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Machine Learning Approach for Prediction of Crimp in Cotton Woven Fabrics

机译:棉纺织织物预测机器学习方法

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摘要

The interlacements of yarns in woven fabrics cause the yarn to follow a wavy path that produces crimp. Off-loom width of the fabric is determined by the percentage of the induced crimp. Therefore, the final width of the fabric will be less or surplus than required if crimp percentage is not precisely measured. Both excessive or recessive fabric width is unwanted and leads to huge loss of cost (profit), manufacturing time, energy (electricity) and ultimately loss of competition. Crimp percentage in yarns is determined by physically measuring the extra yarn length or by predicting it based on fabric structural parameters. Existing methods are mainly post-production, time and resource intensive that require specialized skills and tangible fabric samples. The proposed framework applies supervised machine learning for crimp prediction to cater for the limitations of the existing techniques. The framework has been cross-validated and has prediction accuracy (R2) of 0.86 and 0.79 for warp and weft yarn crimp respectively. It has prediction accuracy (R2) for warp and weft yarns crimp of 0.99 and 0.81 respectively for the unseen industrial dataset. The proposed prediction model shows better performance when compared with an existing standard system.
机译:织物中纱线的界限导致纱线遵循产生卷曲的波浪路径。织物的偏离宽度宽度由诱导卷曲的百分比决定。因此,如果未精确测量压接百分比,则织物的最终宽度将少于或盈余。过度或隐性面料宽度都是不受欢迎的,导致成本(利润),制造时间,能量(电力)的巨大损失,最终丧失竞争。纱线中的卷曲百分比是通过物理测量额外的纱线长度或通过基于织物结构参数来预测其来确定的。现有方法主要是生产后,时间和资源密集型,需要专门的技能和有形布料样本。该建议的框架将监督机器学习应用于压接预测,以满足现有技术的局限性。该框架已经交叉验证,并且分别具有0.86和0.79的预测精度(R2),分别用于翘曲和纬纱卷曲卷曲。它具有分别为无奈工业数据集的经纱和纬纱卷曲的预测精度(R2)为0.99和0.81。与现有标准系统相比,所提出的预测模型显示出更好的性能。

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