Civil Engineering Journal
Vol 4, No 12 (2018): December

Anticipating the Compressive Strength of Hydrated Lime Cement Concrete Using Artificial Neural Network Model

Chioma Temitope Gloria Awodiji (Lecturer, Department of Civil Engineering, Federal University of Technology Owerri, P.M.B 1526 Owerri, Imo State, Nigeria)
Davis Ogbonnaya Onwuka (Associate Professor, Department of Civil Engineering, Federal University of Technology Owerri, P.M.B 1526 Owerri, Imo State, Nigeria.)
Chinenye Okere (Senior Lecturer, Department of Civil Engineering, Federal University of Technology Owerri, P.M.B 1526 Owerri, Imo State, Nigeria.)
Owus Ibearugbulem (Senior Lecturer, Department of Civil Engineering, Federal University of Technology Owerri, P.M.B 1526 Owerri, Imo State, Nigeria.)



Article Info

Publish Date
24 Dec 2018

Abstract

In this research work, the levernberg Marquardt back propagation neural network was adequately trained to understand the relationship between the 28th day compressive strength values of hydrated lime cement concrete and their corresponding mix ratios with respect to curing age. Data used for the study were generated experimentally. A total of a hundred and fourteen (114) training data set were presented to the network. Eighty (80) of these were used for training the network, seventeen (17) were used for validation, and another seventeen (17) were used for testing the network's performance. Six (6) data set were left out and later used to test the adequacy of the network predictions. The outcome of results of the created network was close to that of the experimental efforts. The lowest and highest correlation coefficient recorded for all data samples used for developing the network were 0.901 and 0.984 for the test and training samples respectively. These values were close to 1. T-value obtained from the adequacy test carried out between experimental and model generated data was 1.437. This is less than 2.064, which is the T values from statistical table at 95% confidence limit. These results proved that the network made reliable predictions. Maximum compressive strength achieved from experimental works was 30.83N/mm2 at a water-cement ratio of 0.562 and a percentage replacement of ordinary portland cement with hydrated lime of 18.75%. Generally, for hydrated lime to be used in making structural concrete, ordinary portland cement percentage replacement with hydrated lime must not be up to 30%. With the use of the developed artificial neural network model, mix design procedure for hydrated lime cement concrete can be carried out with lesser time and energy requirements, when compared to the traditional method. This is because, the need to prepare trial mixes that will be cured, and tested in the laboratory, will no longer be required.

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Journal Info

Abbrev

cej

Publisher

Subject

Civil Engineering, Building, Construction & Architecture

Description

Civil Engineering Journal is a multidisciplinary, an open-access, internationally double-blind peer -reviewed journal concerned with all aspects of civil engineering, which include but are not necessarily restricted to: Building Materials and Structures, Coastal and Harbor Engineering, ...