Seifert Lukas, Leuchtenberger-Engel Lisa, Hopmann Christian
Institute for Plastics Processing (IKV) in Industry and Craft, RWTH Aachen University, Seffenter Weg 201, 52074 Aachen, Germany.
Polymers (Basel). 2025 Jan 7;17(2):126. doi: 10.3390/polym17020126.
The need for an efficient adaptation of existing polypropylene (PP) formulations or the creation of new formulations has become increasingly important in various industries. Variations in viscosity resulting from changes in raw materials, fillers, and additives can have a significant impact on the processing and quality of PP products. This study presents the development of an analytical model designed to predict the shear viscosity of complex PP blends. By integrating established mixing rules with novel fitting parameters, the model provides a systematic and efficient method for managing variability in PP formulations. Experimental data from binary and multi-component blends were used to validate the model, demonstrating high prediction accuracy over a range of shear rates. The proposed model serves as a valuable tool for compounders and manufacturers to optimise PP formulations and develop new recipes with consistent processing and product quality. Future work will include industrial-scale trials and further evaluation against advanced machine learning approaches.
在各个行业中,对现有聚丙烯(PP)配方进行有效调整或开发新配方的需求变得越来越重要。原材料、填料和添加剂的变化所导致的粘度变化会对PP产品的加工和质量产生重大影响。本研究提出了一种分析模型的开发,旨在预测复杂PP共混物的剪切粘度。通过将既定的混合规则与新颖的拟合参数相结合,该模型为管理PP配方的变异性提供了一种系统且高效的方法。来自二元和多组分共混物的实验数据用于验证该模型,证明在一系列剪切速率范围内具有较高的预测准确性。所提出的模型是复合生产商和制造商优化PP配方以及开发具有一致加工和产品质量的新配方的宝贵工具。未来的工作将包括工业规模试验以及针对先进机器学习方法的进一步评估。