Zhang Fan, Wen Bo, Niu Ditao, Li Anbang, Guo Bingbing
Department of School of Civil Engineering, Xi'an University of Architecture and Technology, Xi'an 710055, China.
State Key Laboratory of Green Building in Western China, Xi'an University of Architecture and Technology, Xi'an 710055, China.
Materials (Basel). 2024 Aug 16;17(16):4077. doi: 10.3390/ma17164077.
In order to achieve low-carbon optimization in the intelligent mix ratio design of concrete materials, this work first constructs a concrete mix ratio database and performs a statistical characteristics analysis. Secondly, it employs a standard back propagation (BP) and a genetic algorithm-improved BP (GA-BP) to predict the concrete mix ratio. The NSGA-II algorithm is then used to optimize the mix ratio. Finally, the method's accuracy is validated through experiments. The study's results indicate that the statistical characteristics of the concrete mix ratio data show a wide distribution range and good representativeness. Compared to the standard BP, the fitting accuracies of each GA-BP set are improved by 4.9%, 0.3%, 16.7%, and 4.6%, respectively. According to the Fast Non-Dominated Sorting Genetic Algorithm II (NSGA-II) optimization for meeting C50 concrete strength requirements, the optimal concrete mix ratio is as follows: cement 331.3 kg/m, sand 639.4 kg/m, stone 1039 kg/m, fly ash 56 kg/m, water 153 kg/m, and water-reducing agent 0.632 kg/m. The 28-day compressive strength, material cost, and carbon emissions show relative errors of 2.1%, 0.6%, and 2.9%, respectively. Compared with commercial concrete of the same strength grade, costs and carbon emissions are reduced by 7.2% and 15.9%, respectively. The methodology used in this study not only significantly improves the accuracy of concrete design but also considers the carbon emissions involved in the concrete preparation process, reflecting the strength, economic, and environmental impacts of material design. Practitioners are encouraged to explore integrated low-carbon research that spans from material selection to structural optimization.
为了在混凝土材料智能配合比设计中实现低碳优化,本研究首先构建了混凝土配合比数据库并进行统计特征分析。其次,采用标准反向传播(BP)算法和遗传算法改进的BP(GA-BP)算法预测混凝土配合比。然后使用NSGA-II算法优化配合比。最后,通过实验验证了该方法的准确性。研究结果表明,混凝土配合比数据的统计特征分布范围广且具有良好的代表性。与标准BP算法相比,各GA-BP组的拟合精度分别提高了4.9%、0.3%、16.7%和4.6%。根据快速非支配排序遗传算法II(NSGA-II)优化以满足C50混凝土强度要求,最佳混凝土配合比如下:水泥331.3kg/m³,砂639.4kg/m³,石1039kg/m³,粉煤灰56kg/m³,水153kg/m³,减水剂0.632kg/m³。28天抗压强度、材料成本和碳排放的相对误差分别为2.1%、0.6%和2.9%。与相同强度等级的商品混凝土相比,成本和碳排放分别降低了7.2%和15.9%。本研究中使用的方法不仅显著提高了混凝土设计的准确性,还考虑了混凝土制备过程中的碳排放,体现了材料设计的强度、经济和环境影响。鼓励从业者探索从材料选择到结构优化的综合低碳研究。