He M, Perrot C, Guilleminot J, Leroy P, Jacqus G
Laboratoire Modélisation et Simulation Multi Echelle, MSME UMR 8208 CNRS, Université Paris-Est, 5 Boulevard Descartes, 77454 Marne-la-Vallée, France.
Department of Civil and Environmental Engineering, Pratt School of Engineering, Duke University, P.O. Box 90287, 121 Hudson Hall, Durham, North Carolina 27708-0287, USA.
J Acoust Soc Am. 2018 Jun;143(6):3283. doi: 10.1121/1.5040479.
This work is concerned with the multiscale prediction of the transport and sound absorption properties associated with industrial glass wool samples. In the first step, an experimental characterization is performed on various products using optical granulometry and porosity measurements. A morphological analysis, based on scanning electron imaging, is further conducted to identify the probability density functions associated with the fiber angular orientation. The key morphological characterization parameters of the microstructure, which serve as input parameters of the model, include the porosity, the weighted volume diameter accounting for both lengths and diameters of the analyzed fibers (and therefore the specific surface area of the random fibrous material), and the preferred out-of-plane fiber orientation generated by the manufacturing process. A computational framework is subsequently proposed and allows for the reconstruction of an equivalent fibrous network. A fully stochastic microstructural model, parameterized by the probability laws inferred from the database, is also proposed herein. Multiscale simulations are carried out to estimate transport properties and sound absorption. With no adjustable parameter, the results accounting for ten different samples obtained with various processing parameters are finally compared with the experimental data and used to assess the relevance of the reconstruction procedures and the multiscale computations.
这项工作关注与工业玻璃棉样品相关的传输和吸声特性的多尺度预测。第一步,使用光学粒度分析和孔隙率测量对各种产品进行实验表征。基于扫描电子成像进行形态分析,以进一步确定与纤维角取向相关的概率密度函数。作为模型输入参数的微观结构的关键形态表征参数包括孔隙率、考虑分析纤维长度和直径的加权体积直径(从而随机纤维材料的比表面积)以及制造过程产生的面外纤维优先取向。随后提出了一个计算框架,可用于重建等效纤维网络。本文还提出了一个由从数据库推断出的概率定律参数化的全随机微观结构模型。进行多尺度模拟以估计传输特性和吸声。在没有可调参数的情况下,最终将考虑通过各种加工参数获得的十个不同样品的结果与实验数据进行比较,并用于评估重建程序和多尺度计算的相关性。