Research on a Multi-Fidelity Surrogate Model Based Model Updating Strategy

Ping Wang, Qingmiao Wang, Xin Yang, Zhenfei Zhan
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引用次数: 1

Abstract

In vehicle design modeling and simulation, surrogate model is commonly used to replace the high fidelity Finite Element (FE) model. A lot of simulation data from the high-fidelity FE model are utilized to construct an accurate surrogate model requires. However, computational time of FE model increases significantly with the growing complexities of vehicle engineering systems. In order to attain a surrogate model with satisfactory accuracy as well as acceptable computational time, this paper presents a model updated strategy based on multi-fidelity surrogate models. Based on a high-fidelity FE model and a low-fidelity FE model, an accurate multi-fidelity surrogate model is modeled. Firstly, the original full vehicle FE model is simplified to get a sub-model with acceptable accuracy, and it is able to capture the essential behaviors in the vehicle side impact simulations. Next, a primary response surface model (RSM) is built based on the simplified sub-model simulation data. Bayesian inference based bias term is modeled using the difference between the high-fidelity full vehicle FE model simulation data and the primary RSM running results. The bias is then incorporated to update the original RSM. This method can enhance the precision of surrogate model while saving computational time. A real-world side impact vehicle design case is utilized to demonstrate the validity of the proposed strategy.
基于多保真代理模型的模型更新策略研究
在车辆设计建模与仿真中,常用替代模型来代替高保真有限元模型。利用高保真有限元模型的大量仿真数据来构建所需的精确代理模型。然而,随着车辆工程系统复杂性的增加,有限元模型的计算时间也在显著增加。为了获得具有满意精度和可接受计算时间的代理模型,本文提出了一种基于多保真度代理模型的模型更新策略。在高保真有限元模型和低保真有限元模型的基础上,建立了精确的多保真替代模型。首先,对整车有限元模型进行简化,得到精度可接受的子模型,能够捕捉车辆侧面碰撞仿真中的基本行为;其次,基于简化后的子模型仿真数据,建立主响应面模型(RSM);利用高保真整车有限元模型仿真数据与初始RSM运行结果的差异,建立基于贝叶斯推理的偏差项模型。然后结合偏差来更新原始RSM。该方法在节省计算时间的同时,提高了代理模型的精度。通过一个侧面碰撞车辆设计实例,验证了所提策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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