Bio-based material integration into computational form-finding tools by introducing tensile properties in the case of bacterial cellulose-based composites

G. Turhan, Güzden Varinlioğlu, M. Bengisu
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Abstract

Recent studies in digital design and fabrication processes focus on the potentials of using biological systems in nature as mathematical models or more recently as bio-based materials and composites in various applications. The reciprocal integration between mechanical and digital media for designing and manufacturing bio-based products is still open to development. The current digital form-finding scripts involve an extensive material list, although bio-based materials have not been fully integrated yet. This paper explores a customized form-finding process by suggesting a framework through mechanically informed material-based computation. Bacterial cellulose, an unconventional yet potential material for design, was explored across its biological growth, tensile properties, and the integration of datasets into digital form finding. The initial results of the comparison between digital form finding with conventional materials versus mechanically informed digital form finding revealed a huge difference in terms of both the resulting optimum geometry and the maximum axial forces that the geometry could actually handle. Although this integration is relatively novel in the literature, the proposed methodology has proven effective for enhancing the structural optimization process within digital design and fabrication and for bringing us closer to real-life applications. This approach allows conventional and limited material lists in various digital form finding and structural optimization scripts to cover novel materials once the quantitative mechanical properties are obtained. This method has the potential to develop into a commercial algorithm for a large number of bio-based and customized prototypes within the context of digital form finding of complex geometries.
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在细菌纤维素基复合材料的情况下,通过引入拉伸性能,将生物基材料集成到计算找形工具中
最近对数字设计和制造过程的研究集中在利用自然界中的生物系统作为数学模型或最近作为生物基材料和复合材料在各种应用中的潜力。机械和数字媒体之间的相互集成用于设计和制造生物基产品仍有待发展。目前的数字形式查找脚本涉及广泛的材料列表,尽管生物基材料尚未完全集成。本文通过提出一个基于机械信息的基于材料的计算框架,探索了一个定制的寻形过程。细菌纤维素是一种非传统但具有设计潜力的材料,它的生物生长、拉伸性能以及将数据集集成到数字形式查找中进行了探索。传统材料的数字寻形与机械信息的数字寻形之间的初步比较结果显示,在最终的最佳几何形状和几何形状实际可以处理的最大轴向力方面存在巨大差异。虽然这种集成在文献中相对新颖,但所提出的方法已被证明有效地增强了数字设计和制造中的结构优化过程,并使我们更接近实际应用。这种方法允许各种数字形式查找和结构优化脚本中的传统和有限材料列表涵盖新材料,一旦获得定量力学性能。这种方法有潜力发展成为一种商业算法,用于大量基于生物的和定制的原型,在复杂几何形状的数字形式查找的背景下。
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来源期刊
CiteScore
3.20
自引率
17.60%
发文量
44
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