A Yarn Nep Prediction Method Combining Grey Correlation and Nearest Neighbour

Fenglong Wu, Chunxue Wei, Baowei Zhang
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引用次数: 1

Abstract

In recent years, there exist few difficulties for textile industries to predict the yarn nep index for small data and data with mutation. To fill this gap, a yarn nep prediction method combining grey correlation analysis and nearest-neighbour prediction method is proposed. In this paper, 26 indicators such as the raw cotton quality indicators and key process parameters are used as the input of the prediction model for yarn nep. The experimental results show that the relative error of the new method is lower than 10%, while the relative error of the individual data predicted by the traditional three-layer BP neural network is very large. Compared with the BP neural network, the average relative error and root-mean-square error of our proposed method are smaller, while the data are stable and the volatility is small. The prediction performance meets the user’s requirements. The effectiveness of the proposed model is proved.
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一种结合灰色关联和最近邻的纱线结条预测方法
近年来,对于小数据和有突变的数据,纺织行业预测纱线结纱指数的难度不大。为了填补这一空白,提出了一种结合灰色关联分析和最近邻预测方法的纱节预测方法。本文以原棉品质指标和关键工艺参数等26项指标作为纱线棉结预测模型的输入。实验结果表明,新方法的相对误差小于10%,而传统的三层BP神经网络预测个体数据的相对误差很大。与BP神经网络相比,该方法的平均相对误差和均方根误差较小,且数据稳定,波动性小。预测性能满足用户要求。验证了该模型的有效性。
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