Assessment of Böhme Abrasion Value of Natural Stones through Artificial Neural Networks (ANN)

This present study explored the Böhme abrasion value (BAV) of natural stones through artificial neural networks (ANNs). For this purpose, a detailed literature survey was conducted to collect quantitative data on the BAV of different natural stones from Turkey. As a result of the ANN analyses, sever...

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Main Authors: Paweł Strzałkowski, Ekin Köken
Format: Article
Language:English
Published: MDPI AG 2022-03-01
Series:Materials
Subjects:
Online Access:https://www.mdpi.com/1996-1944/15/7/2533
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author Paweł Strzałkowski
Ekin Köken
author_facet Paweł Strzałkowski
Ekin Köken
author_sort Paweł Strzałkowski
collection DOAJ
description This present study explored the Böhme abrasion value (BAV) of natural stones through artificial neural networks (ANNs). For this purpose, a detailed literature survey was conducted to collect quantitative data on the BAV of different natural stones from Turkey. As a result of the ANN analyses, several predictive models (M1–M13) were established by using the rock properties, such as the dry density (ρ<sub>d</sub>), water absorption by weight (w<sub>a</sub>), Shore hardness value (SHV), pulse wave velocity (V<sub>p</sub>), and uniaxial compressive strength (UCS) of rocks. The performance of the established predictive models was evaluated by using several statistical indicators, and the performance analyses indicated that four of the established models (M1, M5, M10, and M11) could be reliably used to estimate the BAV of natural stones. In addition, explicit mathematical formulations of the proposed ANN models were also introduced in this study to let users implement them more efficiently. In this context, the present study is believed to provide practical and straightforward information on the BAV of natural stones and can be declared a case study on how to model the BAV as a function of different rock properties.
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spelling doaj.art-2364b7c029e848b397460703cc43071f2023-11-30T23:33:27ZengMDPI AGMaterials1996-19442022-03-01157253310.3390/ma15072533Assessment of Böhme Abrasion Value of Natural Stones through Artificial Neural Networks (ANN)Paweł Strzałkowski0Ekin Köken1Department of Mining, Faculty of Geoengineering, Mining and Geology, Wroclaw University of Science and Technology, Wybrzeże Wyspiańskiego 27, 50-370 Wrocław, PolandNanotechnology Engineering Department, Engineering Faculty, Abdullah Gul University, Kayseri 38100, TurkeyThis present study explored the Böhme abrasion value (BAV) of natural stones through artificial neural networks (ANNs). For this purpose, a detailed literature survey was conducted to collect quantitative data on the BAV of different natural stones from Turkey. As a result of the ANN analyses, several predictive models (M1–M13) were established by using the rock properties, such as the dry density (ρ<sub>d</sub>), water absorption by weight (w<sub>a</sub>), Shore hardness value (SHV), pulse wave velocity (V<sub>p</sub>), and uniaxial compressive strength (UCS) of rocks. The performance of the established predictive models was evaluated by using several statistical indicators, and the performance analyses indicated that four of the established models (M1, M5, M10, and M11) could be reliably used to estimate the BAV of natural stones. In addition, explicit mathematical formulations of the proposed ANN models were also introduced in this study to let users implement them more efficiently. In this context, the present study is believed to provide practical and straightforward information on the BAV of natural stones and can be declared a case study on how to model the BAV as a function of different rock properties.https://www.mdpi.com/1996-1944/15/7/2533abrasion resistanceBöhme abrasion valuenatural stoneartificial neural networks
spellingShingle Paweł Strzałkowski
Ekin Köken
Assessment of Böhme Abrasion Value of Natural Stones through Artificial Neural Networks (ANN)
Materials
abrasion resistance
Böhme abrasion value
natural stone
artificial neural networks
title Assessment of Böhme Abrasion Value of Natural Stones through Artificial Neural Networks (ANN)
title_full Assessment of Böhme Abrasion Value of Natural Stones through Artificial Neural Networks (ANN)
title_fullStr Assessment of Böhme Abrasion Value of Natural Stones through Artificial Neural Networks (ANN)
title_full_unstemmed Assessment of Böhme Abrasion Value of Natural Stones through Artificial Neural Networks (ANN)
title_short Assessment of Böhme Abrasion Value of Natural Stones through Artificial Neural Networks (ANN)
title_sort assessment of bohme abrasion value of natural stones through artificial neural networks ann
topic abrasion resistance
Böhme abrasion value
natural stone
artificial neural networks
url https://www.mdpi.com/1996-1944/15/7/2533
work_keys_str_mv AT pawełstrzałkowski assessmentofbohmeabrasionvalueofnaturalstonesthroughartificialneuralnetworksann
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