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Keywords: machine learning
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Journal Articles
Prediction of mechanical properties of magnesium alloys through machine learning: a review
Available to Purchase
Journal:
Emerging Materials Research
Emerging Materials Research (2026) 15 (2): 181–197.
Published: 24 February 2026
...Packia Antony Amalan A.; Renugadevi N. The present work reviews recent research on the mechanical properties of magnesium (Mg)-based materials using machine learning ( ML ) and deep learning methods. Magnesium-based materials are one of the important lightweight and biodegradable materials due...
Journal Articles
Extreme learning machine to foretell the deflection in plain cement, steel-reinforced, and bamboo-reinforced concrete beams
Available to Purchase
Journal:
Emerging Materials Research
Emerging Materials Research (2025) 14 (1): 12–27.
Published: 22 January 2025
... Absolute Error of 0.0052, Mean Absolute Percentage Error of 0.0998, and Root Mean Square Error of 0.01694. These results suggest that extreme learning machine is an efficient machine learning algorithm for predicting the deflection behavior of different reinforced concrete beams, providing a reliable...
