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基于扫描隧道显微镜的符号回归法用于钢筋混凝土深梁和牛腿的强度预测

STM-based symbolic regression for strength prediction of RC deep beams and corbels.

作者信息

Megahed Khaled

机构信息

Department of Structural Engineering, Mansoura University, PO BOX 35516, Mansoura, Egypt.

出版信息

Sci Rep. 2024 Oct 23;14(1):25066. doi: 10.1038/s41598-024-74803-9.

Abstract

This study uses symbolic regression with a strut-and-tie model to predict the shear strength of reinforced concrete deep beams (RCDBs) and corbels (RCCs). Previous studies have proposed two distinct types of models for estimating shear capacity: explainable models based on theoretical derivations and black-box models derived from machine learning (ML) methods. This study proposes a hybrid model derived from the strut-and-tie model (STM), where the performance of STM is enhanced through the ML approach using genetic programming. This model is based on a comprehensive experimental database of 810 tests for the shear strength of RC deep beams and 371 tests for RC corbels from various research papers. The developed STM-based symbolic regression (SR-STM) integrates two distinct force-transferring mechanisms: the diagonal strut mechanism utilizing concrete strength and the truss mechanism utilizing orthogonal web reinforcement. The SR-STM model is both robust and interpretable, demonstrating high prediction accuracy with mean values of the prediction-to-actual ratios of 0.999 and 1.004 and coefficient of determination values of 0.913 and 0.862 for RCDBs and RCCs, respectively, while providing explainable mathematical expressions that align with the mechanical principles of STM. The developed SR-STM model is benchmarked against several state-of-the-art models and evaluated against the CatBoost ML technique, demonstrating acceptable performance. The results highlight the SR-STM model's effectiveness in providing reliable predictions and valuable insights for practical engineering applications. Furthermore, a SHAP (Shapley Additive Explanations) analysis was performed, and its results align with the SR-STM model, confirming the model's effectiveness in accurately capturing the key factors influencing the shear strength of RCDBs and RCCs.

摘要

本研究采用带拉杆-压杆模型的符号回归来预测钢筋混凝土深梁(RCDB)和牛腿(RCC)的抗剪强度。以往的研究提出了两种不同类型的抗剪承载力估算模型:基于理论推导的可解释模型和源自机器学习(ML)方法的黑箱模型。本研究提出了一种源自拉杆-压杆模型(STM)的混合模型,其中通过使用遗传编程的ML方法提高了STM的性能。该模型基于一个综合实验数据库,该数据库包含来自各种研究论文的810个RC深梁抗剪强度试验和371个RC牛腿试验。所开发的基于STM的符号回归(SR-STM)整合了两种不同的力传递机制:利用混凝土强度的斜压杆机制和利用正交腹板钢筋的桁架机制。SR-STM模型既稳健又可解释,对于RCDB和RCC,预测值与实际值之比的平均值分别为0.999和1.004,决定系数值分别为0.913和0.862,显示出较高的预测精度,同时提供了与STM力学原理一致的可解释数学表达式。所开发的SR-STM模型与几种先进模型进行了基准测试,并针对CatBoost ML技术进行了评估,表现出可接受的性能。结果突出了SR-STM模型在为实际工程应用提供可靠预测和有价值见解方面所具有的有效性。此外,进行了SHAP(Shapley加法解释)分析,其结果与SR-STM模型一致,证实了该模型在准确捕捉影响RCDB和RCC抗剪强度的关键因素方面的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f153/11499994/8d44118a7175/41598_2024_74803_Fig1_HTML.jpg

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