不确定荷载作用下两杆结构的有效鲁棒优化方法

IF 0.6 4区 工程技术 Q4 MECHANICS
Xinze Guo, Shunyi Shi, Kemin Zhou
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引用次数: 0

摘要

在制造业和工程界,不确定性无处不在。本文针对不确定荷载下的两杆结构模型,建立了一种有效的鲁棒优化框架,该模型包含了高斯分布下的幅度和方向不确定性。该框架旨在同时最小化结构遵从量约束的期望和标准偏差。合理有效地估计结构柔度统计矩是基于概率的RTO问题的关键。为了解决传统替代模型中高维数的计算难题,提出了一种基于非侵入多项式混沌展开的解耦技术。这种数值评估工具对于不同类型的结构是通用的。此外,还推导了基于两杆结构的解析表达式,作为标准参考。以各杆的横截面积和与水平方向的夹角为设计变量,采用最优准则进行优化。数值算例表明,与多项式混沌展开和蒙特卡罗模拟等传统方法相比,本文算法的精度和效率有了显著提高。优化后的设计比同类设计具有更好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An Efficient Robust Optimization Method for Two-Bar Structures under Uncertain Loading

An Efficient Robust Optimization Method for Two-Bar Structures under Uncertain Loading

Uncertainty is omnipresent in manufacturing and engineering community. This paper develops an efficient robust optimization framework for a two-bar structural model under uncertain loading, which includes magnitude and direction uncertainty following Gaussian distribution. This framework aims to simultaneously minimize the expectancy and standard deviation of structural compliance with volume constraints. A reasonable and efficient estimation of the statistical moment of structural compliance is recognized the critical to the probability-based RTO problem. To address the computational challenges associated with high dimensionality in traditional surrogate models, a decoupling technique based on non-intrusive polynomial chaos expansion is developed. Such a numerical evaluation tool is generic for different types of structures. In addition, an analytical expression based on a two-bar structure is derived as a standard reference. The cross-sectional area and angle with horizontal direction of each bar are taken as design variables and optimization is achieved using the optimality criteria. Numerical examples demonstrate that the accuracy and efficiency of the reported algorithm are significantly improved compared to conventional methods such as polynomial chaos expansion and Monte Carlo simulation. The optimized designs prove a better robust performance than their counterparts.

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来源期刊
Mechanics of Solids
Mechanics of Solids 医学-力学
CiteScore
1.20
自引率
42.90%
发文量
112
审稿时长
6-12 weeks
期刊介绍: Mechanics of Solids publishes articles in the general areas of dynamics of particles and rigid bodies and the mechanics of deformable solids. The journal has a goal of being a comprehensive record of up-to-the-minute research results. The journal coverage is vibration of discrete and continuous systems; stability and optimization of mechanical systems; automatic control theory; dynamics of multiple body systems; elasticity, viscoelasticity and plasticity; mechanics of composite materials; theory of structures and structural stability; wave propagation and impact of solids; fracture mechanics; micromechanics of solids; mechanics of granular and geological materials; structure-fluid interaction; mechanical behavior of materials; gyroscopes and navigation systems; and nanomechanics. Most of the articles in the journal are theoretical and analytical. They present a blend of basic mechanics theory with analysis of contemporary technological problems.
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