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基于机器学习的再生混凝土配合比设计方法
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Mixture Design Method of Recycled Aggregate Concrete Based on Machine Learning
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    摘要:

    再生混凝土技术是实现建筑垃圾资源化利用的有效途径. 通过收集再生混凝土氯离子侵蚀试验和碳化试验的数据,将材料信息和试验环境信息作为输入参数,采用电通量和碳化深度分别量化再生混凝土的抗氯离子侵蚀和抗碳化性能,基于机器学习方法构建再生混凝土的耐久性能预测模型,在此基础上以强度、耐久性和成本作为优化目标,结合 NSGA-Ⅱ算法和优劣解距离法提出再生混凝土配合比优化设计方法. 结果表明:梯度提升树模型可以较好地预测再生混凝土的抗氯离子侵蚀性能,高斯过程回归模型则对再生混凝土抗碳化性能预测表现较好;采用提出的配合比优化设计方法获得了满足耐久性和力学性能要求的低成本再生混凝土配合比建议值,可用于指导施工配合比设计.

    Abstract:

    The technology of recycled aggregate concrete (RAC) is an effective way to realize the resource utilization of construction waste. By collecting the data on the chloride ion corrosion test and carbonation test of RAC, variables related to materials and test environments were set as input parameters. The electric flux and carbonation depth were used to quantify the RAC’s resistance to chloride ion corrosion and carbonation, respectively. The machine learning methods were used to construct the prediction models of durability for RAC. On this basis, taking strength, durability, and cost as the optimization goals, the optimal design method of the RAC mixture was proposed by combining the NSGA-Ⅱ algorithm and the technique of order preference similarity to the ideal solution. Results show that the gradient boosting tree model can predict the RAC’s resistance to chloride ion corrosion better than other models, and the Gaussian process regression model has the best performance in predicting the RAC’s resistance to carbonation. A low-cost RAC mixture that meets the requirements of durability and mechanical properties was obtained with the proposed mixture optimization design method, which can be used to guide the construction mix design.

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LIU Kaihua, ZHENG Jiakai, XIE Weili, DONG Shuxiong, DUAN Zhenhua?.基于机器学习的再生混凝土配合比设计方法[J].湖南大学学报:自然科学版,2023,(9):88~96

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  • 在线发布日期: 2023-10-07
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