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Neural modelling of polypropylene fibre processing: Predicting the structure and properties and identifying the control parameters for specified fibres

机译:聚丙烯纤维加工的神经建模:预测结构和性能并确定指定纤维的控制参数

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摘要

This paper describes the application of artificial intelligence to data derived from polypropylene drawing carried out at Galashiels using designed experiments. The topology of the data is visualised in two dimensions with respect to specific properties to be modelled, as a quality check on the process data. A series of neural network models are used successfully to predict the tenacity, elongation, modulus and heat shrinkage and also the crystallographic order and polymer chains orientation of the output fibres from the draw parameters values. A software harness is constructed for using the neural predictors to find the draw parameters which come closest to achieving any specified combination of fibre properties. (C) 2001 Kluwer Academic Publishers. [References: 9]
机译:本文描述了人工智能在Galashiels上使用设计的实验从聚丙烯拉伸中得出的数据中的应用。相对于要建模的特定属性,二维显示数据的拓扑,以对过程数据进行质量检查。一系列神经网络模型已成功地用于根据拉伸参数值预测强度,伸长率,模量和热收缩率,以及输出纤维的晶体学顺序和聚合物链取向。构建了一种软件工具,用于使用神经预测器找到最接近于实现纤维特性的任何指定组合的拉伸参数。 (C)2001 Kluwer学术出版社。 [参考:9]

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