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Published: Građevinar 78 (2026) 1
Paper type: Original scientific paper
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Flexural capacity prediction of partially encased composite beams using machine learning

Hongxin Liu, Ping Yang, Yaming Li, Shuizhong Jia, Xiaomeng Xie

Abstract

To address traditional limitations, this study investigated the flexural performance of large-section PEC beams with varied web openings using experiments and machine learning (ML). Four-point bending tests on specimens with different sections and openings demonstrated excellent ductility (coefficient >4.0), although openings slightly reduced yield strength without significantly affecting overall performance. A database of 15 variables was used to train and validate four ML models (RF, CatBoost, KNN, LightGBM). The RF model achieved the highest accuracy (~2.6% MAE). Shapley analysis improved interpretability by identifying key parameters. Integrating explainable ML substantially enhances the prediction accuracy and interpretability of PEC flexural capacity, offering a promising approach for intelligent structural design and assessent.

Keywords
PEC beams, failure mode, flexural capacity, ductility, machine learning

HOW TO CITE THIS ARTICLE:

Liu, H., Yang, P., Li, Y., Jia, S., Xie, X.: Flexural capacity prediction of partially encased composite beams using machine learning, GRAĐEVINAR, 78 (2026) 1, pp. 1-19, doi: https://doi.org/10.14256/JCE.4344.2025

OR:

Liu, H., Yang, P., Li, Y., Jia, S., Xie, X. (2026). Flexural capacity prediction of partially encased composite beams using machine learning, GRAĐEVINAR, 78 (1), 1-19, doi: https://doi.org/10.14256/JCE.4344.2025

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This paper is licensed under a Creative Commons Attribution 4.0 International License.
Authors:
Hongxin Liu WEB
Hongxin Liu
Shanghai Institute of Architectural Design and Research d.o.o., China
Shanghai Spatial Structure Engineering Research Center, China
Ping Yang WEB
Ping Yang
Government Construction Project Center of Kangbashi District, China
Yaming Li WEB
Yaming Li
Shanghai Institute of Architectural Design and Research d.o.o., China
Shanghai Spatial Structure Engineering Research Center, China
Shuizhong Jia WEB
Shuizhong Jia
Shanghai Institute of Architectural Design and Research d.o.o., China
Shanghai Spatial Structure Engineering Research Center, China
Xiaomeng Xie WEB
Xiaomeng Xie
Shanghai Jieyi Construction Technology Co.