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논문 기본 정보

자료유형
학술대회자료
저자정보
Sukpyo Kang (Woosuk University) Hyeju Kang (Woosuk University) Eunmi Jin (Sijigam Co)
저널정보
한국색채학회 AIC 2017 Jeju 2017 AIC CONGRESS
발행연도
2017.10
수록면
367 - 370 (4page)

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초록· 키워드

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Concrete is used as a major building material due to its excellent durability and strength. Recently, because of the natural image of the finishing material, it is used not only as a structural material but also as an exterior material. However, due to the unique cold image and limited color reproduction, the area of use as the exterior material is somewhat limited.
Therefore, this study intends to conduct basic research to reproduce natural colors when forming concrete finishing materials. Four additives were applied to make color concrete. The applied additives are industrial wastes such as red mud, carbon black, bottom ash and natural loess. The purpose of this study is to investigate the color distribution characteristics of concrete finishing materials by using industrial wastes as pigments. In particular, this study is significant in that it provides environment - friendly concrete finishing materials in terms of recycling industrial waste.
The results of the analysis are as follows. When four wastes were added, the hue range was distributed from 2.5YR to 5Y. Among the additives, red mud showed the most red color, followed by natural loess, bottom ash and carbon black. Lightness showed the highest value with addition of natural loess, followed by red mud 3-5, bottom ash 3-4 and carbon black 2 or less. In the case of chroma, red mud showed chroma of 2 or more and less than 6 according to the addition ratio, followed by natural loess, bottom ash and carbon black in the order of chroma.

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ABSTRACT
INTRODUCTION
THEORY
EXPERIMENTAL
RESULTS AND DISCUSSION
CONCLUSION
REFERENCES

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UCI(KEPA) : I410-ECN-0101-2019-651-000500710