TY - JOUR
T1 - Experimental and modelling of alkali-activated mortar compressive strength using hybrid support vector regression and genetic algorithm
AU - Al-Sodani, Khaled A.Alawi
AU - Adewumi, Adeshina Adewale
AU - Ariffin, Mohd Azreen Mohd
AU - Maslehuddin, Mohammed
AU - Ismail, Mohammad
AU - Salami, Hamza Onoruoiza
AU - Owolabi, Taoreed O.
AU - Mohamed, Hatim Dafalla
N1 - Publisher Copyright:
© 2021 by the authors.
PY - 2021/6/1
Y1 - 2021/6/1
N2 - This paper presents the outcome of work conducted to develop models for the prediction of compressive strength (CS) of alkali-activated limestone powder and natural pozzolan mortar (AALNM) using hybrid genetic algorithm (GA) and support vector regression (SVR) algorithm, for the first time. The developed hybrid GA-SVR-CS1, GA-SVR-CS3, and GA-SVR-CS14 models are capable of estimating the one-day, three-day, and 14-day compressive strength, respectively, of AALNM up to 96.64%, 90.84%, and 93.40% degree of accuracy as measured on the basis of correlation coefficient between the measured and estimated values for a set of data that is excluded from training and testing phase of the model development. The developed hybrid GA-SVR-CS28E model estimates the 28-days compressive strength of AALNM using the 14-days strength, it performs better than hybrid GA-SVR-CS28C model, hybrid GA-SVR-CS28B model, hybrid GA-SVR-CS28A model, and hybrid GA-SVR-CS28D model that respectively estimates the 28-day compressive strength using three-day strength, one day-strength, all the descriptors and seven day-strength with performance improvement of 103.51%, 124.47%, 149.94%, and 262.08% on the basis of root mean square error. The outcome of this work will promote the use of environment-friendly concrete with excellent strength and provide effective as well as efficient ways of modeling the compressive strength of concrete.
AB - This paper presents the outcome of work conducted to develop models for the prediction of compressive strength (CS) of alkali-activated limestone powder and natural pozzolan mortar (AALNM) using hybrid genetic algorithm (GA) and support vector regression (SVR) algorithm, for the first time. The developed hybrid GA-SVR-CS1, GA-SVR-CS3, and GA-SVR-CS14 models are capable of estimating the one-day, three-day, and 14-day compressive strength, respectively, of AALNM up to 96.64%, 90.84%, and 93.40% degree of accuracy as measured on the basis of correlation coefficient between the measured and estimated values for a set of data that is excluded from training and testing phase of the model development. The developed hybrid GA-SVR-CS28E model estimates the 28-days compressive strength of AALNM using the 14-days strength, it performs better than hybrid GA-SVR-CS28C model, hybrid GA-SVR-CS28B model, hybrid GA-SVR-CS28A model, and hybrid GA-SVR-CS28D model that respectively estimates the 28-day compressive strength using three-day strength, one day-strength, all the descriptors and seven day-strength with performance improvement of 103.51%, 124.47%, 149.94%, and 262.08% on the basis of root mean square error. The outcome of this work will promote the use of environment-friendly concrete with excellent strength and provide effective as well as efficient ways of modeling the compressive strength of concrete.
KW - Compressive strength
KW - Genetic algorithm
KW - Limestone powder
KW - Natural pozzolan
KW - Support vector regression
UR - https://www.scopus.com/pages/publications/85107792000
U2 - 10.3390/ma14113049
DO - 10.3390/ma14113049
M3 - Article
AN - SCOPUS:85107792000
SN - 1996-1944
VL - 14
JO - Materials
JF - Materials
IS - 11
M1 - 3049
ER -