PREDICTING YARN QUALITY PROPERTIES VIA OVERCOMING THE MULTICOLLINEARITY OF COTTON FIBER PROPERTIES

I. Ebaido, H. Meabed
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Abstract

When predicting yarn quality properties, the collinearity or common variance of cotton fiber characteristics as predictors, result in unreal regression models. The approach of this study is using Principle Component Analysis (PCA) to avoid this issue by extracting independent factors in their effect from each other summarizes cotton fiber properties. Four lint cotton grades of five of Egyptian cotton varieties belong to Extra-long (Giza 88 and Giza 92) and Long staple (Giza 86, Giza 90 and Giza 95) classes used to perform fiber tests. Cotton Classification System (CCS-V5.3) used to measure cotton fiber characteristics as predictors. Yarn strength in terms of Lea product, single yarn strength and yarn unevenness of Ne 40 and 60 counts of ring spun yarns were the dependent variables. The results showed significant intercorrelations matrix among CCS measurements. The initial solution extracted only three factors that have eigenvalues more than 1.00. These 3 factors accounted for 89.716 % of the common variance shared by all measurements. The communalities or % variance in each cotton fiber measurement of CCS accounted for by the three factors was not the same. The 3 factors as predictors could predict yarn quality characteristics significantly, and with high contributions (% R 2 ). But % R 2 valued less than that of ordinary regression models. This audit is a satisfactory improvement to predict yarn quality characteristics from cotton fiber properties accurately.
克服棉纤维性能多重共线性预测纱线质量性能
在预测纱线质量性能时,以棉纤维特性的共线性或共方差作为预测因子,会导致回归模型不真实。本研究的方法是利用主成分分析(PCA),通过提取相互影响的独立因素来总结棉纤维的性能,从而避免了这一问题。五种埃及棉花品种的四种棉绒等级属于超长(吉萨88和吉萨92)和长绒棉(吉萨86、吉萨90和吉萨95),用于进行纤维测试。棉花分类系统(CCS-V5.3)用于测量棉纤维特性作为预测指标。因变量为环锭纱Lea产品的纱线强度、Ne 40支和Ne 60支的单支纱线强度和纱条不匀。结果表明,CCS测量值之间存在显著的相关矩阵。初始解只提取了特征值大于1.00的三个因子。这3个因素占所有测量共有方差的89.716%。3个因素对各棉纤维CCS测量的群落或百分比方差的影响不尽相同。这3个因子作为预测因子对纱线质量特性的预测效果显著,且贡献率较高(% r2)。但% r2值小于普通回归模型。从棉纤维的性能来准确预测纱线的质量特性,是一次令人满意的改进。
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