3D打印中基于机器学习的拓扑优化

Almira Askhatova, Yerlik Gabdulla, Amanali Bekbolat, E. Shehab, Md. Hazrat Ali
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引用次数: 0

摘要

由于计算时间过长,再加上基于有限元方法的仿真的不实用性,对加快产品开发中拓扑优化过程产生了强烈的需求。本文提出了一种以深度卷积神经网络(CNN)形式设计的三维结构拓扑优化解决方案,该方案在不使用任何迭代策略的情况下,在相对较短的时间内预测结构。该方法的创建是为了使用户能够在其设计中结合机器学习方法来进行拓扑优化,同时实现非迭代策略并提高流程效率。该方法有望显著减少计算时间,同时提高打印部件的结构性能和设计质量。这项研究为3D打印的拓扑优化提供了一个新的视角,并强调了机器学习在提高这一过程的效率和精度方面的潜力。本研究的结果表明,与专业软件相比,所提出的模型具有以显着加快的速度进行悬臂梁结构拓扑优化的能力,计算时间减少了约99%。这些结果对时间紧迫的工程和优化过程具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Topology Optimization in 3D Printing
The extremely lengthy computational times, coupled with the impracticality of the Finite Element Method (FEM)-based simulations, created a strong demand to accelerate the procedures of topology optimization involved in product development. This paper proposes a solution in the form of a deep Convolutional Neural Network (CNN) designed for 3D structural topology optimization, which predicts a structurein a relatively short amount of time without employing any iterative strategy. The methodology was created to empower users to incorporate a machine-learning approach to topology optimization in their designs while enabling the non-iterative strategy and increasing the efficiency of the process. The proposed approach is anticipated to significantly reduce computational time while improving the printed component’sstructural performance and design quality. This study offers a new perspective on topology optimization in 3D printing andhighlights the potential of machine learning in advancing theefficiency and precision of this process. The outcomes of this study illustrate that the proposed model possesses the capacity to conduct topology optimization of the cantilever beam structureat a significantly accelerated pace, as compared to specialized software showing a reduction in computation time, amounting to approximately 99%. These results hold promising implications for the time-critical engineering and optimization processes.
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