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Investigation into the curling behavior of single jersey weft-knitted fabrics and its prediction using neural network model

机译:单面针织纬编织物卷曲行为的研究及其神经网络模型的预测

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摘要

This research investigates the effect of fiber, yarn, and fabric parameters on curling phenomenon of single jersey weft-knitted fabrics which is interpreted to have curling surface in both course and wale direction. Taguchi's experimental design is used to estimate the optimum process conditions and to examine the individual effects of all controllable factors on curling one by one. The controllable factors are blending ratio of polyester to cotton fiber, yarn twist and count, fabric structure, knit density, and relaxation time. Results show that fabric structure and knit density have the most dominant effect on the fabric curling. The optimum conditions of minimum curling values were also determined. Finally, the curling surface in course and wale direction as a two features of curling phenomenon was predicted using artificial neural network which selects scale conjugate gradient learning algorithm based on process parameters of single jersey weft-knitted fabrics. Our findings confirm the good capability of artificial neural network algorithm to predict these features.
机译:这项研究调查了纤维,纱线和织物参数对单面针织纬编织物卷曲现象的影响,该织物被解释为在横行和纵行方向都具有卷曲表面。 Taguchi的实验设计用于估算最佳工艺条件,并检查所有可控因素对卷发的单个影响。可控制的因素是聚酯与棉纤维的混合比,纱线捻度和支数,织物结构,针织密度和松弛时间。结果表明,织物结构和编织密度对织物卷曲有最主要的影响。还确定了最小卷曲值的最佳条件。最后,利用人工神经网络预测了卷曲过程中沿纵行方向和纵行方向的卷曲特征,这是基于单面针织纬编织物的工艺参数选择比例共轭梯度学习算法的人工神经网络。我们的发现证实了人工神经网络算法预测这些特征的良好能力。

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