Machine Learning Prediction of the Load Evolution in Three‑Point Bending Tests of Marble (Mining, Metallurgy & Exploration)

Society for Mining, Metallurgy & Exploration
K. KAKLIS O. SAUBI R. JAMISOLA Z. Agioutantis
Organization:
Society for Mining, Metallurgy & Exploration
Pages:
9
File Size:
1801 KB
Publication Date:
Sep 7, 2022

Abstract

Three-point bending (TPB) tests were conducted on prismatic Nestos marble (Greece) specimens. The specimens were instrumented with piezoelectric sensors, and comprehensive recordings of acoustic emission (AE) signals were obtained. Machine learning in the form of artificial neural networks (ANNs) was then applied in an effort to investigate whether specimen load evolution can be predicted as a function of AE signals. A number of ANN models were developed, and the optimum model was selected based on the highest coefficient of determination (CoD) value as well as the lowest root mean square error (RMSE) value that was calculated for each model. The best performing ANN model exhibits accuracy above 99% with an RMSE value below 4%. It can be concluded that ANNs can potentially be applied to predict rock behavior under load especially when such loads lead to failure.
Citation

APA: K. KAKLIS O. SAUBI R. JAMISOLA Z. Agioutantis  (2022)  Machine Learning Prediction of the Load Evolution in Three‑Point Bending Tests of Marble (Mining, Metallurgy & Exploration)

MLA: K. KAKLIS O. SAUBI R. JAMISOLA Z. Agioutantis Machine Learning Prediction of the Load Evolution in Three‑Point Bending Tests of Marble (Mining, Metallurgy & Exploration). Society for Mining, Metallurgy & Exploration, 2022.

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