Analysis and tensile-tear properties of abraded denim fabrics depending on pattern relations using statistical and artificial neural network models

被引:0
|
作者
Kadir Bilisik
Oguz Demiryurek
机构
[1] Erciyes University,Department of Textile Engineering, Engineering Faculty
来源
Fibers and Polymers | 2011年 / 12卷
关键词
Denim fabric; Structural pattern; Fabric abrasion; Fabric tensile strength; Fabric tear strength; Artificial neural network and regression analyses;
D O I
暂无
中图分类号
学科分类号
摘要
The aim of this study is to develop new pattern denim fabrics and characterize the mechanical properties of these fabrics after abrasion load. Furthermore, tensile and tear strengths of these fabrics have been analysed by using the Artificial Neural Network (ANN) and statistical model. All denim fabrics were first abraded and subsequently tensile and tearing tests were applied to the abraided fabrics seperately. Actual data generated from the tests were analyzed by ANN and regression model. The regression model has shown that tensile strength properties of the abraded large structural pattern denim fabrics are generally low compared to that of the small structural pattern and traditional denim fabrics. On the other hand, when the abrasion cycles are increased tensile properties of all denim fabrics are generally decreased. Tearing strength of weft and warp in the abraded large structural pattern denim fabrics are between small structural pattern and traditional denim fabric. On the other hand, when the abrasion cycles are increased tearing strength properties in the weft and warp for all denim fabrics are generally decreased. The results from ANN and regression models were also compared with the measured values. It is concluded that almost all values from ANN are accurately predicted compared with those of the regression model. Therefore, we suggest that both methods can be used in this study as viable and reliable tools.
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页码:422 / 430
页数:8
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