Ta Quoc-Bao, Pham Ngoc-Lan, Kim Jeong-Tae
Department of Ocean Engineering, Pukyong National University, 45 Yongso-ro, Nam-gu, Busan 48513, Republic of Korea.
Sensors (Basel). 2024 Oct 15;24(20):6652. doi: 10.3390/s24206652.
Stress and damage estimation is essential to ensure the safety and performance of concrete structures. The capsule-like smart aggregate (CSA) technique has demonstrated its potential for detecting early-stage internal damage. In this study, a 2 dimensional convolutional neural network (2D CNN) model that learned the EMI responses of a CSA sensor to integrally estimate stress and damage in concrete structures is proposed. Firstly, the overall scheme of this study is described. The CSA-based EMI damage technique method is theoretically presented by describing the behaviors of a CSA sensor embedded in a concrete structure under compressive loadings. The 2D CNN model is designed to learn and extract damage-sensitive features from a CSA's EMI responses to estimate stress and identify damage levels in a concrete structure. Secondly, a compression experiment on a CSA-embedded concrete cylinder is carried out, and the stress-damage EMI responses of a cylinder are recorded under different applied stress levels. Finally, the feasibility of the developed model is further investigated under the effect of noises and untrained data cases. The obtained results indicate that the developed 2D CNN model can simultaneously estimate stress and damage status in the concrete structure.
应力与损伤评估对于确保混凝土结构的安全性和性能至关重要。胶囊状智能骨料(CSA)技术已展现出其在检测早期内部损伤方面的潜力。在本研究中,提出了一种二维卷积神经网络(2D CNN)模型,该模型通过学习CSA传感器的电磁干扰(EMI)响应来整体评估混凝土结构中的应力和损伤。首先,描述了本研究的总体方案。通过描述嵌入混凝土结构中的CSA传感器在压缩载荷下的行为,从理论上阐述了基于CSA的EMI损伤技术方法。设计2D CNN模型以从CSA的EMI响应中学习并提取损伤敏感特征,从而评估应力并识别混凝土结构中的损伤程度。其次,对嵌入CSA的混凝土圆柱体进行了压缩试验,并记录了圆柱体在不同施加应力水平下的应力 - 损伤EMI响应。最后,在噪声和未训练数据情况的影响下进一步研究了所开发模型的可行性。所得结果表明,所开发的2D CNN模型能够同时评估混凝土结构中的应力和损伤状态。