Seifert Lukas, Leuchtenberger-Engel Lisa, Hopmann Christian
Institute for Plastics Processing (IKV) in Industry and Craft at RWTH Aachen University, Seffenter Weg 201, 52074 Aachen, Germany.
Polymers (Basel). 2024 Aug 16;16(16):2326. doi: 10.3390/polym16162326.
The extensive use of polypropylene (PP) in various industries has heightened interest in developing efficient methods for recycling and optimising its mixtures. This study focuses on formulating predictive models for the Melt Flow Rate (MFR) and shear viscosity of PP blends. The investigation involved characterising various grades, including virgin homopolymers, copolymers, and post-consumer recyclates, in accordance with ISO 1133 standards. The research examined both binary and ternary blends, utilising traditional mixing rules and symbolic regression to predict rheological properties. High accuracy was achieved with the Arrhenius and Cragoe models, attaining R values over 0.99. Symbolic regression further enhanced these models, offering significant improvements. To mitigate overfitting, empirical noise and variable swapping were introduced, increasing the models' robustness and generalisability. The results demonstrated that the developed models could reliably predict MFR and shear viscosity, providing a valuable tool for improving the quality and consistency of PP mixtures. These advancements support the development of recycling technologies and sustainable practices in the polymer industry by optimising processing and enhancing the use of recycled materials.
聚丙烯(PP)在各个行业的广泛应用,提高了人们对开发高效回收方法及其混合物优化方法的兴趣。本研究着重于为PP共混物的熔体流动速率(MFR)和剪切粘度建立预测模型。该研究根据ISO 1133标准,对包括原生均聚物、共聚物和消费后回收物在内的各种等级材料进行了表征。研究考察了二元和三元共混物,利用传统混合规则和符号回归来预测流变性能。阿伦尼乌斯模型和克拉戈模型实现了高精度,R值超过0.99。符号回归进一步改进了这些模型,带来了显著提升。为了减轻过拟合,引入了经验噪声和变量交换,提高了模型的稳健性和通用性。结果表明,所开发的模型能够可靠地预测MFR和剪切粘度,为提高PP混合物的质量和一致性提供了有价值的工具。这些进展通过优化加工过程和增加回收材料的使用,支持了聚合物行业回收技术的发展和可持续实践。