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Engineering the drapability of textile fabrics

机译:设计纺织面料的悬垂性

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The drape attributes of fabrics, number of folds, depth of folds and evenness of folds were measured together with the drape coefficient. The relationship between these measurements and the subjective evaluation of the fabric drape was modelled for each end-use on a neural network using back propagation, which can correctly predict the grades of 90 per cent of the samples. The relationship between the drape attributes and fabric bending, shear and weight was also modelled using neural networks. It was found that using the natural logarithm of the material property divided first by the weight of the fabric produced the most predictive model Together, these models provide a powerful predictive tool to determine both the drape attributes and the drape grade from the mechanical properties of a fabric. The accuracy of the prediction of this system was found to be 83 per cent overall. Combining this with a novel feedback system, the drape grade or drape attributes of a fabric can be modified to fit the customer requirements and then the changes to the material properties required to achieve them can be determined.
机译:测量织物的悬垂性,褶皱数,褶皱深度和褶皱均匀度以及悬垂系数。这些测量值与织物悬垂性的主观评估之间的关系是通过反向传播在神经网络上针对每个最终用途建模的,这可以正确预测90%的样本等级。还使用神经网络对悬垂性与织物弯曲,剪切和重量之间的关系进行建模。结果发现,首先使用材料特性的自然对数除以织物的重量,即可得出最可预测的模型。这些模型共同提供了一个强大的预测工具,可根据织物的机械性能来确定悬垂性和悬垂等级布。发现该系统的预测准确性总体上为83%。将其与新颖的反馈系统结合使用,可以修改织物的悬垂等级或悬垂特性以适应客户要求,然后可以确定实现它们所需的材料特性的变化。

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