A Neural Network-Based Method for Surface Metallization of Polymer Materials

Lina Liu, Yuhao Qiao, Dongxia Wang, Xiaoguang Tian, Feiyue Qin
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Abstract

It’s no secret that polymers have been employed extensively in a variety of industries. Polymers, on the other hand, have faced difficulties in their development because of their complicated chemical composition and structure. Data-driven approaches in polymer science and technology have resulted in new directions in research leading to the implementation of deep learning models and vast data assets. In the growing area of polymer informatics, deep learning methods based on factual data are being used to speed up the performance assessment and process improvement of new polymers. Using a deep neural network (DNN), we can now forecast the surface metallization properties of polymer materials, which we describe in this research. First, we collect a raw dataset of polymer materials’ characteristics. The raw data are filtered and normalized using the min–max normalization approach. To convert normalized data into numerical characteristics, principal component analysis (PCA) is employed. Polymer surface metallization characteristics can then be predicted using a suggested DNN technique. The proposed and conventional approaches are also compared so that our research can be done to its full potential.
基于神经网络的高分子材料表面金属化方法
聚合物被广泛应用于各行各业已经不是什么秘密了。另一方面,聚合物由于其复杂的化学组成和结构,一直面临着发展的困难。聚合物科学和技术中的数据驱动方法为研究带来了新的方向,从而实现了深度学习模型和大量数据资产。在不断发展的聚合物信息学领域,基于事实数据的深度学习方法正被用于加速新聚合物的性能评估和工艺改进。利用深度神经网络(DNN),我们现在可以预测高分子材料的表面金属化特性,我们在本研究中描述了这些特性。首先,我们收集了高分子材料特性的原始数据集。原始数据使用最小-最大规范化方法进行过滤和规范化。为了将归一化数据转化为数值特征,采用了主成分分析(PCA)。然后可以使用建议的深度神经网络技术预测聚合物表面金属化特性。我们还比较了建议的方法和传统的方法,以便我们的研究能够充分发挥其潜力。
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