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Twist liveliness of spun yarns and the effects on knitted fabric spirality.

机译:细纱的捻度活泼性及其对针织物螺旋度的影响。

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摘要

This thesis is concerned with a systematic study of the measurement of yarn twist liveliness and of its quantitative relationship with single jersey fabric spirality.;Firstly, investigations were carried out on a methodology and apparatus to be used for evaluating the twist liveliness of spun yarns by the wet snarling method. Optimisation of both the methodology and apparatus was undertaken so that the procedure could be applied with confidence in a standard and practical manner. Examined through intra and inter laboratory studies, it has been shown to produce accurate and repeatable measurements of twist liveliness over a range of 100% cotton ring spun yarn counts from 29.5tex to 84.4tex.;As part of any investigations to develop systems that can minimise the residual torque induced in ring spun yarns, it is essential to quantify and accurately evaluate the yarn twist liveliness in a standard manner. The established methodology and apparatus were used to measure twist liveliness of 100% cotton modified Nu-Torque(TM) singles ring yarn, in comparison with conventional ring yarns. The effects of twist, fibre type and downstream processing on the twist liveliness of the yarns were examined. An analysis of the reduced twist liveliness was carried out in a production trial during which the spinning system was in control and was therefore stable.;The effect of twist liveliness on the spirality of single jersey fabrics has long been recognised and spirality has been investigated previously by use of empirical methods. The present study has used, for the first time, an artificial neural network to determine the relationship between the measured twist liveliness of spun yarns and the degree of spirality of pure cotton single jersey fabrics knitted from the yarns. Multiple regression and artificial neural network models for the prediction of the degree of fabric spirality from measured twist liveliness and other contributing parameters were established. It was found that both models have a high ability to predict the amount of fabric spirality although the neural network model produced slightly superior results.;The methodology in the study measures twist liveliness by counting the number of snarl turns formed in yarn samples under test. In order to increase the efficiency of the apparatus in use, investigations were conducted with a view to replacing the manual counting of the turns by an automated method using image processing techniques. An image acquisition unit was constructed to obtain images of the yarn samples. Fast Fourier Transform (FFT) and Adaptive Orientated Orthogonal Projective Decomposition (AOP) were used to extract the snarling characteristics and record the number of snarl turns from the captured images. Statistical analyses confirmed that the measurements obtained by the automated method agreed well with the original method of using a twist tester to count the number of snarls for low snarling yarns of medium counts.
机译:本论文的目的是对纱线捻度活度的测定及其与单面针织物螺旋度的定量关系进行系统研究。首先,对用于评价短纤纱捻度活度的方法和装置进行了研究。湿咆哮法。进行了方法和设备的优化,以便可以有信心地以标准和实用的方式应用该程序。经过实验室内部和实验室间研究的检验,它已显示出在29.5tex至84.4tex范围内的100%棉环锭细纱支数范围内可以精确,可重复地测量捻度的活度;作为开发可为了最大程度地减少环锭纺纱中产生的残余扭矩,必须以标准方式量化并准确评估纱线的捻度活度。与常规的环锭纱相比,所建立的方法和设备被用于测量100%棉改性的Nu-Torque TM单纱环锭纱的捻度活度。研究了捻度,纤维类型和下游加工对纱线捻度活度的影响。在生产试验中对降低的捻度活度进行了分析,在该试验中,纺纱系统处于受控状态,因此很稳定。捻度活度对单面针织面料的螺旋度的影响早已被人们认识,并且先前已经研究了螺旋度通过使用经验方法。本研究首次使用人工神经网络来确定测得的细纱捻度活度与用该纱编织的纯棉单面针织物的螺旋度之间的关系。建立了多元回归和人工神经网络模型,用于根据测得的捻度活度和其他贡献参数来预测织物的螺旋度。结果发现,尽管神经网络模型产生的效果略好,但两种模型都具有较高的预测织物螺旋度的能力。研究中的方法是通过计算被测纱线样品形成的缠结匝数来测量捻度的活度。为了提高使用设备的效率,进行了研究,目的是通过使用图像处理技术的自动化方法来代替手动计数匝数。构造图像获取单元以获得纱线样品的图像。使用快速傅立叶变换(FFT)和自适应定向正交投影分解(AOP)来提取咆哮声特征,并从捕获的图像中记录咆哮匝数。统计分析证实,通过自动化方法获得的测量结果与使用捻度测试仪对中等支数低咆哮纱线的咆哮数进行计数的原始方法非常吻合。

著录项

  • 作者

    Murrells, Charlotte.;

  • 作者单位

    Hong Kong Polytechnic University (Hong Kong).;

  • 授予单位 Hong Kong Polytechnic University (Hong Kong).;
  • 学科 Textile Technology.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 239 p.
  • 总页数 239
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:39:00

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