聚合物加工对炭黑增强橡胶复合材料力学性能影响的数据驱动探索

IF 4.1 2区 化学 Q2 POLYMER SCIENCE Chinese Journal of Polymer Science Pub Date : 2024-10-21 DOI:10.1007/s10118-024-3216-3
Zi-Long Wan, Wan-Chen Zhao, Hao-Ke Qiu, Shu-Shuai Zhou, Si-Yuan Chen, Cui-Liu Fu, Xue-Yang Feng, Li-Jia Pan, Ke Wang, Tian-Cheng He, Yu-Ge Wang, Zhao-Yan Sun
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引用次数: 0

摘要

高分子纳米复合材料的性能和应用在很大程度上取决于基材、填料类型和加工方式的选择。炭黑填充橡胶复合材料(CRC)就是一个例子,在各个行业中发挥着至关重要的作用。然而,由于这些因素与所产生的性能之间的复杂相互作用,迫切需要一个简单而准确的模型来预测CRC的力学性能,考虑不同的橡胶,填料和加工技术。本研究旨在利用机器学习预测CRC中填料的分散,并预测CRC的最终力学性能。我们选择了各种橡胶和炭黑填料,进行了混炼和硫化,随后测量了填料的分散和拉伸性能。基于215个实验数据点,我们评估了不同机器学习模型的性能。我们的研究结果表明,人工设计的深度神经网络(DNN)模型取得了更好的结果,显示出最高的决定系数(R2)值(>0.95)。DNN模型的Shapley加性解释(SHAP)分析揭示了CRC特性与工艺参数之间的复杂关系。此外,基于DNN模型的强大预测能力,我们可以推荐或优化CRC制造工艺。这项工作为利用机器学习预测聚合物复合材料的性能和优化高性能CRC的制造提供了有价值的见解。
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Data-Driven Exploration of Polymer Processing Effects on the Mechanical Properties in Carbon Black-Reinforced Rubber Composites

The performance and corresponding applications of polymer nanocomposites are highly dominated by the choice of base material, type of fillers, and the processing ways. Carbon black-filled rubber composites (CRC) exemplify this, playing a crucial role in various industries. However, due to the complex interplay between these factors and the resulting properties, a simple yet accurate model to predict the mechanical properties of CRC, considering different rubbers, fillers, and processing techniques, is highly desired. This study aims to predict the dispersion of fillers in CRC and forecast the resultant mechanical properties of CRC by leveraging machine learning. We selected various rubbers and carbon black fillers, conducted mixing and vulcanizing, and subsequently measured filler dispersion and tensile performance. Based on 215 experimental data points, we evaluated the performance of different machine learning models. Our findings indicate that the manually designed deep neural network (DNN) models achieved superior results, exhibiting the highest coefficient of determination (R2) values (>0.95). Shapley additive explanations (SHAP) analysis of the DNN models revealed the intricate relationship between the properties of CRC and process parameters. Moreover, based on the robust predictive capabilities of the DNN models, we can recommend or optimize CRC fabrication process. This work provides valuable insights for employing machine learning in predicting polymer composite material properties and optimizing the fabrication of high-performance CRC.

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来源期刊
Chinese Journal of Polymer Science
Chinese Journal of Polymer Science 化学-高分子科学
CiteScore
7.10
自引率
11.60%
发文量
218
审稿时长
6.0 months
期刊介绍: Chinese Journal of Polymer Science (CJPS) is a monthly journal published in English and sponsored by the Chinese Chemical Society and the Institute of Chemistry, Chinese Academy of Sciences. CJPS is edited by a distinguished Editorial Board headed by Professor Qi-Feng Zhou and supported by an International Advisory Board in which many famous active polymer scientists all over the world are included. The journal was first published in 1983 under the title Polymer Communications and has the current name since 1985. CJPS is a peer-reviewed journal dedicated to the timely publication of original research ideas and results in the field of polymer science. The issues may carry regular papers, rapid communications and notes as well as feature articles. As a leading polymer journal in China published in English, CJPS reflects the new achievements obtained in various laboratories of China, CJPS also includes papers submitted by scientists of different countries and regions outside of China, reflecting the international nature of the journal.
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