Aboamer Mohamed A, Hakami Abdulrahman, Algethami Meshari, Alarifi Ibrahim M, El-Bagory Tarek M A A, Alassaf Ahmad, Alresheedi Bakheet A, AlOmari Ahmad K, Almazrua Abdulaziz Abdullah, Mohamed Nader A Rahman
Department of Medical Equipment Technology, College of Applied Medical Sciences, Majmaah University, Majmaah 11952, Saudi Arabia.
Medical Planning of Ministry of Health, Riyadh 11176, Saudi Arabia.
Polymers (Basel). 2025 Apr 21;17(8):1125. doi: 10.3390/polym17081125.
This study investigates the AI-assisted analyses of radiation disinfection effects on the mechanical properties of recycled date kernel powder-epoxy composites for medical applications, utilizing Euclidean distances and the k-nearest neighbor (KNN) algorithm. Tensile and compression tests were conducted on twenty specimens following ASTM standards, with the data analyzed using a -test to evaluate the impact of the UVC disinfection process on the material's mechanical properties. The application of AI through the KNN algorithm successfully identified the three most representative curves out of five for both tensile and compression tests. This targeted curve selection minimized variability and focused on the most relevant data, enhancing the reliability of the analysis. Following the application of UVC and AI, tensile tests showed a 20-30% increase in ultimate stress. Similarly, compression tests revealed a 25% increase in transition stress, an 18-22% improvement in ultimate stress, and approximately a 12% rise in fracture stress. This research underscores the potential of combining AI, sustainable materials, and UVC technology to develop advanced composites for medical applications. The proposed methodology offers a robust framework for evaluating material performance while promoting the creation of eco-friendly, high-performance materials that meet the stringent standards of medical use.
本研究利用欧几里得距离和k近邻(KNN)算法,对用于医疗应用的再生枣核粉-环氧树脂复合材料的辐射消毒效果对其机械性能的影响进行了人工智能辅助分析。按照ASTM标准对20个试样进行了拉伸和压缩试验,并使用t检验对数据进行分析,以评估紫外线C消毒过程对材料机械性能的影响。通过KNN算法应用人工智能成功地从拉伸和压缩试验的五条曲线中识别出三条最具代表性的曲线。这种有针对性的曲线选择最大限度地减少了变异性,并聚焦于最相关的数据,提高了分析的可靠性。在应用紫外线C和人工智能后,拉伸试验显示极限应力增加了20%-30%。同样,压缩试验显示过渡应力增加了25%,极限应力提高了18%-22%,断裂应力提高了约12%。本研究强调了将人工智能、可持续材料和紫外线C技术相结合以开发用于医疗应用的先进复合材料的潜力。所提出的方法为评估材料性能提供了一个强大的框架,同时促进了符合严格医疗使用标准的环保、高性能材料的创造。