On the use of artificial neural networks and micromechanical analysis for prediciting elastic properties of unidirectional composites

E. Ghane, M. Fagerström, M. Mirkhalaf
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Abstract

The composite design industry has a central demand to predict the elastic behavior of composites from their constituent properties and micromechanical information. In this case, the complex architecture of interlaced yarns in woven composites brings about challenges to accurately predict their mechanical behavior. Multiscale computational methods, often based on computational homogenization, have therefore been established to address the complexity in modeling woven composites. But for computational homogenization of woven composites, one needs to consider the microscale mechanical properties at every point inside a mesoscale unit cell. Based on the possible range of microstructural features, a plethora of research exists to generate random distributions of fibers in a microscopic representative volume element (RVE) and predict elastic properties using numerical methods, such as the finite element method [1,2]. But there is still a requirement to observe the whole possible microstructural design space based on any possible loading case and architecture in order to reach a generic model. Recently,
应用人工神经网络和微力学分析预测单向复合材料弹性性能
复合材料设计行业的核心需求是从复合材料的组成特性和微观力学信息来预测复合材料的弹性行为。在这种情况下,机织复合材料中交织纱线的复杂结构给准确预测其力学行为带来了挑战。因此,建立了基于计算均质化的多尺度计算方法来解决编织复合材料建模的复杂性。但对于编织复合材料的计算均质化,需要考虑中尺度单元胞内每一点的微尺度力学性能。基于微观结构特征的可能范围,已有大量研究在微观代表性体积单元(RVE)中生成纤维的随机分布,并使用数值方法(如有限元法)预测弹性性能[1,2]。但是,为了得到一个通用的模型,仍然需要观察基于任何可能的载荷情况和结构的整个可能的微观结构设计空间。最近,
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