Redirigiendo al acceso original de articulo en 20 segundos...
Inicio  /  Buildings  /  Vol: 12 Par: 5 (2022)  /  Artículo
ARTÍCULO
TITULO

Compressive Strength Prediction of Fly Ash Concrete Using Machine Learning Techniques

Yimin Jiang    
Hangyu Li and Yisong Zhou    

Resumen

It is time-consuming and uneconomical to estimate the strength properties of fly ash concrete using conventional compression experiments. For this reason, four machine learning models?extreme learning machine, random forest, original support vector regression (SVR), and the SVR model optimized by a grid search algorithm?were proposed to predict the compressive strength of fly ash concrete on 270 group datasets. The prediction results of the proposed model were compared using five evaluation indices, and the relative importance and effect of each input variable on the output compressive strength were analyzed. The results showed that the optimized hybrid model showed the best predictive behavior compared to the other three models, and can be used to forecast the compressive strength of fly ash concrete at a specific mix design ratio before conducting laboratory compression tests, which will save costs on the specimens and laboratory tests. Among the eight input variables listed, age and water were the two relatively most important features with superplasticizer and fly ash being of weaker relative importance.

 Artículos similares

       
 
Ruixin Jiang and Zhengjun Wang    
The massive accumulation of graphite tailings causes serious environmental pollution, mainly from heavy metal pollution. Therefore, this article introduces a method of using graphite tailings as a high-content main material, cement as a small component o... ver más
Revista: Buildings

 
Sanghee Kim, Donghyuk Jung, Ju-Yong Kim and Ju-Hyun Mun    
Although accurately estimating the early age compressive strength of concrete is essential for the timely removal of formwork and the advancement of construction processes, it is challenging to estimate it in cool, cold, hot, or unmanaged conditions. Var... ver más
Revista: Buildings

 
Wenhua Yuan, Lianjie Ji, Long Meng, Min Fang and Xiangchi Zhang    
Pervious concrete is an innovative eco-friendly construction material. Through the application of mineral admixtures and microscopic analysis to optimize its performance and analyze its mechanisms, its traits as a sustainable building option may be furth... ver más
Revista: Buildings

 
Xiaoyun Song, Heping Zheng, Lei Xu, Tingting Xu and Qiuyu Li    
An investigation was carried out to study the influence of two types of anti-washout admixtures (AWAs) on the performance of underwater concrete, specifically, workability and washout resistance. The tested AWAs were hydroxypropyl methylcellulose (HPMC) ... ver más
Revista: Buildings

 
Kai-Lin Huang, Yang Song and Yan-Min Sheng    
In order to alleviate the increasing serious urban waterlogging problem, the rainstorm resistance of a new self-compacting recycled pervious concrete (NSRPC) under the coupling of freeze?thaw (F-T) and fatigue is studied. The once-in-a-century rainfall w... ver más
Revista: Buildings