基于机器学习的人工神经网络预测弹力织物的收缩行为

Meenakshi Ahirwar, B. Behera
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引用次数: 2

摘要

弹力织物提供了良好的成形性,不限制身体的运动,增加张力水平。穿着者对服装面料的主要期望是高水平的机械舒适性和良好的美学。弹力织物的缩水率预测是一个非常复杂和未开发的课题。目前还没有能够有效预测弹力织物收缩率的公式。本文的目的是建立一种基于人工神经网络的弹性织物收缩预测模型。利用微型织布机,在工业上生产了不同的纬向弹力织物(莱卡包芯纱)。采用人工神经网络方法建立模型,首先对数据集进行训练,然后在测试数据集上对模型进行测试。建立了经纱支数、纬纱支数、坯料PPI、坯料EPI、坯料宽度等因素对脱泡宽度的相关性。
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Prediction of Shrinkage Behavior of Stretch Fabrics Using Machine-Learning Based Artificial Neural Network
Stretch fabric provides good formability and does not restrict the movement of the body for increased tension levels. The major expectations of a wearer in an apparel fabric are a high level of mechanical comfort and good aesthetics. The prediction of shrinkage in stretch fabric is a very complex and unexplored topic. There are no existing formulas that can effectively predict the shrinkage of stretch fabrics. The purpose of this paper is to develop a novel model based on an artificial neural network to predict the shrinkage of stretch fabrics. Different stretch fabrics (core-spun lycra yarn) with stretch in the weft direction were manufactured in the industry using a miniature weaving machine. A model was built using an artificial neural network method, including training of the data set, followed by testing of the model on the test data set. The correlation of factors, such as warp count, weft count, greige PPI, greige EPI, and greige width, was established with respect to boil-off width.
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