Machine-learning-based design of high strength steel bolted connections
For the design of high strength steel bolted connections, all existing standards adopt the same framework – (i) calculating the design resistance for each potential failure mode and (ii) defining the final design failure load as the minimum of the design resistances calculated from all the potential...
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sg-ntu-dr.10356-1634912022-12-07T07:22:12Z Machine-learning-based design of high strength steel bolted connections Jiang, Ke Liang, Yating Zhao, Ou School of Civil and Environmental Engineering Engineering::Civil engineering Bearing Failure Block Tearing For the design of high strength steel bolted connections, all existing standards adopt the same framework – (i) calculating the design resistance for each potential failure mode and (ii) defining the final design failure load as the minimum of the design resistances calculated from all the potential failure modes. However, this framework has been found to be tedious and also incapable of considering the complex nature of connection behaviour, in particular the transition of different failure modes (e.g., net section fracture, bearing and block tearing), and thus leads to inaccurate failure load and mode predictions. To address the aforementioned shortcomings, this paper presents a more accurate and reliable predictive framework based on machine learning. Firstly, a database including 543 experimental and numerical data was collected. Then, regression models for failure load predictions and classification models for failure mode predictions were developed based on eight machine learning algorithms, including Decision Tree, Random Forest, Support Vector Machine, K-Nearest Neighbour, Adaptive Boosting, Light Gradient Boosting Machine, Extreme Gradient Boosting and Cat Boosting. The performance of the developed models was assessed based on the collected data, indicating that the Support Vector Machine models led to the best predictions of failure loads and modes. The Support Vector Machine models were then compared with existing design standards and shown to yield substantially improved failure load and mode predictions for high strength steel bolted connections. Specifically, the mean ratio of experimental and numerical to predicted failure loads from the machine-learning-based approach is equal to 1.00, while the corresponding mean ratios from the design standards range from 1.10 to 1.39. The machine-learning-based approach is capable of accurately predicting 97.2% of the total failure modes, while the design standards can only accurately predict 67.9%–85.3% of the total failure modes. 2022-12-07T07:22:11Z 2022-12-07T07:22:11Z 2022 Journal Article Jiang, K., Liang, Y. & Zhao, O. (2022). Machine-learning-based design of high strength steel bolted connections. Thin-Walled Structures, 179, 109575-. https://dx.doi.org/10.1016/j.tws.2022.109575 0263-8231 https://hdl.handle.net/10356/163491 10.1016/j.tws.2022.109575 2-s2.0-85133287832 179 109575 en Thin-Walled Structures © 2022 Elsevier Ltd. All rights reserved. |
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Engineering::Civil engineering Bearing Failure Block Tearing Jiang, Ke Liang, Yating Zhao, Ou Machine-learning-based design of high strength steel bolted connections |
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For the design of high strength steel bolted connections, all existing standards adopt the same framework – (i) calculating the design resistance for each potential failure mode and (ii) defining the final design failure load as the minimum of the design resistances calculated from all the potential failure modes. However, this framework has been found to be tedious and also incapable of considering the complex nature of connection behaviour, in particular the transition of different failure modes (e.g., net section fracture, bearing and block tearing), and thus leads to inaccurate failure load and mode predictions. To address the aforementioned shortcomings, this paper presents a more accurate and reliable predictive framework based on machine learning. Firstly, a database including 543 experimental and numerical data was collected. Then, regression models for failure load predictions and classification models for failure mode predictions were developed based on eight machine learning algorithms, including Decision Tree, Random Forest, Support Vector Machine, K-Nearest Neighbour, Adaptive Boosting, Light Gradient Boosting Machine, Extreme Gradient Boosting and Cat Boosting. The performance of the developed models was assessed based on the collected data, indicating that the Support Vector Machine models led to the best predictions of failure loads and modes. The Support Vector Machine models were then compared with existing design standards and shown to yield substantially improved failure load and mode predictions for high strength steel bolted connections. Specifically, the mean ratio of experimental and numerical to predicted failure loads from the machine-learning-based approach is equal to 1.00, while the corresponding mean ratios from the design standards range from 1.10 to 1.39. The machine-learning-based approach is capable of accurately predicting 97.2% of the total failure modes, while the design standards can only accurately predict 67.9%–85.3% of the total failure modes. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Jiang, Ke Liang, Yating Zhao, Ou |
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Article |
author |
Jiang, Ke Liang, Yating Zhao, Ou |
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Jiang, Ke |
title |
Machine-learning-based design of high strength steel bolted connections |
title_short |
Machine-learning-based design of high strength steel bolted connections |
title_full |
Machine-learning-based design of high strength steel bolted connections |
title_fullStr |
Machine-learning-based design of high strength steel bolted connections |
title_full_unstemmed |
Machine-learning-based design of high strength steel bolted connections |
title_sort |
machine-learning-based design of high strength steel bolted connections |
publishDate |
2022 |
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https://hdl.handle.net/10356/163491 |
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1753801099263868928 |