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Predicting the fibre diameter of melt blown nonwovens: comparison of physical, statistical and artificial neural network models

机译:预测熔喷非织造布的纤维直径:物理,统计和人工神经网络模型的比较

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摘要

Physical, statistical and artificial neural network (ANN) models are established for predicting the fibre diameter of melt blown nonwovens from the processing parameters. The results show that the ANN model yields a very accurate prediction (average error of 0.013%), and a reasonably good ANN model can be achieved with relatively few data points. Because the physical model is based on the inherent physical principles of the phenomena of interest, it can yield reasonably good prediction results when experimental data are not available and the entire physical procedure is of interest. This area of research has great potential in the field of computer assisted design in melt blowing technology.
机译:建立了物理,统计和人工神经网络(ANN)模型,以根据加工参数预测熔喷非织造布的纤维直径。结果表明,人工神经网络模型产生非常准确的预测(平均误差为0.013%),并且可以用相对较少的数据点获得合理良好的人工神经网络模型。因为物理模型基于感兴趣现象的固有物理原理,所以当无法获得实验数据并且整个物理过程都令人感兴趣时,它可以产生相当好的预测结果。该领域的研究在熔喷技术的计算机辅助设计领域具有巨大潜力。

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