The question of how methods from the field of artificial intelligence can help improve the conventional frameworks for topology optimisation has received increasing attention over the last few years. Motivated by the capabilities of neural networks in image analysis, different model-variations aimed at obtaining iteration-free topology optimisation have been proposed with varying success. Other works focused on speed-up through replacing expensive optimisers and state solvers, or reducing the design-space have been attempted, but have not yet received the same attention. The portfolio of articles presenting different applications has as such become extensive, but few real breakthroughs have yet been celebrated. An overall trend in the literature is the strong faith in the "magic" of artificial intelligence and thus misunderstandings about the capabilities of such methods. The aim of this article is therefore to present a critical review of the current state of research in this field. To this end, an overview of the different model-applications is presented, and efforts are made to identify reasons for the overall lack of convincing success. A thorough analysis identifies and differentiates between problematic and promising aspects of existing models. The resulting findings are used to detail recommendations believed to encourage avenues of potential scientific progress for further research within the field.
翻译:过去几年来,人们日益关注人工智能领域的方法如何有助于改善传统地形优化框架的问题,在图像分析方面,由于神经网络的能力,人们提出了各种模型差异,以获得无迭代的地形优化,结果各有不同;其他工作的重点是通过更换昂贵的选美器和州解答器来加快速度,或缩小设计空间,但还没有得到同样的注意;提出不同应用的系列文章已变得广泛,但实际突破却鲜见。文献中的总体趋势是对人工智能的“神奇”的强烈信心,从而对此类方法的能力产生误解。因此,本文章的目的是对该领域研究的现状进行批判性审查。为此目的,对不同的模型应用作了概述,并努力查明总体缺乏令人信服的成功的理由。透彻分析发现并区分现有模型中存在问题和有希望的方面。研究结果被用于详细研究领域内的进一步进展渠道。