TY - JOUR AU - M Anupama AU - Santhosh G AU - G Vidhya AU - M Suchithra PY - 2026 DA - 2026/01/11 TI - Predictive Modeling of Material Properties Using Nanotechnology and Artificial Intelligence Techniques JO - Global Journal of Engineering Innovations and Interdisciplinary Research VL - 6 IS - 1 AB - Accurate prediction of material properties is essential for accelerating the development of advanced engineering materials, particularly those incorporating nanoscale features. Traditional experimental and physics-based modeling approaches, while reliable, are often limited by high computational cost and the complexity of capturing nonlinear nanoscale interactions. This study presents an integrated predictive modeling framework that combines nanotechnology-derived material descriptors with artificial intelligence techniques to estimate key material properties. Nanoscale parameters such as particle size, volume fraction, and structural characteristics are used as inputs to train machine learning models capable of learning complex structure–property relationships. The performance of AI-based models is evaluated and compared with conventional empirical and physics-based approaches. Results demonstrate that the artificial intelligence–driven framework achieves higher prediction accuracy and significantly reduced computational effort while maintaining consistency with experimental observations. The proposed approach highlights the potential of combining nanotechnology and artificial intelligence to support efficient material design and optimization in advanced engineering applications. SN - 3066-1226 UR - https://dx.doi.org/10.33425/3066-1226.1194 DO - 10.33425/3066-1226.1194