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Prognosticating the Shade Change after Softener Application using Artificial Neural Networks

机译:使用人工神经网络预测软化剂应用后的阴影变化

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Softener application on fabric surface facilitates the process and wear abilities of the fabric. However, the application of softeners and other functional finishes influence the color of dyed fabrics, which results in shade change in the final finished fabrics. This article presents the method of intelligent prediction of the shade change of dyed knitted fabrics after finishing application by using artificial neural networks (ANNs). Individual neural networks are trained for the prediction of delta values (ΔL, Δa, Δb, Δc, and Δh) of finished samples with the help of reflectance values of the knitted dyed samples along with color, shade percentage, and finishing concentrations, which were selected as input parameters. The trained ANNs were validated through “holdout” and “cross-validation” techniques. The trained ANNs were combined to develop the model for shade prediction. The developed system can predict the shade change with &90% accuracy and help to decrease the rework and reprocessing in the wet processing industries.
机译:织物表面上的软化剂应用有助于织物的工艺和耐磨能力。然而,柔软剂和其他功能表面的应用影响了染色织物的颜色,这导致最终成品织物的阴影变化。本文介绍了通过使用人工神经网络(ANNS)完成施用后染色针织织物的智能预测方法。在针织染色样品的反射值以及颜色,阴影百分比和整理浓度的帮助下,针对成品样品的Δ值(ΔL,ΔA,ΔB,ΔC和ΔC和ΔC和ΔH)培训进行预测选择为输入参数。训练有素的ANN通过“HOLDOUT”和“交叉验证”技术验证。培训的ANNS被组合以开发遮荫预测模型。开发系统可以预测& 90%的准确性,并有助于减少湿法加工行业的返工和再处理。

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