Abstract
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.
Highlights
Earlier researchers have been studying the air drawing models of polymer spunbonding process [1,2], and trying to predict the quality of spunbonding nonwovens
As a nonlinear problem, predicting the filament fiber diameter of spunbonding nonwovens from the process parameters can be realized by an alternative modeling method, i.e., by using empirical model which includes the statistical, artificial neural network(ANN) model, grey model and etc
The absolute value of error in the ANN model is the lower in the two models, which means that the prediction errors of the statistical model are more discrete than those of the ANN model
Summary
Earlier researchers have been studying the air drawing models of polymer spunbonding process [1,2], and trying to predict the quality of spunbonding nonwovens. Artificial neural network model, statistical model, spunbonding nonwoven, fiber diameter, process parameter. There are three modeling methods for predicting spunbonding nonwovens properties: physical, statistical, and artificial neural network model.
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