高性能混凝土强度-组分相关性分析的可解释机器学习模型
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作者:
作者单位:

1.长安大学,地质工程与测绘学院,西安 710061;2.长安大学,理学院,西安 710061

作者简介:

靳新斌(2002- ),男,主要从事建筑安全研究,E-mail:751822306@qq.com。
JIN Xinbin (2002- ), main research interest: building safety, E-mail: 751822306@qq.com.

通讯作者:

李艳(通信作者),女,副教授,E-mail:1259578602@qq.com。

中图分类号:

TU528.01

基金项目:

陕西省博士后科研项目(2023BSHEDZZ211);咸阳市科技创新团队项目(L2023CXNLCXTD005);陕西省住建厅科研开发类项目(2021-K40)


Explainable machine learning model for strength-component correlation analysis of high-performance concrete
Author:
Affiliation:

1.School of Geological Engineering and Geomatics, Chang’an University, Xi’an 710061, P. R. China;2.School of Sciences, Chang’an University, Xi’an 710061, P. R. China

Fund Project:

Shaanxi Postdoctoral Science Foundation Project (No. 2023BSHEDZZ211); Xianyang City Science and Technology Innovation Team Project (No. L2023CXNLCXTD005); Shaanxi Provincial Department of Housing and Urban-Rural Development Project (No. 2021-K40)

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    摘要:

    高性能混凝土强度与其组分之间存在复杂的相关性,传统的黑盒模型因缺乏可解释性而无法揭示二者之间的实际依存关系。基于高性能混凝土大样本数据集,构建机器学习模型,采用Hyperopt算法对机器学习模型进行优化,并与SHAP可解释技术和特征依赖值算法集成,计算得到高性能混凝土强度与各组分之间非线性关系的可视化表征以及多组分之间的交互耦合作用。结果表明:Hyperopt-极端梯度提升模型为可信任的机器学习模型,具有较高的准确性与稳健性;在高性能混凝土的8种组分(因素)中,龄期、水泥、水和矿渣对抗压强度起关键控制作用,与抗压强度的关系分别满足指数函数、幂函数、高斯函数和指数函数关系,且4种关键因素之间还存在明显的交互耦合效应。龄期与水泥、水、矿渣的交互作用曲线分别符合LogisticCum、LogNormal2D和Power2D函数,水泥与水、水泥与矿渣的交互作用均符合Poly2D函数,矿渣与水的交互作用符合ExtremeCum函数。

    Abstract:

    The strength of high-performance concrete has an intricate relationship with its components. It is evident that traditional black-box models are characterised by an absence of interpretability. As a result, they fail to reveal the actual dependency between concrete strength and its components. Using a large sample dataset of high-performance concrete, machine learning models are constructed and optimized with the Hyperopt algorithm. The models are integrated with SHAP explainability techniques and feature dependency algorithms. A visual representation of the nonlinear relationship between the strength of high-performance concrete and its components is calculated. Furthermore, the interaction and coupling effects between multiple components are examined. The results indicate the following: Hyperopt-extreme gradient boosting model is a trusted machine learning model with high accuracy and robustness. Among the eight components(factors), age, cement, water and slag play a key controlling role in compressive strength, and their relationships with compressive strength satisfy the exponential function, power function, Gaussian function, and exponential function, respectively. At the same time, there is a significant interactive coupling effect between the four key factors; the interaction curves between age and cement, water, and slag adhere to the LogisticCum, LogNormal2D, and Power2D functions. The interaction between cement and water, as well as between cement and slag, conforms to the Poly2D function, while the interaction between slag and water conforms to the ExtremeCum function.

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引用本文

靳新斌,李艳,王志国,赵宇欣,梁文彪.高性能混凝土强度-组分相关性分析的可解释机器学习模型[J].土木与环境工程学报(中英文),2026,48(4):210-219. JIN Xinbin, LI Yan, WANG Zhiguo, ZHAO Yuxin, LIANG Wenbiao. Explainable machine learning model for strength-component correlation analysis of high-performance concrete[J]. JOURNAL OF CIVIL AND ENVIRONMENTAL ENGINEERING,2026,48(4):210-219.10.11835/j. issn.2096-6717.2024.091

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  • 收稿日期:2024-07-10
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  • 在线发布日期: 2026-07-08
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