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An Interactive Tool for Yarn Strength Prediction Using Support Vector Regression

机译:使用支持向量回归的纱线强度预测的交互式工具

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Cotton, popularly known as White Gold has been an important commercial crop of National significance due to the immense influence of its rural economy. Transfer of technology to identify the quality of fibre is gaining importance. The physical characteristics of cotton such as fiber length, length distribution, trash value, color grade, strength, shape, tenacity, density, moisture absorption, dimensional stability, resistance, thermal reaction, count, etc., contributes to determine the quality of cotton and in turn yarn strength. In this paper yarn strength prediction has been modeled using regression. Support Vector regression, the supervised machine learning technique has been employed for predicting the yarn strength. The trained model was evaluated based on mean squared error and correlation coefficient and was found that the prediction accuracy of SVR based model, the intelligence reasoning method is higher compared with the traditional statistical regression, the least square regression model.
机译:棉花,俗称白金是由于其农村经济巨大影响因素的重要商业作品。技术转移以确定纤维质量越来越重要。棉质的物理特性,如纤维长度,长度分布,垃圾值,颜色等级,强度,形状,韧性,密度,吸湿,尺寸稳定性,抗性,热反应,计数等有助于确定棉花的质量并且反过来纱线强度。在本文中,纱线强度预测已经使用回归建模。支持向量回归,已经采用监督机学习技术来预测纱线强度。基于平均平方误差和相关系数评估训练模型,发现基于SVR的模型的预测精度,与传统的统计回归相比,智能推理方法更高,最小二乘回归模型。

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