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Steel and Composite Structures Volume 52, Number 6, September 25 2024 , pages 621-626 DOI: https://doi.org/10.12989/scs.2024.52.6.621 |
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Artificial intelligence design for dependence of size surface effects on advanced nanoplates through theoretical framework |
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Na Tang, Canlin Zhang, Zh. Yuan and A. Yvaz
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Abstract | ||
The work researched the application of artificial intelligence to the design and analysis of advanced nanoplates, with a particular emphasis on size and surface effects. Employing an integrated theoretical framework, this study developed a more accurate model of complex nanoplate behavior. The following analysis considers nanoplates embedded in a Pasternak viscoelastic fractional foundation and represents the important step in understanding how nanoscale structures may respond under dynamic loads. Surface effects, significant for nanoscale, are included through the Gurtin-Murdoch theory in order to better describe the influence of surface stresses on the overall behavior of nanoplates. In the present analysis, the modified couple stress theory is utilized to capture the size-dependent behavior of nanoplates, while the Kelvin-Voigt model has been incorporated to realistically simulate the structural damping and energy dissipation. This paper will take a holistic approach in using sinusoidal shear deformation theory for the accurate replication of complex interactions within the nano-structure system. Addressing different aspectsof the dynamic behavior by considering the length scale parameter of the material, this work aims at establishing which one of the factors imposes the most influence on the nanostructure response. Besides, the surface stresses that become increasingly critical in nanoscale dimensions are considered in depth. AI algorithms subsequently improve the prediction of the mechanical response by incorporating other phenomena, including surface energy, material inhomogeneity, and size-dependent properties. In these AI- enhanced solutions, the improvement of precision becomes considerable compared to the classical solution methods and hence offers new insights into the mechanical performance of nanoplates when applied in nanotechnology and materials science. | ||
Key Words | ||
artificial intelligence design; dynamic response; nanoplates; surface effects; theoretical framewor | ||
Address | ||
Na Tang:Art School, Tianjin University of Commerce, Tianjin 300400, China Canlin Zhang:Florida State University, U.S.A. Zh. Yuan:Department of Civil Engineering, Dubai Company A. Yvaz:Department of Civil Engineering, Dubai Company | ||