Developing a data-driven filament shape prediction model for 3D concrete printing

Ali Alhussain, José P. Duarte, Nathan C. Brown
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Abstract

With the growing global need for housing and infrastructure, 3D concrete printing (3DCP) has emerged as an innovative construction method offering several potential benefits including design flexibility, speed, and sustainability. However, enhancing the reliability of 3DCP involves managing a variety of parameters that influence various aspects of the 3D printed structure. Process parameters like nozzle velocity, nozzle diameter, nozzle height, and material flow velocity have a major impact on the structural stability and filament shape. This project aimed to develop fast and accurate data-driven models for predicting and classifying filament shape based on process parameters. A print experiment systematically varied process parameters across 144 samples. The resulting filament geometry (width, height, contact width) was measured and classified by quality. Models were trained on this data to predict filament width, contact width, filament height, and classify filaments. These models can be utilized with any buildable material - a material with a high enough yield stress to bear the weight of upper layers without significant deformation. This condition does not restrict this study’s scope as it is a prerequisite for all 3DCP applications. The models’ robustness and generalizability were confirmed through validation on literature data across various printable materials and setups. These data-driven models can aid in optimizing parameters, generating variable width filaments, and printing non-planar layers. By linking print inputs to filament outputs, this comprehensive modeling approach advances 3DCP research for more reliable and versatile concrete printing.
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为 3D 混凝土打印开发数据驱动的长丝形状预测模型
随着全球对住房和基础设施的需求日益增长,三维混凝土打印(3DCP)已成为一种创新的建筑方法,具有设计灵活、速度快和可持续发展等潜在优势。然而,要提高 3DCP 的可靠性,需要对影响 3D 打印结构各个方面的各种参数进行管理。喷嘴速度、喷嘴直径、喷嘴高度和材料流速等工艺参数对结构稳定性和长丝形状有重大影响。本项目旨在开发快速准确的数据驱动模型,用于根据工艺参数预测长丝形状并对其进行分类。打印实验系统地改变了 144 个样品的工艺参数。由此产生的长丝几何形状(宽度、高度、接触宽度)被测量并按质量分类。根据这些数据对模型进行训练,以预测长丝宽度、接触宽度、长丝高度,并对长丝进行分类。这些模型可用于任何可构建材料,即具有足够高屈服应力,能够承受上层重量而不发生明显变形的材料。这一条件并不限制本研究的范围,因为它是所有 3DCP 应用的先决条件。通过对各种可打印材料和设置的文献数据进行验证,确认了模型的稳健性和通用性。这些数据驱动的模型有助于优化参数、生成可变宽度的长丝和打印非平面层。通过将打印输入与长丝输出联系起来,这种全面的建模方法推动了 3DCP 研究,从而实现更可靠、更多功能的混凝土打印。
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