Mohsenzadeh R, Soudmand B H, Najafi A H, Hazzazi F, Fattahi M
Department of Mechanical Engineering, Technical and Vocational University (TVU), Tehran, 1435761137, Iran.
Mechanical Engineering Department, Faculty of Engineering, Gebze Technical University, Gebze, Turkey.
Nanoscale. 2024 Nov 21;16(45):21155-21173. doi: 10.1039/d4nr01018c.
The link between the macroscopic properties of polymer nanocomposites and the underlying microstructural features necessitates an understanding of nanoparticle dispersion. The dispersion of nanoparticles introduces variability, potentially leading to clustering and localized accumulation of nanoparticles. This non-uniform dispersion impacts the accuracy of predictive models. In response to this challenge, this study developed an automated and precise technique for particle recognition and detailed mapping of particle positions in scanning electron microscopy (SEM) micrographs. This was achieved by integrating deep convolutional neural networks with advanced image processing techniques. Following particle detection, two dispersion factors were introduced, namely size uniformity and supercritical clustering, to quantify the impact of particle dispersion on properties. These factors, estimated using the computer vision technique, were subsequently used to calculate the effective load-bearing area influenced by the particles. An adapted micromechanical model was then employed to quantify the interfacial strength and thickness of the nanocomposites. This approach enabled the establishment of a correlation between dispersion characteristics and interfacial properties by integrating experimental data, relevant micromechanical models, and quantified dispersion factors. The proposed systematic procedure demonstrates considerable promise in utilizing deep learning to capture and quantify particle dispersion characteristics for structure-property analyses in polymer nanocomposites.
聚合物纳米复合材料的宏观性质与潜在的微观结构特征之间的联系,使得对纳米颗粒分散情况的理解成为必要。纳米颗粒的分散会引入变异性,有可能导致纳米颗粒的聚集和局部积累。这种不均匀的分散会影响预测模型的准确性。为应对这一挑战,本研究开发了一种自动化且精确的技术,用于在扫描电子显微镜(SEM)显微照片中识别颗粒并详细绘制颗粒位置图。这是通过将深度卷积神经网络与先进的图像处理技术相结合来实现的。在检测到颗粒后,引入了两个分散因子,即尺寸均匀性和超临界聚集,以量化颗粒分散对性能的影响。使用计算机视觉技术估算出的这些因子,随后被用于计算受颗粒影响的有效承载面积。接着采用一种改进的微观力学模型来量化纳米复合材料的界面强度和厚度。这种方法通过整合实验数据、相关的微观力学模型和量化的分散因子,建立了分散特性与界面性能之间的相关性。所提出的系统程序在利用深度学习来捕捉和量化聚合物纳米复合材料结构 - 性能分析中的颗粒分散特征方面显示出了巨大的前景。