Abstract

Not only can waste rubber enhance the properties of concrete (e.g., its dynamic damping and abrasion resistance capacity), its rational utilisation can also dramatically reduce environmental pollution and carbon footprint globally. This study is the world’s first to develop a novel machine learning-aided design and prediction of environmentally friendly concrete using waste rubber, which can drive sustainable development of infrastructure systems towards net-zero emission, which saves time and cost. In this study, artificial neuron networks (ANN) have been established to determine the design relationship between various concrete mix composites and their multiple mechanical properties simultaneously. Interestingly, it is found that almost all previous studies on the ANNs could only predict one kind of mechanical property. To enable multiple mechanical property predictions, ANN models with various architectural algorithms, hidden neurons and layers are built and tailored for benchmarking in this study. Comprehensively, all three hundred and fifty-three experimental data sets of rubberised concrete available in the open literature have been collected. In this study, the mechanical properties in focus consist of the compressive strength at day 7 (CS7), the compressive strength at day 28 (CS28), the flexural strength (FS), the tensile strength (TS) and the elastic modulus (EM). The optimal ANN architecture has been identified by customising and benchmarking the algorithms (Levenberg–Marquardt (LM), Bayesian Regularisation (BR) and Scaled Conjugate Gradient (SCG)), hidden layers (1–2) and hidden neurons (1–30). The performance of the optimal ANN architecture has been assessed by employing the mean squared error (MSE) and the coefficient of determination (R2). In addition, the prediction accuracy of the optimal ANN model has ben compared with that of the multiple linear regression (MLR).

Highlights

  • IntroductionRubber or elastomer is a common material and is widely used as an essential material in the manufacture of tires

  • The optimal artificial neuron networks (ANN) architecture is confirmed by embarking on the ANN architecture selection steps mentioned in the previous section

  • The mean squared error (MSE) and R2 values of the testing sets are defined as the performance evaluation index of all ANN architectures with

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Summary

Introduction

Rubber or elastomer is a common material and is widely used as an essential material in the manufacture of tires. The generation of waste rubber in the EU is estimated to be more than 1.43 billion tons per year and has been growing at a rate comparable to the EU’s economic growth. The utilisation of waste rubber resources is seen as an effective method for reducing their adverse effects on the environment, maintaining natural resources and reducing the demand for storage space [3]. The main methods for the disposal of waste rubber are incineration and burial. There is a detrimental effect on the environment when waste rubber is burned because of the emissions of carbon dioxide and cyanide.

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