Multi-objective aerodynamic optimization design of high-speed maglev train nose

S. Yao, Da-wei Chen, S. Ding
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引用次数: 3

Abstract

PurposeThe nose length is the key design parameter affecting the aerodynamic performance of high-speed maglev train, and the horizontal profile has a significant impact on the aerodynamic lift of the leading and trailing cars Hence, the study analyzes aerodynamic parameters with multi-objective optimization design.Design/methodology/approachThe nose of normal temperature and normal conduction high-speed maglev train is divided into streamlined part and equipment cabin according to its geometric characteristics. Then the modified vehicle modeling function (VMF) parameterization method and surface discretization method are adopted for the parametric design of the nose. For the 12 key design parameters extracted, combined with computational fluid dynamics (CFD), support vector machine (SVR) model and multi-objective particle swarm optimization (MPSO) algorithm, the multi-objective aerodynamic optimization design of high-speed maglev train nose and the sensitivity analysis of design parameters are carried out with aerodynamic drag coefficient of the whole vehicle and the aerodynamic lift coefficient of the trailing car as the optimization objectives and the aerodynamic lift coefficient of the leading car as the constraint. The engineering improvement and wind tunnel test verification of the optimized shape are done.FindingsResults show that the parametric design method can use less design parameters to describe the nose shape of high-speed maglev train. The prediction accuracy of the SVR model with the reduced amount of calculation and improved optimization efficiency meets the design requirements.Originality/valueCompared with the original shape, the aerodynamic drag coefficient of the whole vehicle is reduced by 19.2%, and the aerodynamic lift coefficients of the leading and trailing cars are reduced by 24.8 and 51.3%, respectively, after adopting the optimized shape modified according to engineering design requirements.
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高速磁悬浮列车机头多目标气动优化设计
目的机头长度是影响高速磁浮列车气动性能的关键设计参数,而水平型线对前后车的气动升力影响较大,因此采用多目标优化设计方法对气动参数进行分析。常温常导高速磁浮列车机头根据其几何特性分为流线型部分和设备舱。然后采用改进的车辆建模函数(VMF)参数化方法和曲面离散化方法对机头进行参数化设计。对提取的12个关键设计参数,结合计算流体力学(CFD)、支持向量机(SVR)模型和多目标粒子群优化(MPSO)算法,以整车气动阻力系数和尾车气动升力系数为优化目标,以车头气动升力系数为约束条件,对高速磁浮列车车头进行了多目标气动优化设计和设计参数的敏感性分析。对优化后的形状进行了工程改进和风洞试验验证。结果表明,参数化设计方法可以使用较少的设计参数来描述高速磁悬浮列车的机头形状。减少了计算量,提高了优化效率,支持向量回归模型的预测精度满足设计要求。采用根据工程设计要求修改的优化外形后,与原外形相比,整车气动阻力系数降低19.2%,前后车气动升力系数分别降低24.8%和51.3%。
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