Andraju Nagababu, Curtzwiler Greg W, Ji Yun, Kozliak Evguenii, Ranganathan Prakash
School of Electrical Engineering and Computer Science (SEECS), University of North Dakota, Grand Forks, North Dakota 58202, United States.
Polymer and Food Protection Consortium, Department of Food Science and Human Nutrition, Iowa State University, Ames, Iowa 50011, United States.
ACS Appl Mater Interfaces. 2022 Sep 28;14(38):42771-42790. doi: 10.1021/acsami.2c08301. Epub 2022 Sep 14.
There has been a tremendous increase in demand for virgin and postconsumer recycled (PCR) polymers due to their wide range of chemical and physical characteristics. Despite the numerous potential benefits of using a data-driven approach to polymer design, major hurdles exist in the development of polymer informatics due to the complicated hierarchical polymer structures. In this review, a brief introduction on virgin polymer structure, PCR polymers, compatibilization of polymers to be recycled, and their characterization using sensor array technologies as well as factors affecting the polymer properties are provided. Machine-learning (ML) algorithms are gaining attention as cost-effective scalable solutions to exploit the physical and chemical structures of polymers. The basic steps for applying ML in polymer science such as fingerprinting, algorithms, open-source databases, representations, and polymer design are detailed in this review. Further, a state-of-the-art review of the prediction of various polymer material properties using ML is reviewed. Finally, we discuss open-ended research questions on ML application to PCR polymers as well as potential challenges in the prediction of their properties using artificial intelligence for more efficient and targeted PCR polymer discovery and development.
由于原生聚合物和消费后回收(PCR)聚合物具有广泛的化学和物理特性,其需求已大幅增加。尽管采用数据驱动方法进行聚合物设计有诸多潜在益处,但由于聚合物结构复杂且具有层级性,聚合物信息学的发展仍存在重大障碍。在本综述中,我们简要介绍了原生聚合物结构、PCR聚合物、待回收聚合物的增容以及使用传感器阵列技术对它们的表征,同时还介绍了影响聚合物性能的因素。机器学习(ML)算法作为一种经济高效的可扩展解决方案,正逐渐受到关注,用于探索聚合物的物理和化学结构。本综述详细介绍了在聚合物科学中应用ML的基本步骤,如指纹识别、算法、开源数据库、表征和聚合物设计。此外,还综述了利用ML预测各种聚合物材料性能的最新研究。最后,我们讨论了ML应用于PCR聚合物的开放性研究问题,以及使用人工智能预测其性能时可能面临的挑战,以期更高效、有针对性地发现和开发PCR聚合物。