Lian Chunming, Zhang Xiong, Han Lu, Shen Weiguo, Han Lifang, Wen Weijun
Key Laboratory of Advanced Civil Engineering Materials of Education Ministry, School of Material Science and Technology, Tongji University, 4800 Cao'an Road, Shanghai 201804, China.
China Construction Eighth Bureau Science and Technology Construction Co., Ltd., 899 Gaoke West Road, Shanghai 201804, China.
Materials (Basel). 2025 Jun 26;18(13):3047. doi: 10.3390/ma18133047.
This study presents a systematic method for mix design for optimizing the aggregate proportions in concrete, aiming to minimize paste volume while ensuring adequate workability. Based on a binary paste-aggregate system model, the method refines the calculation of the aggregate packing density by excluding fine particles smaller than 75 μm and incorporating inter-particle interactions across multiple size fractions. A modified approach for calculating the aggregate's specific surface area is introduced, which accounts for both intra-fraction particle size variation and particle morphology through image-based shape coefficients. Inter-particle spacing is identified as a key control parameter of concrete flowability. Using this criterion, an optimization strategy is developed to determine the ideal aggregate composition that achieves the required spacing with the least amount of paste. Experimental validation confirms that the model reliably predicts paste demand while maintaining desired workability and compressive strength. This physics-based, interpretable approach offers a practical alternative to data-intensive machine learning models and contributes to more sustainable and efficient concrete mix design.
本研究提出了一种用于混凝土配合比设计的系统方法,以优化骨料比例,旨在在确保足够工作性的同时尽量减少浆体体积。基于二元浆体-骨料系统模型,该方法通过排除小于75μm的细颗粒并纳入多个粒径级分之间的颗粒间相互作用,改进了骨料堆积密度的计算。引入了一种改进的计算骨料比表面积的方法,该方法通过基于图像的形状系数考虑了级分内粒径变化和颗粒形态。颗粒间距被确定为混凝土流动性的关键控制参数。利用这一标准,开发了一种优化策略,以确定用最少浆体量实现所需间距的理想骨料组成。实验验证证实,该模型能够可靠地预测浆体需求量,同时保持所需的工作性和抗压强度。这种基于物理、可解释的方法为数据密集型机器学习模型提供了一种实用的替代方案,并有助于实现更可持续、高效的混凝土配合比设计。