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Optimization and Prediction of Mechanical and Thermal Properties of Graphene/LLDPE Nanocomposites by Using Artificial Neural Networks

机译:利用人工神经网络优化和预测石墨烯/ LLDPE纳米复合材料的机械和热性能

摘要

The focus of this work is to develop the knowledge of prediction of the physical and chemical properties of processed linear low density polyethylene (LLDPE)/graphene nanoplatelets composites. Composites made from LLDPE reinforced with 1, 2, 4, 6, 8, and 10 wt% grade C graphene nanoplatelets (C-GNP) were processed in a twin screw extruder with three different screw speeds and feeder speeds (50, 100, and 150 rpm). These applied conditions are used to optimize the following properties: thermal conductivity, crystallization temperature, degradation temperature, and tensile strength while prediction of these properties was done through artificial neural network (ANN). The three first properties increased with increase in both screw speed and C-GNP content. The tensile strength reached a maximum value at 4 wt% C-GNP and a speed of 150 rpm as this represented the optimum condition for the stress transfer through the amorphous chains of the matrix to the C-GNP. ANN can be confidently used as a tool to predict the above material properties before investing in development programs and actual manufacturing, thus significantly saving money, time, and effort.
机译:这项工作的重点是发展对加工的线性低密度聚乙烯(LLDPE)/石墨烯纳米片状复合材料的物理和化学性质的预测知识。用1、2、4、6、8和10 wt%的C级石墨烯纳米片(C-GNP)增强的LLDPE制成的复合材料在双螺杆挤出机中以三种不同的螺杆速度和进料速度(50、100和150 rpm)。这些应用条件用于优化以下特性:导热系数,结晶温度,降解温度和拉伸强度,而这些特性的预测是通过人工神经网络(ANN)进行的。随螺杆速度和C-GNP含量的增加,前三个特性均增加。在4 wt%的C-GNP下,拉伸强度达到最大值,速度为150 rpm,因为这代表了应力通过基质的非晶链转移到C-GNP的最佳条件。在投资开发程序和实际制造之前,可以将ANN放心地用作预测上述材料特性的工具,从而显着节省金钱,时间和精力。

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