Zhang Kaifan, Li Xiangyu, Zhang Songsong, Zhang Shuo
School of Computer Science, Hubei University of Technology, Wuhan 430068, China.
Department of Electronic Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
Biomimetics (Basel). 2025 Aug 6;10(8):515. doi: 10.3390/biomimetics10080515.
Accurately predicting the compressive strength of high-performance concrete (HPC) is critical for ensuring structural integrity and promoting sustainable construction practices. However, HPC exhibits highly complex, nonlinear, and multi-factorial interactions among its constituents (such as cement, aggregates, admixtures, and curing conditions), which pose significant challenges to conventional predictive models. Traditional approaches often fail to adequately capture these intricate relationships, resulting in limited prediction accuracy and poor generalization. Moreover, the high dimensionality and noisy nature of HPC mix data increase the risk of model overfitting and convergence to local optima during optimization. To address these challenges, this study proposes a novel bio-inspired hybrid optimization model, AP-IVYPSO-BP, which is specifically designed to handle the nonlinear and complex nature of HPC strength prediction. The model integrates the ivy algorithm (IVYA) with particle swarm optimization (PSO) and incorporates an adaptive probability strategy based on fitness improvement to dynamically balance global exploration and local exploitation. This design effectively mitigates common issues such as premature convergence, slow convergence speed, and weak robustness in traditional metaheuristic algorithms when applied to complex engineering data. The AP-IVYPSO is employed to optimize the weights and biases of a backpropagation neural network (BPNN), thereby enhancing its predictive accuracy and robustness. The model was trained and validated on a dataset comprising 1030 HPC mix samples. Experimental results show that AP-IVYPSO-BP significantly outperforms traditional BPNN, PSO-BP, GA-BP, and IVY-BP models across multiple evaluation metrics. Specifically, it achieved an R of 0.9542, MAE of 3.0404, and RMSE of 3.7991 on the test set, demonstrating its high accuracy and reliability. These results confirm the potential of the proposed bio-inspired model in the prediction and optimization of concrete strength, offering practical value in civil engineering and materials design.
准确预测高性能混凝土(HPC)的抗压强度对于确保结构完整性和推动可持续建筑实践至关重要。然而,高性能混凝土在其组成成分(如水泥、骨料、外加剂和养护条件)之间表现出高度复杂、非线性和多因素相互作用,这给传统预测模型带来了重大挑战。传统方法往往无法充分捕捉这些复杂关系,导致预测精度有限且泛化能力较差。此外,高性能混凝土混合料数据的高维度和噪声特性增加了模型在优化过程中过度拟合和收敛到局部最优的风险。为应对这些挑战,本研究提出了一种新型的生物启发式混合优化模型AP-IVYPSO-BP,该模型专门设计用于处理高性能混凝土强度预测的非线性和复杂性。该模型将常春藤算法(IVYA)与粒子群优化(PSO)相结合,并基于适应度改进纳入自适应概率策略,以动态平衡全局探索和局部开发。这种设计有效地缓解了传统元启发式算法在应用于复杂工程数据时常见的过早收敛、收敛速度慢和鲁棒性弱等问题。AP-IVYPSO用于优化反向传播神经网络(BPNN)的权重和偏差,从而提高其预测精度和鲁棒性。该模型在包含1030个高性能混凝土混合料样本的数据集上进行了训练和验证。实验结果表明,在多个评估指标上,AP-IVYPSO-BP显著优于传统的BPNN、PSO-BP、GA-BP和IVY-BP模型。具体而言,它在测试集上的R值为0.9542,MAE为3.0404,RMSE为3.7991,证明了其高精度和可靠性。这些结果证实了所提出的生物启发式模型在混凝土强度预测和优化方面的潜力,为土木工程和材料设计提供了实用价值。