Abstract

Sustainable construction contributed to the usage of recycled and waste materials to substitute conventional concrete. This research focuses on prediction of normalized bond strength of cement concrete substituted by large amounts of waste materials and products with strong mechanical properties and sustainability. It also emphases on using analytical model for the prediction of bond strength of the green concrete, so that there is a reduction in the cost of construction, con-serve energy, and it will lead to a reduction of CO2 production from cement industries within reliable limits. In this paper machine learning approach has been used to predict the normalized bond strength of green and sustainable concrete. Machine learning empowers machines to learn from their experiences and data provided. The system analyses the datasets and finds different patterns formed in the given data. Then, based on its learnings the machine can make certain predictions. In civil engineering application, a special computing technique called the Machine learning (ML) is in huge demand. ANN is a soft computing technique that learns from previous situations and adapts without constraints to a new environment. In this work, a ML network model for prediction of normalized bond strength of concrete has been illustrated. Different sets of data based upon several concrete design mixes were taken from technical literature and were fed to the model. The model is then trained for prediction, which are being influenced by several input attributes and were jotted down a linear regression analysis.

Highlights

  • Machine learning is an area of study which helps computers or systems to learn from their experiences and improve

  • In this study we developed two machine learning models to predict the normalised bond strength of steel

  • The first model was multiple linear regression model and the other was CART regression model. Both the models were good as multiple linear regression model showed on accuracy of 86.82 percent and the CART regression model was 86.22 percent precise as depicted by their R-squared values

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Summary

Introduction

Machine learning is an area of study which helps computers or systems to learn from their experiences and improve. Arthur Samuel defines machine learning as “the field of study that gives computers the ability to learn without being explicitly programmed”. This definition given by Arthur Samuel is not a very formal definition of machine learning [1,3]. The machine has to identify the logic between the pairs and give the other value as a prediction to the user [4, 7]. This process of finding or evaluating the logic, and learning from experiences is what machine learning is all about

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