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引用次数: 0
摘要
利用机器学习预测聚合物的流变特性在促进新型材料的表征方面具有巨大潜力。在此,我们建议将双爬行(DR)与深度神经网络模型进行类比。双爬行模型本身可以作为深度学习方法的特例;线性激活函数和两个隐藏层的相同权重集是双爬行模型的特征。双隐层模型中相同的权重集与分子量分布(MWD)有关。我们首先根据双爬行模型生成了地面实况数据。然后,我们使用爬行引导的深度神经网络(RGDNN)对数据集进行了分析。结果表明,RGDNN 模型可以根据模拟实验流变数据(使用 DR 模型制备)确定缠结分子量(高原模量)和单体摩擦因数,而无需任何附加信息。总之,在确定决定超高分子量聚乙烯(UHMWPE)凝胶流变行为的主要因素方面取得了显著的概念改进。
Reptation theory-similar deep learning model for polymer characterization from rheological measurement
The use of machine learning to predict rheological properties of polymers has great potential to facilitate the characterization of novel materials. Here, we have suggested the analogy between the double reptation (DR) and the deep neural network model. The double reptation model itself can be the special case of the deep learning method; linear activation function, and identical sets of weights for the two hidden layers are the characteristics of the double reptation model. The identical sets of weights in the double reptation model are related with the molecular weight distribution (MWD). We first generated ground truth data based on double reptation model. Then, we analyzed the dataset with reptation-guided deep neural network (RGDNN). We showed that the RGDNN model is available to determine entanglement molecular weight (plateau modulus), and monomeric friction factors from the simulated experimental rheological data (prepared using DR model) without any additional information. Overall, a noteworthy conceptual improvement in the determination of major factors that determine the rheological behavior of ultrahigh molecular weight polyethylene (UHMWPE) gels has been achieved.
期刊介绍:
The Korea-Australia Rheology Journal is devoted to fundamental and applied research with immediate or potential value in rheology, covering the science of the deformation and flow of materials. Emphases are placed on experimental and numerical advances in the areas of complex fluids. The journal offers insight into characterization and understanding of technologically important materials with a wide range of practical applications.