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基于深度学习和多目标优化的混凝土配合比设计及性能预测研究

李鹏远 牛豪爽 刘毅豪

水利水电技术(中英文)2025,Vol.56Issue(4):194-210,17.
水利水电技术(中英文)2025,Vol.56Issue(4):194-210,17.DOI:10.13928/j.cnki.wrahe.2025.04.016

基于深度学习和多目标优化的混凝土配合比设计及性能预测研究

Concrete mix proportion design and performance prediction based on deep learning and multi-objective optimization

李鹏远 1牛豪爽 2刘毅豪3

作者信息

  • 1. 许昌职业技术学院,河南许昌 461000
  • 2. 河南理工大学土木学院,河南郑州 454003
  • 3. 许昌职业技术学院,河南许昌 461000||许昌市数字化建造技术与装备重点实验室,河南许昌 461000
  • 折叠

摘要

Abstract

[Objective]Concrete,as the cornerstone of national economic construction,necessitates the accurate prediction of its compressive strength for the design and safety of engineering structures.This study aims to predict concrete compressive strength using Deep Neural Network(DNN)models and proposes the RF-NSGA-Ⅱ algorithm to optimize concrete mix proportions,achieving dual optimization of compressive strength and cost.[Methods]Fifteen DNN model architectures with different hidden layers and neuron numbers were constructed and evaluated for performance,selecting the best model.Hyperparameter optimization strategies and Bayesian optimization were employed to enhance the predictive performance of the DNN model.The performance of the DNN model was compared with Support Vector Regression(SVR)and Random Forest(RF)models.The RF-NSGA-Ⅱ algorithm was used to optimize concrete mix proportions to meet strength requirements and cost control.[Results]The result showed that the optimal model had 3 hidden layers and 64 neurons(3L-64u).After optimization,the DNN model's MAE and MSE decreased by 18%and 27%,respectively.Compared to the SVR and RF models,the optimized DNN model reduced MAE and MSE by 4%and 12%,and 11%and 15%,respectively.[Conclusion]Case validation demonstrated that the DNN3-L64u-BOP model's predictions aligned well with experimental values,and the RF-NSGA-Ⅱ algorithm effectively reduced costs while meeting engineering strength requirements.The Bayesian-optimized DNN model successfully predicted concrete compressive strength,and the RF-NSGA-Ⅱ algorithm exhibited excellent performance in multi-objective optimization of concrete mix proportions,showing significant practical value in engineering applications.

关键词

混凝土/DNN/抗压强度/预测/优化/力学性能/影响因素/深度学习

Key words

concrete/DNN/compressive strength/prediction/optimization/mechanical properties/influencing factors/deep learning

分类

土木建筑

引用本文复制引用

李鹏远,牛豪爽,刘毅豪..基于深度学习和多目标优化的混凝土配合比设计及性能预测研究[J].水利水电技术(中英文),2025,56(4):194-210,17.

基金项目

国家自然科学基金项目(42372331) (42372331)

水利水电技术(中英文)

OA北大核心

1000-0860

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