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Forming Regression-based Mathematical Models to Predict PET POY Yarn Properties in the Case of Changing Production Parameters

机译:形成基于回归的数学模型,以在生产参数变化的情况下预测PET POY纱线的性能

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Abstract This study comprises investigations of the effect of PET (polyethylene terephthalate) POY (poly oriented yarn) production parameters on the crystallinity degree, which is involved in the structure of the yarn and performing prediction equations based on a non-linear regression mathematical model. Although there are many production parameters which affect the yarn properties, quenching air temperature, quenching air speed and winding speed were selected for the POY process. Yarn samples were produced in three different levels of each of selected parameters and tested to investigate how the crystallinity degree changes. Measured properties of PET POY were tensile strength, tensile strain, draw force, crystallinity degree based on differential scanning calorimetry technique, dye uptake (K/S), brightness and boiling water shrinkage. In order to obtain empirical formulas for predicting the change of POY properties with respect to selected production parameters, the yarns were produced in 27 different combinations. The starting point of the empirical equation is based on a completely randomized variance analyses model. The coefficients of the curves fitted were computed by means of non-linear regression analysis. R^sup 2^ values for these curves were observed to be highly reliable being about 0.8.
机译:摘要这项研究包括研究PET(聚对苯二甲酸乙二酯)POY(聚取向纱线)生产参数对结晶度的影响,结晶度与纱线的结构有关,并基于非线性回归数学模型执行预测方程。尽管有许多影响纱线性能的生产参数,但POY工艺选择了淬火温度,淬火速度和卷绕速度。在每个选定参数的三个不同水平下生产纱线样品,并进行测试以研究结晶度如何变化。 PET POY的测量性能为抗张强度,拉伸应变,拉伸力,基于差示扫描量热技术的结晶度,染料吸收率(K / S),亮度和沸水收缩率。为了获得用于预测POY性能相对于所选生产参数的变化的经验公式,以27种不同的组合生产了纱线。经验方程式的起点是基于完全随机的方差分析模型。通过非线性回归分析来计算拟合曲线的系数。观察到这些曲线的Rsup 2 ^值是高度可靠的,约为0.8。

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