机译:在本文中,考虑到空气动力学和声学目标,对简化汽车模型的后端进行了优化。倾斜角,后箱角,船尾角和后箱长度被认为是后端的主要变量。为了对模型周围的流动进行数值模拟并研究空气动力噪声,分别使用了可实现的湍流模型和宽带噪声模型。仿真结果由文献中报道的实验结果验证。为了减少仿真次数以达到最佳参数值,已使用了Taguchi方法。 Taguchi的结果与模拟结果非常吻合。然后,田口的结果已被用于使用人工神经网络获得参数和目标之间的关系。通过神经网络和多目标遗传算法对模型进行了优化。最后,通过数值模拟研究了优化模型周围的流动,并报告了结果。

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