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Tactile Comfort Prediction of Functional Fabrics from Instrumental Data Using Intelligence Systems

机译:智能系统仪器数据功能织物的触觉舒适预测

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摘要

Subjective and objective evaluations of the handle of textile materials are very important to describe its tactile comfort for next-to-skin goods. In this paper, the applicability of artificial neural-network (ANN) and adaptive neuro-fuzzy inference system (ANFIS) modeling approaches for the prediction of the psychological perceptions of functional fabrics from mechanical properties were investigated. Six distinct functional fabrics were evaluated using human subjects for their tactile score and total hand values (THV) using tactile and comfort-based fabric touch attributes. Then, the measurement of mechanical properties of the same set of samples using KES-FB was performed. The RMSE values for ANN and ANFIS predictions were 0.014 and 0.0122 and are extremely lower than the variations of the perception scores of 0.644 and 0.85 for ANN and ANFIS, respectively with fewer prediction errors. The observed results indicated that the predicted tactile score and THV are almost very close to the actual output obtained using the human judgment. Fabric objective measurement technology, therefore, provides reliable measurement approaches for functional fabric quality inspection, control, and design specification.
机译:纺织材料手柄的主观和客观评价对于描述其对肤色商品的触觉舒适性非常重要。本文研究了人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)建模方法对从机械性能预测函数织物的心理看法的适用性。使用触觉和舒适的织物触摸属性使用人体受试者评估六种不同的功能织物。然后,进行使用KES-FB的相同样品组的机械性能的测量。 ANN和ANFI预测的RMSE值为0.014和0.0122,并且极低于ANN和ANFIS的感知得分的变化分别具有较少的预测误差。观察结果表明,预测的触觉分数和THV几乎非常接近使用人为判断获得的实际输出。因此,面料客观测量技术为功能织物质量检验,控制和设计规范提供可靠的测量方法。

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