Evolutionary Seeding of Diverse Structural Design Solutions via Topology Optimization

Yue Xie, Josh Pinskier, Xing Wang, David Howard
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Abstract

Topology optimization is a powerful design tool in structural engineering and other engineering problems. The design domain is discretized into elements, and a finite element method model is iteratively solved to find the element that maximizes the structure's performance. Although gradient-based solvers have been used to solve topology optimization problems, they may be susceptible to suboptimal solutions or difficulty obtaining feasible solutions, particularly in non-convex optimization problems. The presence of non-convexities can hinder convergence, leading to challenges in achieving the global optimum. With this in mind, we discuss in this paper the application of the quality diversity approach to topological optimization problems. Quality diversity (QD) algorithms have shown promise in the research field of optimization and have many applications in engineering design, robotics, and games. MAP-Elites is a popular QD algorithm used in robotics. In soft robotics, the MAP-Elites algorithm has been used to optimize the shape and control of soft robots, leading to the discovery of new and efficient motion strategies. This paper introduces an approach based on MAP-Elites to provide diverse designs for structural optimization problems. Three fundamental topology optimization problems are used for experimental testing, and the results demonstrate the ability of the proposed algorithm to generate diverse, high-performance designs for those problems. Furthermore, the proposed algorithm can be a valuable engineering design tool capable of creating novel and efficient designs.
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通过拓扑优化实现多样化结构设计方案的进化播种
拓扑优化是结构工程和其他工程问题中一个强大的设计工具。设计域被离散化为元素,有限元法模型通过迭代求解来找到使结构性能最大化的元素。虽然基于梯度的求解器已被用于解决拓扑优化问题,但它们可能容易出现次优解或难以获得可行解的情况,尤其是在非凸优化问题中。非凸性的存在会阻碍收敛,从而给实现全局最优带来挑战。有鉴于此,我们在本文中讨论了质量多样性方法在拓扑优化问题中的应用。质量多样性(QD)算法在优化研究领域大有可为,在工程设计、机器人和游戏中也有很多应用。MAP-Elites 是机器人学中常用的 QD 算法。在软体机器人学中,MAP-Elites 算法被用于优化软体机器人的形状和控制,从而发现了新的高效运动策略。本文介绍了一种基于 MAP-Elites 的方法,为结构优化问题提供多样化设计。实验测试了三个基本拓扑优化问题,结果表明所提出的算法能够为这些问题生成多样化、高性能的设计。此外,所提出的算法可以成为一种有价值的工程设计工具,能够创造出新颖、高效的设计。
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Evolutionary Seeding of Diverse Structural Design Solutions via Topology Optimization The Influence of Noise on Multi-Parent Crossover for an Island Model Genetic Algorithm Model-based Gradient Search for Permutation Problems Exploring the Explainable Aspects and Performance of a Learnable Evolutionary Multiobjective Optimization Method Editorial to the “Evolutionary Reinforcement Learning” Special Issue
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