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Evolutionary Black-Box Topology Optimization: Challenges and Promises

机译:进化黑匣子拓扑优化:挑战和承诺

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摘要

Black-box topology optimization (BBTO) uses evolutionary algorithms and other soft computing techniques to generate near-optimal topologies of mechanical structures. Although evolutionary algorithms are widely used to compensate the limited applicability of conventional gradient optimization techniques, methods based on BBTO have been criticized due to numerous drawbacks. In this article, we discuss topology optimization as a black-box optimization problem. We review the main BBTO methods, discuss their challenges and present approaches to relax them. Dealing with those challenges effectively can lead to wider applicability of topology optimization, as well as the ability to tackle industrial, highly constrained, nonlinear, many-objective, and multimodal problems. Consequently, future research in this area may open the door for innovating new applications in science and engineering that may go beyond solving classical optimization problems of mechanical structures. Furthermore, algorithms designed for BBTO can be added to existing software toolboxes and packages of topology optimization.
机译:黑匣子拓扑优化(BBTO)使用进化算法和其他软计算技术来产生近乎最佳的机械结构拓扑。尽管进化算法广泛用于补偿传统梯度优化技术的有限适用性,但由于许多缺点,基于BBTO的方法受到批评。在本文中,我们将拓扑优化讨论为黑匣子优化问题。我们审查主要的BBTO方法,讨论其挑战和现有方法来放松它们。有效处理这些挑战可以导致拓扑优化的更广泛适用性,以及解决工业,高度约束,非线性,多目标和多模式问题的能力。因此,该领域的未来研究可以开门用于在科学和工程中创新新应用,这可能超出解决机械结构的经典优化问题。此外,为BBTO设计的算法可以添加到现有的软件工具箱和拓扑优化包中。

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