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논문 기본 정보

자료유형
학술저널
저자정보
Cho, Gilsoo (Departement of Clothing and Textiles, Yonsei University) Casali, John G. (Department of Industrial and Systems Engineering, Virginia Tech, Blacksburg. VA) Yi, Eunjou (Departement of Clothing and Textiles, Yonsei University)
저널정보
한국섬유공학회 Fibers and Polymers Fibers and polymers 제2권 제4호
발행연도
2001.1
수록면
196 - 202 (7page)

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In order to investigate the relationship between subjective sensation for fabric sound and touch and the objective measurements, eight different apparel fabrics were selected as specimens. Sound parameters of fabrics including level pressure of total sound (LPT), level range (ΔL), and frequency differences (Δf) and mechanical properties by Kawabata Evaluation System (KES) were obtained. For subjective evaluation, seven aspects of the sound (softness, loudness, pleasantness, sharpness, clearness, roughness, and highness) and eight of the tough (hardness, smoothness, fineness, coolness, pliability, crispness, heaviness, and thickness) were rated using semantic differential scale. Polyester ultrasuede was evaluated to sound softer and more pleasant while polyester taffeta to sound louder and rougher than any other fabrics. Wool fabric such as worsted and woolen showed similar sensation for sound but differed in some touch sensation in that woolen was coarseast, heaviest, and thickest in touch. In the prediction model for sound sensation, LPT affected positively subjective roughness and highness as well as loudness, while ΔL was found as a parameter related positively with softness and pleasantness. Touch sensation was explained by some of mechanical properties such as surface, compressional, shear, and bending properties implying that a touch sensation could be expressed by a variety of properties.

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