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Aerodynamic Shape Optimization of the Pantograph Fairing of a High-Speed Train

机译:高速列车受电弓整流罩的空气动力学形状优化

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In order to improve the aerodynamic performance of the pantograph fairing of a high-speed train, an aerodynamic shape optimization design approach of the pantograph fairing was proposed based on a multi-objective genetic algorithm and the theory of computational fluid dynamics (CFD). The aerodynamic drag force and the acoustic power level of the fairing were set to be the optimization objectives. A three-dimensional (3D) parametric model of the pantograph fairing was established and 4 optimization design variables were extracted. The script files of the software of CATIA and STAR-CCM+ were integrated into the optimization design software ISIGHT, and then the automatic deformation of the pantograph fairing and the automatic calculation of the train aerodynamics could be obtained. The design variables were automatically updated by non-dominated sorting genetic algorithm-II (NSGA-II) to achieve the automatic optimization of the pantograph fairing. After optimization, the correlations between the optimization objectives and the design variables were analyzed, and the most important design variables which influenced the optimization objectives were obtained. The optimization results show that the correlations between the optimization design variables and the two optimization objectives are the same, and only the values of the correlation coefficients are different. Compared with the prototype, the aerodynamic drag force of the middle coach with the optimized fairing has been reduced up to 4.21%, and the maximum acoustic power level of the optimized fairing has been reduced up to 7.38%.
机译:为了提高高速列车受电弓整流罩的空气动力学性能,提出了一种基于多目标遗传算法和计算流体力学(CFD)理论的受电弓整流罩的空气动力学形状优化设计方法。整流罩的气动阻力和声功率级被设置为优化目标。建立了受电弓整流罩的三维(3D)参数模型,并提取了4个优化设计变量。将CATIA和STAR-CCM +软件的脚本文件集成到优化设计软件ISIGHT中,然后可以获得受电弓整流罩的自动变形和列车空气动力学的自动计算。通过非主导排序遗传算法-II(NSGA-II)自动更新设计变量,以实现受电弓整流罩的自动优化。在优化之后,分析了优化目标和设计变量之间的相关性,并获得了影响优化目标的最重要的设计变量。优化结果表明,优化设计变量与两个优化目标之间的相关性相同,只是相关系数的值不同。与原型相比,带有优化整流罩的中型教练的空气阻力降低了4.21%,优化整流罩的最大声功率级降低了7.38%。

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