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Thermal comfort properties of cool-touch nylon and common nylon knitted fabrics with different fibre fineness and cross-section

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journal contribution
posted on 2021-01-01, 00:00 authored by Yang Yang, Xin Yu, Xungai Wang, Xin LiuXin Liu, Peihua Zhang
Cool-touch nylon multi-filament yarns with good heat transfer performance are widely used in the development of knitted
fabrics for summer and sports clothing. However, the physical properties of cool-touch nylon fibres, and the effect of
fineness and cross-section on comfort-related properties of their knitted fabrics are still not well understood. In this study,
the physical properties of cool-touch nylon fibres and common nylon fibres, and comfort properties of knitted fabrics from
both fibre types were measured and compared. It was found that cool-touch nylon fibres have better moisture
absorption, but slightly lower crystallinity than common nylon fibres. Regarding the fibre fineness and cross-section of
cool-touch nylon and common nylon, knitted fabrics showed a similar dependence on thermal comfort properties.
Cool-touch nylon fabrics had increased wicking capacity, thermal transfer, and cooling properties, but poorer drying
performance and moisture permeability compared to common nylon fabrics. It was concluded that using nylon
multi-filament yarns made up of finer filaments and cool touch filaments is an effective way to develop thermal-wet
comfort knitted fabrics for summer and sports clothing applications.

History

Journal

Industria Textila

Volume

72

Issue

2

Pagination

217 - 224

Publisher

National Research and Development Institute for Textile and Leather, Bucharest

Location

Bucharest, Romania

ISSN

1222-5347

Language

English

Publication classification

C1 Refereed article in a scholarly journal

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