Compressive Strength Prediction of Alkali-Activated Slag Concretes by Using Artificial Neural Network (ANN) and Alternating Conditional Expectation (ACE)

Compressive strength of alkali-activated slag (AAS) concrete is influenced by multi-factors in a nonlinear way. Both artificial neural network (ANN) and alternating conditional expectation (ACE) models of 3-day (3 d) and 28-day (28 d) compressive strength of AAS were established in this study by usi...

Full description

Saved in:
Bibliographic Details
Main Authors: Xiaoyu Qin, Qianmin Ma, Rongxin Guo, Zhigang Song, Zhiwei Lin, Haoxue Zhou
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Civil Engineering
Online Access:http://dx.doi.org/10.1155/2022/8214859
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832549232766091264
author Xiaoyu Qin
Qianmin Ma
Rongxin Guo
Zhigang Song
Zhiwei Lin
Haoxue Zhou
author_facet Xiaoyu Qin
Qianmin Ma
Rongxin Guo
Zhigang Song
Zhiwei Lin
Haoxue Zhou
author_sort Xiaoyu Qin
collection DOAJ
description Compressive strength of alkali-activated slag (AAS) concrete is influenced by multi-factors in a nonlinear way. Both artificial neural network (ANN) and alternating conditional expectation (ACE) models of 3-day (3 d) and 28-day (28 d) compressive strength of AAS were established in this study by using the data reported in related literature, where alkali concentration of activator (Na2O%), modulus of activator (Ms), water/binder ratio (W/B), surface area of slag (SA), and basicity index of slag (Kb) were taken as input parameters. The models were employed later to predict 3 d and 28 d compressive strength of AAS concretes, respectively, and the results were validated by experimental work. The results show that both the ANN and the ACE models had adequate accuracy, no matter 3 d or 28 d compressive strength was considered. Compared to the 3 d compressive strength, due to data scattering that increased with the increase of data size, both the models did not yield a higher accuracy in the case of 28 d strength. However, also due to the increase in data size, both the models were more feasible to implement 28 d strength prediction as a result of sufficient learning and training during modeling. In addition, based on ACE analysis, the weight-influencing compressive strength of AAS decreased in a sequence of Na2O% > Ms > W/B > Kb > SA. If data size was sufficiently large, it was more suitable to establish an ANN model for compressive strength prediction of AAS concretes. Otherwise, ACE could be considered as an alternative to yield an acceptable result.
format Article
id doaj-art-5e748170efa94532be5ebbf4bdf3d7ea
institution Kabale University
issn 1687-8094
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Advances in Civil Engineering
spelling doaj-art-5e748170efa94532be5ebbf4bdf3d7ea2025-02-03T06:11:50ZengWileyAdvances in Civil Engineering1687-80942022-01-01202210.1155/2022/8214859Compressive Strength Prediction of Alkali-Activated Slag Concretes by Using Artificial Neural Network (ANN) and Alternating Conditional Expectation (ACE)Xiaoyu Qin0Qianmin Ma1Rongxin Guo2Zhigang Song3Zhiwei Lin4Haoxue Zhou5Yunnan Key Laboratory of Disaster Reduction in Civil EngineeringYunnan Key Laboratory of Disaster Reduction in Civil EngineeringYunnan Key Laboratory of Disaster Reduction in Civil EngineeringYunnan Key Laboratory of Disaster Reduction in Civil EngineeringYunnan Key Laboratory of Disaster Reduction in Civil EngineeringYunnan Key Laboratory of Disaster Reduction in Civil EngineeringCompressive strength of alkali-activated slag (AAS) concrete is influenced by multi-factors in a nonlinear way. Both artificial neural network (ANN) and alternating conditional expectation (ACE) models of 3-day (3 d) and 28-day (28 d) compressive strength of AAS were established in this study by using the data reported in related literature, where alkali concentration of activator (Na2O%), modulus of activator (Ms), water/binder ratio (W/B), surface area of slag (SA), and basicity index of slag (Kb) were taken as input parameters. The models were employed later to predict 3 d and 28 d compressive strength of AAS concretes, respectively, and the results were validated by experimental work. The results show that both the ANN and the ACE models had adequate accuracy, no matter 3 d or 28 d compressive strength was considered. Compared to the 3 d compressive strength, due to data scattering that increased with the increase of data size, both the models did not yield a higher accuracy in the case of 28 d strength. However, also due to the increase in data size, both the models were more feasible to implement 28 d strength prediction as a result of sufficient learning and training during modeling. In addition, based on ACE analysis, the weight-influencing compressive strength of AAS decreased in a sequence of Na2O% > Ms > W/B > Kb > SA. If data size was sufficiently large, it was more suitable to establish an ANN model for compressive strength prediction of AAS concretes. Otherwise, ACE could be considered as an alternative to yield an acceptable result.http://dx.doi.org/10.1155/2022/8214859
spellingShingle Xiaoyu Qin
Qianmin Ma
Rongxin Guo
Zhigang Song
Zhiwei Lin
Haoxue Zhou
Compressive Strength Prediction of Alkali-Activated Slag Concretes by Using Artificial Neural Network (ANN) and Alternating Conditional Expectation (ACE)
Advances in Civil Engineering
title Compressive Strength Prediction of Alkali-Activated Slag Concretes by Using Artificial Neural Network (ANN) and Alternating Conditional Expectation (ACE)
title_full Compressive Strength Prediction of Alkali-Activated Slag Concretes by Using Artificial Neural Network (ANN) and Alternating Conditional Expectation (ACE)
title_fullStr Compressive Strength Prediction of Alkali-Activated Slag Concretes by Using Artificial Neural Network (ANN) and Alternating Conditional Expectation (ACE)
title_full_unstemmed Compressive Strength Prediction of Alkali-Activated Slag Concretes by Using Artificial Neural Network (ANN) and Alternating Conditional Expectation (ACE)
title_short Compressive Strength Prediction of Alkali-Activated Slag Concretes by Using Artificial Neural Network (ANN) and Alternating Conditional Expectation (ACE)
title_sort compressive strength prediction of alkali activated slag concretes by using artificial neural network ann and alternating conditional expectation ace
url http://dx.doi.org/10.1155/2022/8214859
work_keys_str_mv AT xiaoyuqin compressivestrengthpredictionofalkaliactivatedslagconcretesbyusingartificialneuralnetworkannandalternatingconditionalexpectationace
AT qianminma compressivestrengthpredictionofalkaliactivatedslagconcretesbyusingartificialneuralnetworkannandalternatingconditionalexpectationace
AT rongxinguo compressivestrengthpredictionofalkaliactivatedslagconcretesbyusingartificialneuralnetworkannandalternatingconditionalexpectationace
AT zhigangsong compressivestrengthpredictionofalkaliactivatedslagconcretesbyusingartificialneuralnetworkannandalternatingconditionalexpectationace
AT zhiweilin compressivestrengthpredictionofalkaliactivatedslagconcretesbyusingartificialneuralnetworkannandalternatingconditionalexpectationace
AT haoxuezhou compressivestrengthpredictionofalkaliactivatedslagconcretesbyusingartificialneuralnetworkannandalternatingconditionalexpectationace