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Robust Topology Optimization Based on Stochastic Collocation Methods under Loading Uncertainties

机译:基于加载不确定性下随机搭配方法的鲁棒拓扑优化

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摘要

A robust topology optimization (RTO) approach with consideration of loading uncertainties is developed in this paper. The stochastic collocation method combined with full tensor product grid and Smolyak sparse grid transforms the robust formulation into a weighted multiple loading deterministic problem at the collocation points. The proposed approach is amenable to implementation in existing commercial topology optimization software package and thus feasible to practical engineering problems. Numerical examples of two- and three-dimensional topology optimization problems are provided to demonstrate the proposed RTO approach and its applications. The optimal topologies obtained from deterministic and robust topology optimization designs under tensor product grid and sparse grid with different levels are compared with one another to investigate the pros and cons of optimization algorithm on final topologies, and an extensive Monte Carlo simulation is also performed to verify the proposed approach.
机译:考虑到加载不确定性的鲁棒拓扑优化(RTO)方法是在本文中开发的。随机搭配方法与全张量产品电网和Smolyak稀疏网格相结合,将鲁棒的配方变换为在搭配点的加权多加载确定性问题中。所提出的方法可用于在现有的商业拓扑优化软件包中实施,从而可行为实际工程问题。提供了两维拓扑优化问题的数值例子,以展示所提出的RTO方法及其应用。与张量产品网格和稀疏网格下的确定性和螺岩拓扑优化设计中获得的最佳拓扑相互比较,以研究最终拓扑上的优化算法的优点和缺点,并且还执行了广泛的蒙特卡罗模拟来验证建议的方法。

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