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材料导报  2026, Vol. 40 Issue (6): 25030056-15    https://doi.org/10.11896/cldb.25030056
  无机非金属及其复合材料 |
基于机器学习方法对不同掺量废玻璃粉混凝土抗压强度的预测研究
于代东1,2, 马玉薇1,2,*, 李刚1,2,*, 王爱芹1,2, 黄维3, 王靖超1,2
1 石河子大学水利建筑工程学院,新疆 石河子 832003;
2 新疆生产建设兵团寒旱区生态水利工程重点实验室,新疆 石河子 832000;
3 新疆前昆工程建设集团有限责任公司,新疆 图木舒克市 843900
Study on Machine Learning-based Prediction of Compressive Strength of Concrete with Different Waste Glass Powder Contents
YU Daidong1,2, MA Yuwei1,2,*, LI Gang1,2,*, WANG Aiqin1,2, HUANG Wei3, WANG Jingchao1,2
1 College of Water Conservancy & Architectural Engineering, Shihezi University, Shihezi 832003, Xinjiang, China;
2 Key Laboratory of Cold and Arid Regions Eco-Hydraulic Engineering, Xinjiang Production & Construction Corps, Shihezi 832000, Xinjiang, China;
3 Xinjiang Qiankun Engineering Construction Group, Tumushuke 843900, Xinjiang, China
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摘要 废玻璃粉混凝土(WGPC)的应用和推广能够有效缓解混凝土材料短缺的压力以及环境污染的问题。抗压强度(CS)是评价废玻璃粉混凝土性能的重要指标。与传统的测试方法相比,机器学习技术因其准确性和稳定性的特点,能够有效预测混凝土的抗压强度,尤其是在探究混凝土长期力学性能方面优势显著。本工作利用多元线性回归(MLR)、反向传播神经网络(BPNN)、支持向量机回归(SVR)和随机森林回归(RFR)四种模型对废玻璃粉混凝土的抗压强度进行预测,并结合粒子群优化(PSO)算法和交叉验证的方法调整模型的参数设置,以达到模型预测的最佳效果。结果表明,优化后的模型精度普遍比基础模型高,其中PSO-RFR模型在测试集上表现最佳,拟合优度R2=0.923 1,MAE=2.107 3,RMSE=3.690 3。与试验结果对比,PSO-RFR模型和PSO-BPNN模型展现出良好的预测效果,且PSO-BPNN模型中训练集和测试集的拟合优度R2最为接近,体现了PSO-BPNN模型对未知数据的最佳泛化能力。本研究为混凝土抗压强度预测提供了有效方法,有助于推动混凝土材料领域的可持续发展,为混凝土材料的研发和应用提供理论支持。
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于代东
马玉薇
李刚
王爱芹
黄维
王靖超
关键词:  废玻璃粉混凝土  抗压强度  机器学习  粒子群优化算法  可视化    
Abstract: The application and promotion of waste glass powder concrete(WGPC) cansignificantly alleviate the pressure of concrete material scarcity and environmental pollution. Compressive strength(CS) is a critical parameter for evaluating the efficacy of WGPC. Unlike conventional testing methods, machine learning techniques offer precise and reliable predictions of concrete's compressive strength, especially in its long-term mechanical properties. In this work, four models, namely Multiple Linear Regression(MLR), Back Propagation Neural Network(BPNN), Support Vector Regression(SVR), and Random Forest Regression(RFR) were employed. Furthermore, particle swarm optimization(PSO) algorithm and cross-validation techniques were applied to fine-tune the model parameters, striving for peak prediction performance. The results indicated that optimized models generally exhibit enhanced predictive accuracy compared to their basic counterparts. Notably, the PSO-RFR model excels among all evaluated models, showcasing superior performance on the testing dataset. It achieves a coefficient of determination(R2) of 0.923 1, a mean absolute error(MAE) of 2.107 3, and a root mean square error(RMSE) of 3.690 3. When compared to experimental results, the PSO-RFR and PSO-BPNN models demonstrate exceptional predictive accuracy. Notably, the PSO-BPNN model exhibits the closest R2 values between its training and test sets. This close alignment of R2 values between the training and testing sets reflects the PSO-BPNN model's superior generalization ability for unseen data. The findings present an efficient method for predicting concrete's compressive strength, contributing to the sustainable development of concrete materials, and providing theoretical support for their research and application.
Key words:  waste glass powder concrete    compressive strength    machine learning    particle swarm optimization algorithm    visualization
出版日期:  2026-03-25      发布日期:  2026-04-03
ZTFLH:  TU5  
基金资助: 国家自然科学基金(52168064);第三师科技计划项目(KY2024GG05);新疆生产建设兵团科技计划项目(2023AB013-04;2025YD005)
通讯作者:  *Yuwei Ma,master's degree,associate professor,the research direction is in the field of new-type building materials.myw819@shzu.edu.cn
Gang Li,correspording author,Ph.D.,professor,the research direction is in the field of new-type building materials.gangli@shzu.edu.cn   
作者简介:  Daidong Yu,master's degree student at the College of Water Conservancy & Architectural Engineering,Shihezi University,the research direction is in the field of new-type building materials.
引用本文:    
于代东, 马玉薇, 李刚, 王爱芹, 黄维, 王靖超. 基于机器学习方法对不同掺量废玻璃粉混凝土抗压强度的预测研究[J]. 材料导报, 2026, 40(6): 25030056-15.
YU Daidong, MA Yuwei, LI Gang, WANG Aiqin, HUANG Wei, WANG Jingchao. Study on Machine Learning-based Prediction of Compressive Strength of Concrete with Different Waste Glass Powder Contents. Materials Reports, 2026, 40(6): 25030056-15.
链接本文:  
https://www.mater-rep.com/CN/10.11896/cldb.25030056  或          https://www.mater-rep.com/CN/Y2026/V40/I6/25030056
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