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Fuzzy optimization design-based multi-level response surface of bogie frame

机译:基于模糊优化设计的转向架框架多级响应面

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Purpose - In a structural optimization design-based single-level response surface, the number of optimal variables is too much, which not only increases the number of experiment times, but also reduces the fitting accuracy of the response surface. In addition, the uncertainty of the optimal variables and their boundary conditions makes the optimal solution difficult to obtain. The purpose of this paper is to propose a method of fuzzy optimization design-based multi-level response surface to deal with the problem. Design/methodology/approach - The main optimal variables are determined by Monte Carlo simulation, and are classified into four levels according to their sensitivity. The linear membership function and the optimal level cut set method are applied to deal with the uncertainties of optimal variables and their boundary conditions, as well as the non-fuzzy processing is carried out. Based on this, the response surface function of the first-level design variables is established based on the design of experiments. A combinatorial optimization algorithm is developed to compute the optimal solution of the response surface function and bring the optimal solution into the calculation of the next level response surface, and so on. The objective value of the fourth-level response surface is an optimal solution under the optimal design variables combination. Findings - The results show that the proposed method is superior to the traditional method in computational efficiency and accuracy, and improves 50.7 and 5.3 percent, respectively. Originality/value - Most of the previous work on optimization was based on single-level response surface and single optimization algorithm, without considering the uncertainty of design variables. There are very few studies which discuss the optimization efficiency and accuracy of multiple design variables. This research illustrates the importance of uncertainty factors and hierarchical surrogate models for multi-variable optimization design.
机译:目的-在基于结构优化设计的单级响应曲面中,最佳变量的数量过多,这不仅增加了实验次数,而且降低了响应曲面的拟合精度。另外,最优变量及其边界条件的不确定性使得难以获得最优解。本文的目的是提出一种基于模糊优化设计的多级响应面方法来解决该问题。设计/方法/方法-主要的最佳变量由Monte Carlo模拟确定,并根据其敏感性分为四个级别。应用线性隶属函数和最优水平割集方法处理最优变量的不确定性及其边界条件,并进行了非模糊处理。在此基础上,基于实验设计,建立了一级设计变量的响应面函数。开发了一种组合优化算法来计算响应面函数的最优解,并将最优解带入下一级响应面的计算中,依此类推。在最佳设计变量组合下,第四级响应面的目标值是最佳解。结果-结果表明,该方法在计算效率和准确性方面优于传统方法,分别提高了50.7%和5.3%。原创性/价值-之前的大多数优化工作都是基于单级响应面和单个优化算法,而不考虑设计变量的不确定性。很少有研究讨论多个设计变量的优化效率和准确性。这项研究说明了不确定因素和分层代理模型对于多变量优化设计的重要性。

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