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基于并行计算的橡胶共混物实际动态粘度智能建模

Intelligent Modelling of the Real Dynamic Viscosity of Rubber Blends Using Parallel Computing.

作者信息

Kopal Ivan, Labaj Ivan, Vršková Juliána, Harničárová Marta, Valíček Jan, Tozan Hakan

机构信息

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 Electrical Engineering, Automation and Informatics, Faculty of Engineering, Slovak University of Agriculture in Nitra, Tr. A. Hlinku 2, 949 76 Nitra, Slovakia.

出版信息

Polymers (Basel). 2023 Sep 2;15(17):3636. doi: 10.3390/polym15173636.

Abstract

Modelling the flow properties of rubber blends makes it possible to predict their rheological behaviour during the processing and production of rubber-based products. As the nonlinear nature of such complex processes complicates the creation of exact analytical models, it is appropriate to use artificial intelligence tools in this modelling. The present study was implemented to develop a highly efficient artificial neural network model, optimised using a novel training algorithm with fast parallel computing to predict the results of rheological tests of rubber blends performed under different conditions. A series of 120 real dynamic viscosity-time curves, acquired by a rubber process analyser for styrene-butadiene rubber blends with varying carbon black contents vulcanised at different temperatures, were analysed using a Generalised Regression Neural Network. The model was optimised by limiting the fitting error of the training dataset to a pre-specified value of less than 1%. All repeated calculations were made via parallel computing with multiple computer cores, which significantly reduces the total computation time. An excellent agreement between the predicted and measured generalisation data was found, with an error of less than 4.7%, confirming the high generalisation performance of the newly developed model.

摘要

对橡胶共混物的流动特性进行建模,可以预测它们在橡胶基产品加工和生产过程中的流变行为。由于此类复杂过程的非线性性质使得创建精确的分析模型变得复杂,因此在该建模中使用人工智能工具是合适的。本研究旨在开发一种高效的人工神经网络模型,该模型使用具有快速并行计算能力的新型训练算法进行优化,以预测在不同条件下进行的橡胶共混物流变测试结果。使用广义回归神经网络对由橡胶加工分析仪获取的一系列120条真实动态粘度-时间曲线进行了分析,这些曲线是针对在不同温度下硫化的具有不同炭黑含量的丁苯橡胶共混物。通过将训练数据集的拟合误差限制在预先指定的小于1%的值来优化模型。所有重复计算均通过使用多个计算机核心的并行计算进行,这显著减少了总计算时间。预测数据与实测泛化数据之间具有良好的一致性,误差小于4.7%,证实了新开发模型的高泛化性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec54/10490080/1f31d0ec8caa/polymers-15-03636-g001.jpg

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