Kalantary Saba, Jahani Ali, Pourbabaki Reza, Beigzadeh Zahra
Department of Occupational Health Engineering, School of Public Health, Tehran University of Medical Sciences Tehran 1416753955 Iran.
Department of Natural Environment and Biodiversity, Faculty of Environment, College of Environment Karaj 31746118 Iran
RSC Adv. 2019 Aug 12;9(43):24858-24874. doi: 10.1039/c9ra04927d. eCollection 2019 Aug 8.
Prediction of the diameter of a nanofiber is very difficult, owing to complexity of the interactions of the parameters which have an impact on the diameter and the fact that there is no comprehensive method to predict the diameter of a nanofiber. Therefore, the aim of this study was to compare the multi-layer perceptron (MLP), radial basis function (RBF), and support vector machine (SVM) models to develop mathematical models for the diameter prediction of poly(ε-caprolactone) (PCL)/gelatin (Gt) nanofibers. Four parameters, namely, the weight ratio, applied voltage, injection rate, and distance, were considered as input data. Then, a prediction of the diameter for the nanofiber model (PDNFM) was developed using data mining techniques such as MLP, RBFNN, and SVM. The PDNFM is introduced as the most accurate model to predict the diameter of PCL/Gt nanofibers on the basis of costs and time-saving. According to the results of the sensitivity analysis, the value of the PCL/Gt weight ratio is the most significant input which influences PDNFM in PCL/Gt electrospinning. Therefore, the PDNFM model, using a decision support system (DSS) tool can easily predict the diameter of PCL/Gt nanofibers prior to electrospinning.
预测纳米纤维的直径非常困难,这是由于影响直径的参数之间相互作用复杂,且不存在预测纳米纤维直径的综合方法。因此,本研究的目的是比较多层感知器(MLP)、径向基函数(RBF)和支持向量机(SVM)模型,以建立聚(ε-己内酯)(PCL)/明胶(Gt)纳米纤维直径预测的数学模型。四个参数,即重量比、施加电压、注射速率和距离,被视为输入数据。然后,使用MLP、RBF神经网络和SVM等数据挖掘技术开发了纳米纤维模型直径预测(PDNFM)。基于成本和节省时间,PDNFM被认为是预测PCL/Gt纳米纤维直径的最准确模型。根据敏感性分析结果,PCL/Gt重量比的值是影响PCL/Gt电纺中PDNFM的最重要输入。因此,使用决策支持系统(DSS)工具的PDNFM模型可以在电纺之前轻松预测PCL/Gt纳米纤维的直径。