Geopolymer Concrete Crack Prediction System Using Machine Learning and Image Processing
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Abstract
Geopolymer concrete is a sustainable alternative to conventional cement concrete due to re-duced environmental impact and improved durability. However, crack formation remains a major challenge affecting structural safety and long-term service life.
This paper presents a machine learning based crack detection and prediction system using im-age processing techniques. Convolutional Neural Network (CNN), Support Vector Machine (SVM), and Random Forest algorithms are used for crack classification and severity analysis.
Experimental results achieved an accuracy of 94.5%, proving the effectiveness and reliability of the proposed intelligent monitoring system.