Measurement of the Compressive Strength of Concrete Using Modeling of Deep Hybrid Forest Regression

Autor: Rajprasad, J., Priya Rachel, P., Arulselvan, S., Arul, D., Ramesh Kumar, G., Pallavi, H. J., Sivaraja, M., Singh, Vinay Kumar, Gebreamlak, Getachew
Jazyk: angličtina
Rok vydání: 2023
Zdroj: Advances in Materials Science and Engineering.
ISSN: 1687-8434
DOI: 10.1155/2023/3766214
Popis: The paper proposes a deep hybrid forest regression-based modeling method for measuring the compressive strength (CS) of concrete. Then, the reduced feature vector is used as input to train multiple subforest models (SFM), the predicted values are selected from multiple subforests via the KNN (K-nearest neighbor) method to combine them to obtain the layer regression vector (LRV), and it is combined with the reduced feature vector to obtain the improved LRV, then the output of this layer is taken; second, the regression vector (RV) of the input layer enhancement layer is used as input to obtain the output of the second layer FM, and the steps are repeated until the output of the input layer FM is complete. Finally, the output of the FM of the first layer is obtained. Several SFMs are trained and the result is obtained. The final prognosis is obtained by arithmetically averaging the forecast results of the SFMs of this layer.
Databáze: OpenAIRE
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