Kopal Ivan, Labaj Ivan, Vršková Juliána, Harničárová Marta, Valíček Jan, Ondrušová Darina, Krmela Jan, Palková Zuzana
Department of Numerical Methods and Computational Modeling, Faculty of Industrial Technologies in Púchov, Alexander Dubček University of Trenčín, Ivana Krasku 491/30, 020 01 Púchov, Slovakia.
Department of Materials Technologies and Environment, Faculty of Industrial Technologies in Púchov, Alexander Dubček University of Trenčín, Ivana Krasku 491/30, 020 01 Púchov, Slovakia.
Polymers (Basel). 2022 Feb 9;14(4):653. doi: 10.3390/polym14040653.
In this study, a new generalized regression neural network model for predicting the curing characteristics of rubber blends with different contents of carbon black filler cured at various temperatures is proposed for the first time The carbon black contents in the rubber blend and cure temperature were used as input parameters, while the minimum and maximum elastic torque, scorch time, and optimal cure time, obtained from the analysis of 11 rheological cure curves registered at 10 various temperatures, were considered as output parameters of the model. A special pre-processing procedure of the experimental input and target data and the training algorithm is described. Less than 55% of the experimental data were used to significantly reduce the total number of input and target data points needed for training the model. Satisfactory agreement between the predicted and experimental data, with a maximum error in the prediction not exceeding 5%, was found. It is concluded that the generalized regression neural network is a powerful tool for intelligently modelling the curing process of rubber blends even in the case of a small dataset, and it can find a wide range of practical applications in the rubber industry.
在本研究中,首次提出了一种新的广义回归神经网络模型,用于预测在不同温度下硫化的含不同炭黑填料含量的橡胶共混物的硫化特性。橡胶共混物中的炭黑含量和硫化温度用作输入参数,而从在10个不同温度下记录的11条流变硫化曲线分析中获得的最小和最大弹性扭矩、焦烧时间和最佳硫化时间被视为模型的输出参数。描述了实验输入和目标数据的特殊预处理程序以及训练算法。使用少于55%的实验数据以显著减少训练模型所需的输入和目标数据点的总数。发现预测数据与实验数据之间具有令人满意的一致性,预测中的最大误差不超过5%。得出的结论是,广义回归神经网络是一种强大的工具,即使在数据集较小的情况下也能对橡胶共混物的硫化过程进行智能建模,并且它可以在橡胶工业中找到广泛的实际应用。