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首页> 外文期刊>The Journal of the Textile Institute >Comparison between artificial neural network and response surface methodology in the prediction of the parameters of heat set polypropylene yarns
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Comparison between artificial neural network and response surface methodology in the prediction of the parameters of heat set polypropylene yarns

机译:人工神经网络与响应面法在热定型丙纶纱参数预测中的比较

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摘要

In the present paper, a response surface model has been introduced to predict the geometrical parameters of heat set polypropylene pile yarns. The input factors of the presented model include yarn twist, initial yarn count, time, and temperature of heat setting and the response factors are yarn count, yarn shrinkage, crimp contraction and packing factor after the heat setting process. To analyse the effect of this process on the yarn parameters, the dry heat setting process has been applied to all samples at different times and temperatures using an oven equipped with air circulation because of better accuracy and control of temperature. The obtained results showed that there is a positive relation between time and temperature and output parameters. Finally, the predicting equations discussions about the optimum points for maximum shrinkage and interactions of parameters have been presented. Hence, due to some disability of the RSM method, an ANN model has been designed to predict the parameters at higher accuracy. The results of the accomplished ANN model represent a higher prediction correlation coefficient compared to RSM.
机译:在本文中,引入了响应面模型来预测热固性聚丙烯绒头纱的几何参数。该模型的输入因子包括纱线捻度,初始纱线支数,时间和热定型温度,响应因子为纱线支数,纱线收缩率,卷曲收缩和热定型后的堆积因子。为了分析该过程对纱线参数的影响,由于具有更高的精确度和温度控制能力,干式热定型过程已通过配备空气循环的烤箱应用于不同时间和温度的所有样品。所得结果表明时间和温度与输出参数之间存在正相关关系。最后,提出了关于最大收缩率最佳点和参数相互作用的预测方程的讨论。因此,由于RSM方法的某些缺陷,已设计了一个ANN模型来以较高的精度预测参数。与RSM相比,完成的ANN模型的结果表示较高的预测相关系数。

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