Miturska-Barańska Izabela, Antosz Katarzyna
Department of Production Computerisation and Robotisation, Faculty of Mechanical Engineering, Lublin University of Technology, Nadbystrzycka 36, 20-618 Lublin, Poland.
Faculty of Mechanical Engineering and Aeronautics, Rzeszow University of Technology, 35-959 Rzeszow, Poland.
Materials (Basel). 2025 Jun 14;18(12):2803. doi: 10.3390/ma18122803.
This study analyzed the mechanical properties of epoxy adhesive materials used as functional coatings, focusing on how physical modifications impact their microstructure and strength. Compositions based on Epidian 5, 53 and 57 resins were cured using TFF, Z-1, or PAC curing agents and modified with various fillers: mineral (CaCO calcium carbonate), active (activated carbon filler, CWZ-22), and nanostructured (montmorillonite, ZR-2) fillers. The best results were achieved with calcium carbonate (10-20 wt%) in Epidian 5 or 53 resins cured with TFF or Z-1, yielding tensile strength up to 64 MPa, compressive strength up to 145 MPa, and bending strength up to 123 MPa. Activated carbon and nanofillers showed moderate improvements, particularly in more flexible matrices. To support property prediction, machine learning algorithms were applied and successfully modeled the mechanical behavior based on composition data. The most accurate models reached R values of 0.93-0.95 for compression and bending strength. While the models for compression and bending strength demonstrated high accuracy, the tensile strength model yielded lower predictive performance, indicating that further refinement and expanded input features are necessary. Shapley analysis further identified curing agents and fillers as key predictive features. This integrated experimental and data-driven approach offers an effective framework for optimizing epoxy-based coatings in industrial applications.
本研究分析了用作功能涂层的环氧胶粘剂材料的力学性能,重点关注物理改性如何影响其微观结构和强度。基于Epidian 5、53和57树脂的组合物使用TFF、Z-1或PAC固化剂进行固化,并用各种填料进行改性:矿物填料(碳酸钙)、活性填料(活性炭填料,CWZ-22)和纳米结构填料(蒙脱石,ZR-2)。在用TFF或Z-1固化的Epidian 5或53树脂中加入碳酸钙(10-20 wt%)可获得最佳结果,其拉伸强度高达64 MPa,抗压强度高达145 MPa,弯曲强度高达123 MPa。活性炭和纳米填料显示出适度的改善,特别是在更具柔韧性的基体中。为了支持性能预测,应用了机器学习算法,并基于成分数据成功地对力学行为进行了建模。对于抗压强度和弯曲强度,最准确的模型R值达到0.93-0.95。虽然抗压强度和弯曲强度模型显示出较高的准确性,但拉伸强度模型的预测性能较低,这表明需要进一步优化和扩展输入特征。Shapley分析进一步确定固化剂和填料是关键的预测特征。这种综合实验和数据驱动的方法为工业应用中优化环氧基涂层提供了一个有效的框架。