AI-assisted study of auxetic structures

Sergej Grednev, Henrik S. Steude, Stefan Bronder, Oliver Niggemann, Anne Jung
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引用次数: 0

Abstract

In this study, the viability of using machine learning models to predict stress-strain curves of auxetic structures based on geometry-describing parameters is explored. Given the computational cost and time associated with generating these curves through numerical simulations, a machine learning-based approach promises a more efficient alternative. A range of machine learning models, including Artificial Neural Networks, k-Nearest Neighbors Regression, Support Vector Regression, and XGBoost, is implemented and compared regarding the aptitude to predict stress-strain curves under quasi-static compressive loading. Training data is generated using validated finite element simulations. The performance of these models is rigorously tested on data not seen during training. The Feed-Forward Artificial Neural Network emerged as the most proficient model, achieving a Mean Absolute Percentage Error of 0.367 ± 0.230.
人工智能辅助的辅助结构研究
在本研究中,探讨了基于几何描述参数的机器学习模型预测缺失结构应力-应变曲线的可行性。考虑到通过数值模拟生成这些曲线的计算成本和时间,基于机器学习的方法有望成为更有效的替代方案。一系列机器学习模型,包括人工神经网络、k近邻回归、支持向量回归和XGBoost,都被实现并比较了在准静态压缩载荷下预测应力-应变曲线的能力。训练数据是使用经过验证的有限元模拟生成的。这些模型的性能是在训练期间没有看到的数据上严格测试的。前馈人工神经网络是最熟练的模型,平均绝对百分比误差为0.367±0.230。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
0.40
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