基于深度神经网络模型的阿尔法纤维生物负载绿色聚合物力学性能预测

A. Moumen, K. Mansouri
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引用次数: 0

摘要

生物复合材料微观力学性能的研究已成为当前科学研究的一个热点。这类研究的使用是由于这些生物复合材料提供的生态、环境和长期发展效益。除了满足工业约束的经济效益之外。本智能研究中使用的基质是绿色环氧树脂,由于其低成本,可用性和有趣的热机械性能,它是当前工业中最常用的聚合物之一,在运输,基础设施,包装,家庭应用和汽车工业等方面都有应用。使用的生物负载是阿尔法纤维,这在很大程度上被生物复合材料领域的研究人员所忽视。根据研究结果,Alfa纤维的生物负载增强了绿色环氧树脂基质的机械性能。与实验结果比较,神经网络模型对生物复合材料杨氏模量的预测精度较高。在测试阶段获得的最佳结果表明,神经网络能够泛化在训练阶段学习的输入和输出数据集之间的复杂联系,使我们能够创建一个有效的生物复合材料弹性预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards the Prediction of the Mechanical Properties of a Green Polymer Bioloaded with Alfa Fibers Using a Deep Neural Network Model
The investigation of micromechanical properties of bio composites has emerged as a focus of current scientific inquiry. The use of this type of research is due to the ecological, environmental, and long-term development benefits that these bio composites provide. In addition to their economic benefits in meeting industrial constraints. The matrix used in this intelligent study is green epoxy, which is one of the most commonly used polymers in the current industry due to its low cost, availability, and interesting thermomechanical properties, and which has applications in transportation, infrastructure, packaging, home applications, and the automotive industry, among others. The bio load used is Alpfa fibers, which have been largely overlooked by researchers in the field of bio composites. Bio loading with Alfa fibers enhance the mechanical properties of the green epoxy matrix, according to the findings. When compared to the experimental results, the neural network model predicted the Young modulus of the bio composite with high accuracy. The best results obtained in the test phase demonstrate that NNs are capable of generalizing the complicated link between the input and output set of data learned during the training phase, allowing us to create an efficient predictive model for elasiycity of biocomposite.
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