首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >Efficient structure crash topology optimization strategy using a model order reduction method combined with equivalent static loads
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Efficient structure crash topology optimization strategy using a model order reduction method combined with equivalent static loads

机译:使用模型顺序减少方法的高效结构崩溃拓扑优化策略与等效静电负载相结合

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摘要

In this study, an efficient topology optimization method under crash loads is proposed by combining the equivalent static loads with a model order reduction method, which is referred as the reduced model-based equivalent static loads method for nonlinear dynamic response topology optimization method. Considering that some parts of the vehicle experience large nonlinear deformations, whereas others exhibit only small linear deformations in a vehicle crash scenario, the linear and nonlinear behavior parts are identified and the whole model of the complete structure is divided into nonlinear and linear sub-models. At each cycle, the model order reduction method is used in the linear sub-model during crash analysis to solve the low-density-elements-induced mesh distortion problem and accelerate this process. In the linear static topology optimization, the nonlinear sub-model that was initially used to describe the nonlinear behavior part is linearized by the equivalent static loads method and then reduced by the Guyan reduction method. Then, the reduced equivalent static load model is assembled into the linear sub-model that is defined as the design space to formulate a reduced topology optimization model of the complete structure and the reduced equivalent static loads that only act on master degrees of freedom are calculated. Finally, the linear static topology optimization is performed based on the reduced topology optimization model with the reduced equivalent static loads to enhance the efficiency and improve the numerical stability. The process is repeated until the convergence criterion is satisfied. The effectiveness of the proposed method is demonstrated by investing a numerical example. The results show that the proposed method provides a feasible strategy for the topology optimization under crash loads, which can effectively improve the numerical stability and convergence.
机译:在本研究中,通过将等效静载与模型顺序减少方法组合,提出了一种有效的拓扑优化方法,提出了一种模型顺序减少方法,该方法被称为用于非线性动态响应拓扑优化方法的减少的基于模型的等效静载方法。考虑到车辆的某些部分体验大的非线性变形,而其他部分仅在车辆碰撞情况下表现出小的线性变形,识别线性和非线性行为部件,并且整个结构的整个模型被分成非线性和线性子模型。在每个循环中,模型顺序减少方法在碰撞分析期间在线性子模型中使用,以解决低密度元素诱导的网状失真问题并加速该过程。在线性静态拓扑优化中,最初用于描述非线性行为部分的非线性子模型通过等效的静载方法线性化,然后通过Guyan减少方法减少。然后,将减少的等效静载荷模型组装成被定义为设计空间的线性子模型,以制定完整结构的拓扑优化模型以及仅计算跨度自由度的等效静载荷的降低的等效静载荷。最后,基于降低的等效静载荷的拓扑优化模型来执行线性静态拓扑优化,以提高效率并提高数值稳定性。重复该过程,直到满足收敛标准。通过投资数值示例来证明所提出的方法的有效性。结果表明,该方法为崩溃负荷下拓扑优化提供了可行的策略,可以有效地提高数值稳定性和收敛性。

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