Tipu Rupesh Kumar, Rathi Preeti, Pandya Kartik S, Panchal Vijay R
Department of Civil Engineering, School of Engineering & Technology, K. R. Mangalam University, Sohna, Gurugram, 122103, Haryana, India.
Department of Computer Science & Engineering, School of Engineering & Technology, K. R. Mangalam University, Sohna, Gurugram, 122103, Haryana, India.
Sci Rep. 2025 May 10;15(1):16356. doi: 10.1038/s41598-025-00943-1.
The proposed framework unites deep neural networks (DNNs) together with multi-objective optimization for designing environmentally friendly concrete mixes. A DNN model receives training through a wide dataset which includes multiple mix parameters along with curing conditions for accurate compressive strength prediction. The Bayesian hyperparameter tuning technique produces an optimal network configuration which delivers an average [Formula: see text] of 0.936 together with an RMSE of 5.71 MPa during 5-fold cross-validation. The Multi-Objective Particle Swarm Optimization (MOPSO) algorithm finds multiple optimal solutions which simultaneously optimize three competing objectives that include strength maximization and cost minimization and cement reduction. The optimized mix designs surpassed 50 MPa compressive strength through cement reduction of up to 25% which led to a total cost reduction of 15% compared to standard mix designs. The analysis of feature importance shows cement content together with concrete age serve as the main factors that affect strength measurements. The integrated data-driven method provides reliable decision-support tools to practitioners who need cost-effective sustainable mix designs through its identification of feasible trade-offs. The proposed methodology delivers new understandings of green concrete technology through optimal proportion discoveries that boost strength and save costs while decreasing environmental impact for direct application in real construction settings.
所提出的框架将深度神经网络(DNN)与多目标优化相结合,用于设计环保型混凝土混合料。一个DNN模型通过一个广泛的数据集进行训练,该数据集包括多个混合料参数以及养护条件,以准确预测抗压强度。贝叶斯超参数调整技术产生了一种最优的网络配置,在5折交叉验证期间,该配置的平均[公式:见正文]为0.936,均方根误差为5.71MPa。多目标粒子群优化(MOPSO)算法找到了多个最优解,这些解同时优化了三个相互竞争的目标,包括强度最大化、成本最小化和水泥用量减少。优化后的混合料设计通过减少高达25%的水泥用量,使抗压强度超过了50MPa,与标准混合料设计相比,总成本降低了15%。特征重要性分析表明,水泥含量和混凝土龄期是影响强度测量的主要因素。这种集成的数据驱动方法通过识别可行的权衡方案,为需要经济高效的可持续混合料设计的从业者提供了可靠的决策支持工具。所提出的方法通过最优比例发现,对绿色混凝土技术有了新的认识,在提高强度、节约成本的同时减少了环境影响,可直接应用于实际建筑场景。