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首页> 外文期刊>The Journal of the Textile Institute >Using artificial neural networks with graphical user interface to predict the strength of carded cotton yarns
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Using artificial neural networks with graphical user interface to predict the strength of carded cotton yarns

机译:使用带有图形用户界面的人工神经网络预测粗梳棉纱的强度

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摘要

Artificial neural networks (ANNs) are used in prediction fields. Yarn strength is one of the most important properties, because it reflects the quality of the yarn. The prediction process of yarn strength is very important from the technology side because many of generated forces in the spun yarns could be given by yarn strength. Data were collected from the United Commercial Industrial Company, Damascus, Syria. Then, artificial neural network algorithm was architected. Several neural networks were architected one of these has been chosen, which contained acceptable network error rate. To deal easily with ANN, a simple graphical user interface has been created. This ANN has been tested on a new sample. Results were compared with the actual results as well as the relationship of Solovev which is allocated to predict the strength cotton yarn. ANN has given more acceptable results than Solovev's relationship.
机译:人工神经网络(ANN)用于预测领域。纱线强度是最重要的特性之一,因为它反映了纱线的质量。从技术角度来看,纱线强度的预测过程非常重要,因为纺纱中许多产生的力可以由纱线强度给出。数据从叙利亚大马士革联合商业工业公司收集。然后,构造了人工神经网络算法。设计了几种神经网络,其中之一被选择,其中包含可接受的网络错误率。为了轻松处理ANN,已创建了一个简单的图形用户界面。该ANN已在新样本上进行了测试。将结果与实际结果以及用于预测棉纱强度的Solovev的关系进行了比较。与Solovev的关系相比,ANN给出的结果更令人接受。

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