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Title: | Modeling compressive strength of recycled aggregate concrete |
Authors: | Deshpande Neela, Kulkarni S.S. Londhe Shreenivas |
Keywords: | Recycled aggregates Recycled aggregate concrete Artificial Neural Network Model Tree |
Issue Date: | Dec-2014 |
Publisher: | Elsevier |
Abstract: | In the recent past Artificial Neural Networks (ANN) have emerged out as a promising technique for predicting compressive strength of concrete. In the present study back propagation was used to predict the 28 day compressive strength of recycled aggregate concrete (RAC) along with two other data driven techniques namely Model Tree (MT) and Non-linear Regression (NLR). Recycled aggregate is the current need of the hour owing to its environmental friendly aspect of re-use of the construction waste. The study observed that, prediction of 28 day compressive strength of RAC was done better by ANN than NLR and MT. The input parameters were cubic meter proportions of Cement, Natural fine aggregate, Natural coarse Aggregates, recycled aggregates, Admixture and Water (also called as raw data). The study also concluded that ANN performs better when non-dimensional parameters like Sand–Aggregate ratio, Water–total materials ratio, Aggregate–Cement ratio, Water–Cement ratio and Replacement ratio of natural aggregates by recycled aggregates, were used as additional input parameters. Study of each network developed using raw data and each non dimensional parameter facilitated in studying the impact of each parameter on the performance of the models developed using ANN, MT and NLR as well as performance of the ANN models developed with limited number of inputs. The results indicate that ANN learn from the examples and grasp the fundamental domain rules governing strength of concrete. |
Description: | Scarcity of natural resources is a growing environmental concern and there is a need to reduce the impact of thisconcrete mix the concrete is termed as recycled aggregate concrete (RAC). Several researches have studied the influence of RA on concrete properties such as compressive strength, tensile strength, etc. (Ajdukiewiez and Kliszczewicz, 2002; Hansen and Narud, 1983; Tsung et al., 2006; Ryu, 2002). RA is heterogeneous in nature as they contain attached mortar to the aggregates. This property of RA limits its use in concrete, as it decreases the compressive strength of RAC. Surrounding mortar on the aggregate tends to increase water absorption and reduce the density of RAC and becomes the governing criteria for the compressive strength of concrete with recycled aggregates (Ajdukiewiez and Kliszczewicz, 2002; Hansen and Narud, 1983; Tsung et al., 2006; Ryu, 2002). It was also observed that the workability of concrete made using RA is less as compared to workability of concrete made using normal aggregates may be due to more water absorption in the former (Yong and Teo, 2009). To add to it RA in concrete as a replacement to natural aggregates tends to reduce the compressive strength of concrete may be due to weaker bond between mortar and RCA. (Akbari et al., 2011). A similar study concluded that using different recycled aggregates RA replacement ratios,W/C ratios and RAs with different strengths and different moisture conditions, the strength of RAC was about 10–25% lower than that of natural aggregate concrete (NAC) and thus 100% replacement of RA tends to lower the strength of concrete (Ajdukiewiez and Kliszczewicz, 2002; Hansen and Narud, 1983; Tsung et al., 2006; Ryu, 2002) and therefore should be avoided. |
URI: | http://localhost:8080/xmlui/handle/1/225 |
Appears in Collections: | Faculty Publication |
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File | Description | Size | Format | |
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Modeling compressive strength of recycled aggregate concrete.pdf | 2.25 MB | Adobe PDF | View/Open |
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