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The Prediction of Fiber Diameter of Spunbonding Nonwovens by Using Neural Network and Empirical Statistical Methods

机译:利用神经网络和经验统计方法预测纺粘非纺的纤维直径

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In this paper, the empirical statistical and artificial neural network methods are established. We present a comparative study of two modeling methodological for predicting the fiber diameter of spunbonding nonwovens from the process parameters. The radial basis neural network, which has good approximation capability and fast convergence rate, is employed in this work, and it can provide quantitative predictions of fiber diameter. The effects of process parameters on fiber diameter are also determined by the ANN model. The results show the artificial neural network model yield more accurate and stable predictions than the statistical method, which reveals that artificial neural network technique is really an effective and viable modeling method.
机译:本文建立了经验统计和人工神经网络方法。我们从过程参数中提出了两种模拟方法,用于预测纺粘非织造织物的纤维直径。在该工作中采用具有良好近似能力和快速收敛速率的径向基神经网络,可以提供纤维直径的定量预测。过程参数对纤维直径的影响也由ANN模型确定。结果表明,人工神经网络模型比统计方法产生更准确和稳定的预测,揭示人工神经网络技术真正是一种有效且可行的建模方法。

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