首页> 外文会议>2012 7th International Conference on System of Systems Engineering. >Prediction of thin place of polyester/cotton ring yarn properties from process parameters by using neural network and regression analysis
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Prediction of thin place of polyester/cotton ring yarn properties from process parameters by using neural network and regression analysis

机译:基于神经网络和回归分析的工艺参数预测涤棉环锭细纱性能

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摘要

This paper presents a comparative study of two modeling methods for predicting the thin place of polyester/cotton ring yarn. The results from these two series of models have been compared with the measured values respectively, proving that the accuracy of the ANN model is better and higher than that of linear multiple regression model. The experimental results and the corresponding analysis show that the ANN model is an efficient techniques for the quality prediction and has wide prospect in the application of ring spinning production system. better than that of linear multiple regression model.
机译:本文介绍了两种预测聚酯/棉环锭细纱位置的建模方法的比较研究。将这两个系列模型的结果分别与测量值进行了比较,证明了ANN模型的精度比线性多元回归模型更好,更高。实验结果和相应的分析表明,人工神经网络模型是一种有效的质量预测技术,在环锭纺生产系统的应用中具有广阔的前景。优于线性多元回归模型。

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