Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques

Rock deformation is considered one of the essential rock properties used in designing and constructing rock-based structures, such as tunnels and slopes. This study applied two well-established ensemble techniques, including boosting and bagging, to the artificial neural networks and decision tree m...

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Main Authors: Tsang, Long, He, Biao, Rashid, Ahmad Safuan A., Jalil, Abduladheem Turki, Sabri, Mohanad Muayad Sabri
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Published: MDPI 2022
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Online Access:http://eprints.um.edu.my/40872/
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spelling my.um.eprints.408722023-09-26T00:51:58Z http://eprints.um.edu.my/40872/ Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques Tsang, Long He, Biao Rashid, Ahmad Safuan A. Jalil, Abduladheem Turki Sabri, Mohanad Muayad Sabri QD Chemistry Rock deformation is considered one of the essential rock properties used in designing and constructing rock-based structures, such as tunnels and slopes. This study applied two well-established ensemble techniques, including boosting and bagging, to the artificial neural networks and decision tree methods for predicting the Young's modulus of rock material. These techniques were applied to a dataset comprising 45 data samples from a mountain range in Malaysia. The final input variables of these models, including p-wave velocity, interlocking coarse-grained crystals of quartz, dry density, and Mica, were selected through a likelihood ratio test. In total, six models were developed: standard artificial neural networks, boosted artificial neural networks, bagged artificial neural networks, classification and regression trees, extreme gradient boosting trees (as a boosted decision tree), and random forest (as a bagging decision tree). The performance of these models was appraised utilizing correlation coefficient (R), mean absolute error (MAE), and lift chart. The findings of this study showed that, firstly, extreme gradient boosting trees outperformed all models developed in this study; secondly, boosting models outperformed the bagging models. MDPI 2022-10 Article PeerReviewed Tsang, Long and He, Biao and Rashid, Ahmad Safuan A. and Jalil, Abduladheem Turki and Sabri, Mohanad Muayad Sabri (2022) Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques. Applied Sciences-Basel, 12 (20). ISSN 2076-3417, DOI https://doi.org/10.3390/app122010258 <https://doi.org/10.3390/app122010258>. 10.3390/app122010258
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QD Chemistry
spellingShingle QD Chemistry
Tsang, Long
He, Biao
Rashid, Ahmad Safuan A.
Jalil, Abduladheem Turki
Sabri, Mohanad Muayad Sabri
Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques
description Rock deformation is considered one of the essential rock properties used in designing and constructing rock-based structures, such as tunnels and slopes. This study applied two well-established ensemble techniques, including boosting and bagging, to the artificial neural networks and decision tree methods for predicting the Young's modulus of rock material. These techniques were applied to a dataset comprising 45 data samples from a mountain range in Malaysia. The final input variables of these models, including p-wave velocity, interlocking coarse-grained crystals of quartz, dry density, and Mica, were selected through a likelihood ratio test. In total, six models were developed: standard artificial neural networks, boosted artificial neural networks, bagged artificial neural networks, classification and regression trees, extreme gradient boosting trees (as a boosted decision tree), and random forest (as a bagging decision tree). The performance of these models was appraised utilizing correlation coefficient (R), mean absolute error (MAE), and lift chart. The findings of this study showed that, firstly, extreme gradient boosting trees outperformed all models developed in this study; secondly, boosting models outperformed the bagging models.
format Article
author Tsang, Long
He, Biao
Rashid, Ahmad Safuan A.
Jalil, Abduladheem Turki
Sabri, Mohanad Muayad Sabri
author_facet Tsang, Long
He, Biao
Rashid, Ahmad Safuan A.
Jalil, Abduladheem Turki
Sabri, Mohanad Muayad Sabri
author_sort Tsang, Long
title Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques
title_short Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques
title_full Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques
title_fullStr Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques
title_full_unstemmed Predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques
title_sort predicting the young's modulus of rock material based on petrographic and rock index tests using boosting and bagging intelligence techniques
publisher MDPI
publishDate 2022
url http://eprints.um.edu.my/40872/
_version_ 1781704536616861696
score 13.18916