Chen Fengqing, Wang Jinhe, Guo Zhen, Jiang Fang, Ouyang Runhai, Ding Peng
School of Materials Science and Engineering, Shanghai University, 99 Shangda Road, Shanghai 200444, PR China.
Research Center of Nanoscience and Nanotechnology, Shanghai University, 99 Shangda Road, Shanghai 200444, PR China.
ACS Appl Mater Interfaces. 2021 Nov 17;13(45):53425-53438. doi: 10.1021/acsami.1c12767. Epub 2021 Sep 5.
Designing flame-retardant polymers with high performance is a long-standing challenge, partly because of the time-consuming traditional approaches based on experiential intuition and trial-and-error screenings. Inspired by the effective new paradigm of data-driven material discovery, we used machine learning to analyze experimental data to accelerate the development of new flame-retardant polymers. To explore the relationship between limit oxygen index (LOI) and components, we prepared 20 composites and then trained a simple equation for the LOI using the method sure independence screening and sparsifying operator (SISSO). The data analysis allows us for a better understanding of the flame-retardant mechanism and components, and the equation has good accuracy in guiding the design of composites with high flame-retardant performance. Meanwhile, the increasing structural design of flame retardants is crucial to flame-retardant polymer composites. We proposed a structure of nano graphene oxide (GO) wrapped micro zinc hydroxystannate (ZHS) in a simple but effective way as a novel flame-retardant agent to enhance the flame retardancy and mechanical properties of polypropylene (PP) composites. The GO sheets were like "light yarns" wrapped onto the ZHS via hydrogen bonding in an ethanol solution. The selected samples were analyzed to confirm the predictive LOI model. The resultant composites with the substitution of intumescent flame retardant (IFR) by 1.0, 2.0, and 4.0 wt % ZHS@GO conferred better flame retardancy compared with PP composite containing only IFR, reflected by the efficient increase of LOI value and V0 rating of UL-94 vertical tests. The analysis principles and facile fabrication strategies proposed in this work could be important for developing highly flame retardant composites.
设计高性能的阻燃聚合物是一项长期挑战,部分原因在于基于经验直觉和反复试验筛选的传统方法耗时较长。受数据驱动材料发现这一有效新范式的启发,我们利用机器学习分析实验数据,以加速新型阻燃聚合物的开发。为探究极限氧指数(LOI)与组分之间的关系,我们制备了20种复合材料,然后使用确信独立筛选和稀疏化算子(SISSO)方法训练了一个关于LOI的简单方程。数据分析使我们能够更好地理解阻燃机理和组分,并且该方程在指导高阻燃性能复合材料的设计方面具有良好的准确性。同时,阻燃剂结构设计的增加对于阻燃聚合物复合材料至关重要。我们以一种简单而有效的方式提出了一种纳米氧化石墨烯(GO)包裹微羟基锡酸锌(ZHS)的结构,作为一种新型阻燃剂,以提高聚丙烯(PP)复合材料的阻燃性和力学性能。在乙醇溶液中,GO片层通过氢键像“轻纱”一样包裹在ZHS上。对所选样品进行分析以确认预测的LOI模型。用1.0、2.0和4.0 wt%的ZHS@GO替代膨胀型阻燃剂(IFR)所得的复合材料,与仅含IFR的PP复合材料相比,具有更好的阻燃性,这体现在LOI值的有效增加和UL-94垂直试验的V0等级上。这项工作中提出的分析原理和简便制备策略对于开发高阻燃复合材料可能具有重要意义。