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Metamodel-based robust collaborative optimization for the suspension parameters of rail vehicles

机译:基于Metamodel的稳健协作优化轨道车辆的悬架参数

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摘要

This work deals with multi-objective optimization for the suspension parameters of railcars and proposes an optimization strategy combining the collaborative optimization method and the metamodel method to optimize the suspension parameters of railcars. In this strategy, the system-level optimization and subsystem-level optimization problems are efficiently calculated by the collaborative optimization method, and the metamodel replaces the actual model in the subsystem-level to improve the convergence and robustness of the optimization algorithm. Finally, an optimal combination of suspension parameters is determined by the effective implementation of the proposed optimization method, and compared with the original design in terms of performance and robustness. Here, the lateral running stability and vertical running smoothness of railcars were increased by 10.96% and 10.1%, respectively, and the derailment coefficient and the reduction ratio of wheel weight of railcars were increased by 6.14% and 6.36%, respectively. The optimization results show that the dynamic performance of railcars is improved remarkably with the robust collaborative optimization of the suspension parameters, and the reliability and effectiveness of the proposed robust collaborative optimization method for the suspension parameters' optimization of the railcars have also been verified.
机译:这项工作涉及铁路车悬架参数的多目标优化,并提出了结合协同优化方法和元模型方法的优化策略,以优化铁路车的悬架参数。在该策略中,通过协作优化方法有效地计算系统级优化和子系统优化问题,并且元模型替换了子系统级别的实际模型,以提高优化算法的收敛性和鲁棒性。最后,通过所提出的优化方法的有效实施来确定悬架参数的最佳组合,并与性能和鲁棒性方面的原始设计进行比较。这里,铁路车的横向运行稳定性和垂直运行平滑度分别增加了10.96%和10.1%,脱轨系数和铁路车轮重量的减少比率分别增加了6.14%和6.36%。优化结果表明,利用悬架参数的稳健协作优化显着提高了轨道的动态性能,并且还已经验证了用于悬架参数的悬架参数优化的稳健协作优化方法的可靠性和有效性。

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