基于实际生产的纱线质量预测

Bao-Wei Zhang Bao-Wei Zhang, Lin Xu Bao-Wei Zhang, Yong-Hua Wang Lin Xu
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引用次数: 0

摘要

近几十年来,神经网络预测纱线质量指标的方法以其较高的准确性得到了人们的认可。虽然使用神经网络预测纱线质量指标具有精度高的优势,但其对各个输入参数与纱线质量指标之间关系的理解可能需要修正,即增加原棉强度,最终纱线强度保持不变或降低。虽然这对于预测算法来说是正常的,但实际生产需要更多的是单个参数变化的趋势,以预测正确的纱线,即原棉强度的增加应对应于纱线强度的增加。本文提出了一种结合最近邻、粒子群优化和专家经验的基于实际生产的纱线质量预测方法。利用专家经验确定参数权值的上下限,利用粒子群算法找到最优权值,然后利用最近邻算法计算纱线指标的预测值。最后,通过实验验证了目前存在的问题以及本文提出的方法的合理性。
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Prediction of Yarn Quality Based on Actual Production
In recent decades, the neural network approach to predicting yarn quality indicators has been recognized for its high accuracy. Although using neural networks to predict yarn quality indicators has a high accuracy advantage, its relationship understanding between each input parameter and yarn quality indicators may need to be corrected, i.e., increasing the raw cotton strength, the final yarn strength remains the same or decreases. Although this is normal for prediction algorithms, actual production need is more of a trend for individual parameter changes to predict a correct yarn, i.e., raw cotton strength increase should correspond to yarn strength increase. This study proposes a yarn quality prediction method based on actual production by combining nearest neighbor, particle swarm optimization, and expert experience to address the problem. We Use expert experience to determine the upper and lower limits of parameter weights, the particle swarm optimization finds the optimal weights, and then the nearest neighbor algorithm is used to calculate the predicted values of yarn indexes. Finally, the current problems and the rationality of the method proposed in this paper are verified by experiments.  
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