Kuś Wacław, Mucha Waldemar, Jiregna Iyasu Tafese
Department of Computational Mechanics and Engineering, Silesian University of Technology, 44-100 Gliwice, Poland.
Materials (Basel). 2023 Dec 27;17(1):154. doi: 10.3390/ma17010154.
Structures made of heterogeneous materials, such as composites, often require a multiscale approach when their behavior is simulated using the finite element method. By solving the boundary value problem of the macroscale model, for previously homogenized material properties, the resulting stress maps can be obtained. However, such stress results do not describe the actual behavior of the material and are often significantly different from the actual stresses in the heterogeneous microstructure. Finding high-accuracy stress results for such materials leads to time-consuming analyses in both scales. This paper focuses on the application of machine learning to multiscale analysis of structures made of composite materials, to substantially decrease the time of computations of such localization problems. The presented methodology was validated by a numerical example where a structure made of resin epoxy with randomly distributed short glass fibers was analyzed using a computational multiscale approach. Carefully prepared training data allowed artificial neural networks to learn relationships between two scales and significantly increased the efficiency of the multiscale approach.
由异质材料(如复合材料)制成的结构在使用有限元方法模拟其行为时,通常需要采用多尺度方法。通过求解宏观尺度模型的边值问题,对于先前均匀化的材料属性,可以获得应力图。然而,这样的应力结果并不能描述材料的实际行为,并且往往与异质微观结构中的实际应力有显著差异。为这类材料找到高精度的应力结果会导致两个尺度上的分析都很耗时。本文重点关注机器学习在复合材料结构多尺度分析中的应用,以大幅减少此类局部化问题的计算时间。通过一个数值例子验证了所提出的方法,在该例子中,使用计算多尺度方法分析了由随机分布的短玻璃纤维的环氧树脂制成的结构。精心准备的训练数据使人工神经网络能够学习两个尺度之间的关系,并显著提高了多尺度方法的效率。