Materials, Free Full-Text

Description

There have been abundant experimental studies exploring ultra-high-performance concrete (UHPC) in recent years. However, the relationships between the engineering properties of UHPC and its mixture composition are highly nonlinear and difficult to delineate using traditional statistical methods. There is a need for robust and advanced methods that can streamline the diverse pertinent experimental data available to create predictive tools with superior accuracy and provide insight into its nonlinear materials science aspects. Machine learning is a powerful tool that can unravel underlying patterns in complex data. Accordingly, this study endeavors to employ state-of-the-art machine learning techniques to predict the compressive strength of UHPC using a comprehensive experimental database retrieved from the open literature consisting of 810 test observations and 15 input features. A novel approach based on tabular generative adversarial networks was used to generate 6513 plausible synthetic data for training robust machine learning models, including random forest, extra trees, and gradient boosting regression. While the models were trained using the synthetic data, their ability to generalize their predictions was tested on the 810 experimental data thus far unknown and never presented to the models. The results indicate that the developed models achieved outstanding predictive performance. Parametric studies using the models were able to provide insight into the strength development mechanisms of UHPC and the significance of the various influential parameters.

Materials big data standardization and AI-based materials

Materials, Free Full-Text, morenting auto spray

Materials Free Full-Text A Simple, Quick And Eco-Friendly, 49% OFF

Materials, Free Full-Text, Carbon Felt

Phonogram Booklets Set 2 Montessori Language Printable Montessori

Merchandising Materials: Boost Your Circulation Bibliography

Material Icons Guide, Google Fonts

1.5 Circle Label Template New Materials Free Full Text Graphene Quantum Dot Based

Dispersion-free highly accurate color recognition using excitonic

Materials, Free Full-Text

Materials, Free Full-Text, Carbon Felt

Pottery materials : their composition, preparation and use : Colbeck, John : Free Download, Borrow, and Streaming : Internet Archive

Phonics International on X: Phonics Assessment Tracker added to

$ 7.99USD
Score 4.7(430)
In stock
Continue to book