Non-intrusive polynomial chaos expansion for robust topology optimization of truss-like continuum under random loads

IF 2 3区 工程技术 Q2 ENGINEERING, MULTIDISCIPLINARY Optimization and Engineering Pub Date : 2024-06-27 DOI:10.1007/s11081-024-09901-8
Xinze Guo, Kemin Zhou
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Abstract

This paper dedicates to presenting an uncertainty analysis framework for robust topology optimization (RTO) based on truss-like material model that integrates non-intrusive polynomial chaos expansion (PCE) approach. In this framework, the RTO problem is formulated as an optimization problem, which aims at minimizing both the expectancy and the standard derivation of the structural compliance with volume constraints. The magnitude and direction of load uncertainty are assumed to follow a Gaussian distribution independently. A standard non-intrusive PCE requires a large number of multivariate integrals to calculate the expansion coefficient. Therefore, response metrics such as structural compliance are efficiently characterized using the decoupling techniques based on the expansions of the uncertainty parameters. The mechanical analysis and uncertainty analysis are separated, so that the number of simulations in the original PCE procedure is greatly reduced for linear structures by means of superposition. The optimization is achieved by gradient-based methods. The appreciable accuracy and efficiency are validated by the Monte Carlo simulation. Three numerical examples are provided to demonstrate that the proposed method can lead to designs with completely different topologies and superior robustness compared to standard one.

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随机载荷下类桁架连续体鲁棒性拓扑优化的非侵入式多项式混沌扩展
本文基于类桁架材料模型,结合非侵入式多项式混沌扩展(PCE)方法,提出了一种用于鲁棒拓扑优化(RTO)的不确定性分析框架。在这一框架中,RTO 问题被表述为一个优化问题,其目的是最大限度地降低结构符合体积约束条件的期望值和标准推导值。荷载不确定性的大小和方向被假定为独立的高斯分布。标准的非侵入式 PCE 需要大量的多元积分来计算膨胀系数。因此,使用基于不确定性参数扩展的解耦技术,可以有效地表征结构顺应性等响应指标。机械分析和不确定性分析被分离开来,因此对于线性结构而言,通过叠加可以大大减少原始 PCE 程序中的模拟次数。优化是通过基于梯度的方法实现的。蒙特卡罗模拟验证了其显著的准确性和效率。我们提供了三个数值示例来证明,与标准方法相比,所提出的方法可以设计出完全不同的拓扑结构和卓越的鲁棒性。
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来源期刊
Optimization and Engineering
Optimization and Engineering 工程技术-工程:综合
CiteScore
4.80
自引率
14.30%
发文量
73
审稿时长
>12 weeks
期刊介绍: Optimization and Engineering is a multidisciplinary journal; its primary goal is to promote the application of optimization methods in the general area of engineering sciences. We expect submissions to OPTE not only to make a significant optimization contribution but also to impact a specific engineering application. Topics of Interest: -Optimization: All methods and algorithms of mathematical optimization, including blackbox and derivative-free optimization, continuous optimization, discrete optimization, global optimization, linear and conic optimization, multiobjective optimization, PDE-constrained optimization & control, and stochastic optimization. Numerical and implementation issues, optimization software, benchmarking, and case studies. -Engineering Sciences: Aerospace engineering, biomedical engineering, chemical & process engineering, civil, environmental, & architectural engineering, electrical engineering, financial engineering, geosciences, healthcare engineering, industrial & systems engineering, mechanical engineering & MDO, and robotics.
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