4.7 Article

Fiber orientation effects on ultra-high performance concrete formed by 3D printing

期刊

CEMENT AND CONCRETE RESEARCH
卷 143, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.cemconres.2021.106384

关键词

Fiber orientation; 3D printing; Ultra-high performance concrete; Mechanical properties; Image analysis

资金

  1. Australian Research Council [LE170100168, DP210101680, DE180101587]
  2. Australian Research Council [DE180101587] Funding Source: Australian Research Council

向作者/读者索取更多资源

This study quantitatively investigated the orientation distribution of steel fibers in 3D printed ultra-high performance concrete, revealing that smaller nozzle size and higher fiber volume fraction significantly improved fiber alignment parallel to printing direction, resulting in superior mechanical performance of the printed specimens compared to mold-cast specimens.
Despite the growing interest in 3D concrete printing, its current progress is limited by reinforcing methods. Inclusion of steel fibers is a potential reinforcing solution; however, the effect of printing process on orientation of the fibers is still unknown. This study aims to quantitatively investigate the orientation distribution of steel fibers in 3D printed ultra-high performance concrete. The effects of extrusion nozzle size, Cartesian print speed, and fiber volume fraction on the orientation of fibers were evaluated using digital image analysis. The consequent effects of the fiber orientation on the mechanical properties of the 3D-printed specimens were also determined. The results were compared with those of the conventionally mold-cast specimens. The results revealed that the smaller nozzle size and higher fiber volume fraction significantly enhanced the fiber alignment parallel to the printing direction. This preferential fiber alignment led to superior mechanical performance of the printed specimens to the mold-cast specimens.

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