基于优化人工神经网络的织物组合体穿着舒适性分析与预测

Shan Cong, Baozhu Ke
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引用次数: 0

摘要

本文报道了一项基于KES系统测量织物物理性能的研究。灰色关联分析(GI)作为一种对复杂因素中众多变量的重要程度排序的数学方法,被应用于人工神经网络的有效输入变量的选择。人工神经网络??预测期间的穿着舒适性表现。在标准的室内环境条件下,对运动时织物的热湿舒适性进行了一系列试验和分析。研究了基于GI分析选择参数的优化人工神经网络模型的收敛速度和预测精度,结果表明BP神经网络优化模型是一种高效的技术,在预测穿着舒适性方面具有广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Prediction of the Wearing Comfort Performance of an Assembly of Fabric by Optimization ANN
This article is to report a study based on fabric physical properties measured on the KES system. Grey incidence (GI) analysis, as a mathematic method that ranks the sequence of importance of lots of variables in complicated factors has been applied, In order to select the efficient input variables of ANN???artificial neural network???during the prediction of wearing comfort performance. A series of experiments and analyses were performed to study the heat-moisture comfort property of fabric during exercise in a standard environmental chamber conditions. The optimization ANN models with the parameters selected by using the GI analysis are investigated, which construct on the convergence speed and the prediction accuracy The result indicates that the optimization model of BP neural network is an efficiency technique and has a wide prospect in the application to prediction of wearing comfort performance.
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