Nakayama Koyuru, Sakakibara Keita
Research Institute for Sustainable Chemistry, National Institute of Advanced Industrial Science and Technology (AIST), Hiroshima, Japan.
Sci Technol Adv Mater. 2024 May 8;25(1):2351356. doi: 10.1080/14686996.2024.2351356. eCollection 2024.
Lignocellulosic materials have inherent complexities and natural nanoarchitectures, such as various chemical constituents in wood cell walls, structural factors such as fillers, surface properties, and variations in production. Recently, the development of lignocellulosic filler-reinforced polymer composites has attracted increasing attention due to their potential in various industries, which are recognized for environmental sustainability and impressive mechanical properties. The growing demand for these composites comes with increased complexity regarding their specifications. Conventional trial-and-error methods to achieve desired properties are time-intensive and costly, posing challenges to efficient production. Addressing these issues, our research employs a data-driven approach to streamline the development of lignocellulosic composites. In this study, we developed a machine learning (ML)-assisted prediction model for the impact energy of the lignocellulosic filler-reinforced polypropylene (PP) composites. Firstly, we focused on the influence of natural supramolecular structures in biomass fillers, where the Fourier transform infrared spectra and the specific surface area are used, on the mechanical properties of the PP composites. Subsequently, the effectiveness of the ML model was verified by selecting and preparing promising composites. This model demonstrated sufficient accuracy for predicting the impact energy of the PP composites. In essence, this approach streamlines selecting wood species, saving valuable time.
木质纤维素材料具有内在的复杂性和天然的纳米结构,例如木材细胞壁中的各种化学成分、诸如填料等结构因素、表面性质以及生产过程中的变化。近来,木质纤维素填料增强聚合物复合材料的发展因其在各个行业的潜力而受到越来越多的关注,这些复合材料以环境可持续性和令人印象深刻的机械性能而闻名。对这些复合材料需求的增长伴随着其规格方面日益增加的复杂性。通过传统的试错方法来获得所需性能既耗时又昂贵,给高效生产带来了挑战。为了解决这些问题,我们的研究采用数据驱动的方法来简化木质纤维素复合材料的开发。在本研究中,我们开发了一种机器学习(ML)辅助预测模型,用于预测木质纤维素填料增强聚丙烯(PP)复合材料的冲击能。首先,我们关注生物质填料中天然超分子结构的影响,其中使用傅里叶变换红外光谱和比表面积来研究其对PP复合材料机械性能的影响。随后,通过选择和制备有前景的复合材料来验证ML模型的有效性。该模型在预测PP复合材料的冲击能方面表现出足够的准确性。本质上,这种方法简化了木材种类的选择,节省了宝贵的时间。