• A method is proposed to generate 3D high-density wood fiber network (WFN) models. • The numerically generated WFN microstructures can reach a porosity as low as 21.5%. • It is a simple and efficient geometrical method with open-source code. • Fiber segmentation, local fiber orientation, WFNs with molded shapes can be obtained. • The optical scattering of WFN composites is simulated using the generated 3D models. Realistic 3D microstructure models of wood fiber networks (WFNs, e.g., paper, molded fibers, hot-pressed fibers, etc.) are of interest for numerical modeling of mechanical, optical, and other physical properties. One challenge is to numerically describe 3D high-density WFN (HD-WFN) models with complex fiber shapes without fiber overlapping. An efficient method is proposed to generate 3D HD-WFN microstructures with porosities as low as 21.5% while without fiber overlapping. The HD-WFN microstructures are obtained by compressing an initially sparse structure using a geometrically designed 3D displacement field. The sparse structure can be optimized to obtain a very low-porosity HD-WFN by reducing the local fiber clustering. The method can generate HD-WFNs with designated shapes (e.g., molded shapes) and varied structural parameters, including fiber width, orientation, location, and material thickness. Each interfiber bond and local material axis in the HD-WFN models can be determined for numerical simulation of properties. The optical scattering of transparent HD-WFN models (polymer matrix composites, transparent paper) is numerically studied using ray tracing methods. The open-source code is available on GitHub, and it can be used to obtain a large dataset for deep learning modeling.
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Bin Chen
Erfan Oliaei
Lars A. Berglund
Materials & Design
KTH Royal Institute of Technology
Linköping University
Wallenberg Wood Science Center
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Chen et al. (Sun,) studied this question.
www.synapsesocial.com/papers/69ca12d4883daed6ee0950df — DOI: https://doi.org/10.1016/j.matdes.2026.115937
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