首页> 外文期刊>Journal of the Mechanics and Physics of Solids >Generating virtual textile composite specimens using statistical data from micro-computed tomography: ID tow representations for the Binary Model
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Generating virtual textile composite specimens using statistical data from micro-computed tomography: ID tow representations for the Binary Model

机译:使用来自微计算机断层扫描的统计数据生成虚拟纺织品复合材料样本:二元模型的ID拖曳表示

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摘要

A Monte Carlo algorithm is defined for generating replicas of textile composite specimens that possess the same statistical characteristics as specimens imaged using high resolution computed tomography. The textile reinforcement is represented by one-dimensional tow loci in three-dimensional space, which are easily incorporated into the Binary Model of textile composites. A tow locus is expressed as the sum of non-stochastic, periodic variations in the coordinates of the tow centroid and stochastic, non-periodic deviations. The non-stochastic variations have period commensurate with the dimensions of the unit cell of the textile, while the stochastic deviations, which describe geometrical defects, exhibit correlation lengths that may be incommensurate with the unit cell. The model is calibrated with data deduced in prior work from computed tomography images. The calibration obviates the need for assuming any ideal shape functions for the tow loci, which can take very general form. The approach is therefore valid for a wide range of textile architectures. Once calibrated, a Markov Chain algorithm can generate numerous stochastic replicas of a textile architecture very rapidly. These virtual specimens can be much larger than the real specimens from which the data were originally gathered, a necessary feature when real specimen size is limited by the nature of high resolution computed tomography. The virtual specimen generator is illustrated using data for an angle interlock weave.
机译:定义了蒙特卡洛算法,用于生成纺织品复合标本的副本,这些副本具有与使用高分辨率计算机断层扫描成像的标本相同的统计特征。纺织品补强用三维空间中的一维牵引轨迹表示,可以轻松地将其合并到纺织品复合材料的二元模型中。拖曳轨迹表示为拖曳质心坐标中非随机,周期性变化与随机,非周期性偏差之和。非随机变化具有与纺织品的单位单元的尺寸相对应的周期,而描述几何缺陷的随机偏差表现出可能与单位单元不相称的相关长度。使用从先前的工作中从计算机断层扫描图像得出的数据对模型进行校准。校准消除了对于牵引轨迹假设任何理想形状函数的需要,这可以采取非常通用的形式。因此,该方法适用于多种纺织品体系。校准后,马尔可夫链算法可以非常快速地生成纺织结构的许多随机副本。这些虚拟标本可能比原始收集数据的真实标本大得多,这是当真实标本的大小受高分辨率计算机断层扫描的性质限制时的必要功能。使用角度互锁编织的数据说明了虚拟样本生成器。

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