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Prediction of the Tensile Response of Carbon Black Filled Rubber Blends by Artificial Neural Network

机译:人工神经网络预测炭黑填充橡胶共混物的拉伸响应

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摘要

The precise experimental estimation of mechanical properties of rubber blends can be a very costly and time-consuming process. The present work explores the possibilities of increasing its efficiency by using artificial neural networks to study the mechanical behavior of these widely used materials. A multilayer feed-forward back-propagation artificial neural network model, with a strain and the carbon black content as input parameters and stress as an output parameter, has been developed to predict the uniaxial tensile response of vulcanized natural rubber blends with different contents of carbon black in the form of engineering stress-strain curves. A novel procedure has been created for the simulation of the optimized artificial neural network model with input datasets generated by a regression model of an experimental dependence of tensile strain-at-break on the carbon black content in the investigated blends. Errors of the prediction of experimental stress-strain curves, as well as of tensile strain-at-break, tensile stress-at-break and M100 tensile modulus were estimated for all simulated stress-strain curves. The present study demonstrated that the performance of a developed neural network model to predict the stress-strain curves of rubber blends with different contents of carbon black is also exceptionally high in the case of a network that had never learned the input data, which makes it a suitable tool for extensive use in practice.
机译:对橡胶混合物的机械性能进行精确的实验估算可能是非常昂贵且耗时的过程。本工作探索通过使用人工神经网络来研究这些广泛使用的材料的机械性能来提高其效率的可能性。建立了以应变和碳黑含量为输入参数,以应力为输出参数的多层前馈反向人工神经网络模型,以预测不同碳含量的硫化天然橡胶共混物的单轴拉伸响应。黑色为工程应力-应变曲线的形式。已经创建了一种新的程序,用输入数据集来模拟优化的人工神经网络模型,该输入数据集是由断裂拉伸应力对所研究混合物中炭黑含量的实验依赖性的回归模型生成的。对于所有模拟的应力-应变曲线,估计了实验应力-应变曲线以及断裂拉伸应变,断裂拉伸应力和M100拉伸模量的预测误差。本研究表明,在从未学习过输入数据的网络中,开发的神经网络模型预测具有不同炭黑含量的橡胶混合物的应力-应变曲线的性能也异常高。在实践中广泛使用的合适工具。

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