ANN modelling approach for predicting SCC properties - Research considering Algerian experience .Part II. Effects of aggregates types and contents
The objective of this investigation is to illustrate the effect of aggregates types and contents on fresh and hardened properties of self-compacting concrete (SCC) considering Algerian experience. Based on experimental data available in the literature, Artificial neural network (ANN) models are est...
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doaj-12f6f2fb6bcc4e4286a3428bc3f8e0e72021-06-29T15:33:03ZengUniversity Amar Telidji of LaghouatJournal of Building Materials and Structures2353-00572021-06-018110.5281/zenodo.5039914ANN modelling approach for predicting SCC properties - Research considering Algerian experience .Part II. Effects of aggregates types and contentsMohamed Sahraoui0Tayeb Bouziani1Structures Rehabilitation and Materials Laboratory (SREML), University Amar Telidji, Laghouat, Algeria.Structures Rehabilitation and Materials Laboratory (SREML), University Amar Telidji, Laghouat, Algeria. The objective of this investigation is to illustrate the effect of aggregates types and contents on fresh and hardened properties of self-compacting concrete (SCC) considering Algerian experience. Based on experimental data available in the literature, Artificial neural network (ANN) models are established to illustrate the variation of aggregate types and contents (sand and gravel) in binary and ternary contour plots. Modelling results concerning the effect of sand types and proportions in binary and ternary combinations show the beneficial effect of river sand (RS) and crushed sand (CS) on slump flow. The highest L-Box ratio was obtained for mixtures composed of 50% of both RS and CS for binary and ternary mixtures. The increase in CS content enhance static stability, while the increase in RS gives higher compressive strength at 28 days. Concerning the study of aggregate sizes and contents, it was found that the increase of sand content leads to an increase in flowability and a decrease in static stability. An increase in gravel content leads to a decrease in passing ability, while a significant improvement in viscosity, static stability and mechanical strength with an increase in gravel content were observed. http://journals.lagh-univ.dz/index.php/jbms/article/view/778SCCANNaggregates types and contentscontour plotsfresh and hardened properties |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mohamed Sahraoui Tayeb Bouziani |
spellingShingle |
Mohamed Sahraoui Tayeb Bouziani ANN modelling approach for predicting SCC properties - Research considering Algerian experience .Part II. Effects of aggregates types and contents Journal of Building Materials and Structures SCC ANN aggregates types and contents contour plots fresh and hardened properties |
author_facet |
Mohamed Sahraoui Tayeb Bouziani |
author_sort |
Mohamed Sahraoui |
title |
ANN modelling approach for predicting SCC properties - Research considering Algerian experience .Part II. Effects of aggregates types and contents |
title_short |
ANN modelling approach for predicting SCC properties - Research considering Algerian experience .Part II. Effects of aggregates types and contents |
title_full |
ANN modelling approach for predicting SCC properties - Research considering Algerian experience .Part II. Effects of aggregates types and contents |
title_fullStr |
ANN modelling approach for predicting SCC properties - Research considering Algerian experience .Part II. Effects of aggregates types and contents |
title_full_unstemmed |
ANN modelling approach for predicting SCC properties - Research considering Algerian experience .Part II. Effects of aggregates types and contents |
title_sort |
ann modelling approach for predicting scc properties - research considering algerian experience .part ii. effects of aggregates types and contents |
publisher |
University Amar Telidji of Laghouat |
series |
Journal of Building Materials and Structures |
issn |
2353-0057 |
publishDate |
2021-06-01 |
description |
The objective of this investigation is to illustrate the effect of aggregates types and contents on fresh and hardened properties of self-compacting concrete (SCC) considering Algerian experience. Based on experimental data available in the literature, Artificial neural network (ANN) models are established to illustrate the variation of aggregate types and contents (sand and gravel) in binary and ternary contour plots. Modelling results concerning the effect of sand types and proportions in binary and ternary combinations show the beneficial effect of river sand (RS) and crushed sand (CS) on slump flow. The highest L-Box ratio was obtained for mixtures composed of 50% of both RS and CS for binary and ternary mixtures. The increase in CS content enhance static stability, while the increase in RS gives higher compressive strength at 28 days. Concerning the study of aggregate sizes and contents, it was found that the increase of sand content leads to an increase in flowability and a decrease in static stability. An increase in gravel content leads to a decrease in passing ability, while a significant improvement in viscosity, static stability and mechanical strength with an increase in gravel content were observed.
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topic |
SCC ANN aggregates types and contents contour plots fresh and hardened properties |
url |
http://journals.lagh-univ.dz/index.php/jbms/article/view/778 |
work_keys_str_mv |
AT mohamedsahraoui annmodellingapproachforpredictingsccpropertiesresearchconsideringalgerianexperiencepartiieffectsofaggregatestypesandcontents AT tayebbouziani annmodellingapproachforpredictingsccpropertiesresearchconsideringalgerianexperiencepartiieffectsofaggregatestypesandcontents |
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