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首页> 外文期刊>Journal of Applied Polymer Science >Using artificial neural networks to model and interpret electrospun polysaccharide (HylonVIIstarch) nanofiber diameter
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Using artificial neural networks to model and interpret electrospun polysaccharide (HylonVIIstarch) nanofiber diameter

机译:使用人工神经网络来模拟和解释Electrome多糖(Hylonviistarch)纳米纤维直径

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摘要

Present work was aimed to develop an artificial neural networks (ANN) model to predict the polysaccharide-based biopolymer (Hylon VII starch) nanofiber diameter and classification of its quality (good, fair, and poor) as a function of polymer concentration, spinning distance, feed rate, and applied voltage during the electrospinning process. The relationship between diameter and its quality with process parameters is complex and nonlinear. The backpropagation algorithm was used to train the ANN model and achieved the classification accuracy, precision, and recall of 93.9%, 95.2%, and 95.2%, respectively. The average errors of the predicted fiber diameter for training and unseen testing data were found to be 0.05% and 2.6%, respectively. A stand-alone ANN software was designed to extract information on the electrospinning system from a small experimental database. It was successful in establishing the relationship between electrospinning process parameters and fiber quality and diameter. The yield of smaller diameter with good quality was favored by lower feed rate, lower polymer solution concentration, and higher applied voltage.
机译:目前的工作旨在开发一个人工神经网络(ANN)模型,以预测基于多糖的生物聚合物(Hylon VII淀粉)纳米纤维直径及其质量分类(良好、一般和较差),作为聚合物浓度、纺丝距离、进料速率和静电纺丝过程中施加电压的函数。直径和质量与工艺参数之间的关系复杂且非线性。采用反向传播算法对神经网络模型进行训练,分类准确率、准确率和召回率分别达到93.9%、95.2%和95.2%。训练数据和未观测测试数据的预测纤维直径的平均误差分别为0.05%和2.6%。设计了一个独立的人工神经网络软件,从一个小型实验数据库中提取静电纺丝系统的信息。它成功地建立了静电纺丝工艺参数与纤维质量和直径之间的关系。较低的进料速率、较低的聚合物溶液浓度和较高的外加电压有利于获得直径较小、质量较好的产品。

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