Kabir Hossein, Wu Jordan, Dahal Sunav, Joo Tony, Garg Nishant
Department of Civil and Environmental Engineering, University of Illinois at Urbana-Champaign, Urbana, IL, USA.
Department of Electrical and Computer Engineering, University of Illinois at Urbana-Champaign, Urbana, IL, USA.
Nat Commun. 2024 Nov 15;15(1):9935. doi: 10.1038/s41467-024-53993-w.
Monitoring water uptake in cementitious systems is crucial to assess their durability against corrosion, salt attack, and freeze-thaw damage. However, gauging absorption currently relies on labor-intensive and infrequent weight measurements, as outlined in ASTM C1585. To address this issue, we introduce a custom computer vision model trained on 6234 images, consisting of 4000 real and 2234 synthetic, that automatically detects the water level in prismatic samples absorbing water. This model provides accurate and frequent estimations of water penetration values every minute. After training the model on 1440 unique data points, including 15 paste mixtures with varying water-to-cement ratios from 0.4 to 0.8 and curing periods of 1 to 7 days, we can now predict initial and secondary sorptivities in real time with high confidence, achieving R² > 0.9. Finally, we demonstrate its application on mortar and concrete systems, opening a pathway toward low-cost and automated durability assessment of construction materials.
监测水泥基体系中的水分吸收对于评估其抗腐蚀、抗盐侵蚀和抗冻融破坏的耐久性至关重要。然而,如ASTM C1585中所述,目前测量吸水率依赖于劳动强度大且不频繁的重量测量。为解决这一问题,我们引入了一个在6234张图像上训练的定制计算机视觉模型,其中包括4000张真实图像和2234张合成图像,该模型可自动检测棱柱形吸水样品中的水位。该模型每分钟提供准确且频繁的水渗透值估计。在1440个独特数据点上训练该模型后,包括15种水灰比从0.4到0.8且养护期为1至7天的浆体混合物,我们现在能够以高置信度实时预测初始和二次吸水率,R²>0.9。最后,我们展示了其在砂浆和混凝土体系中的应用,为建筑材料的低成本和自动化耐久性评估开辟了一条道路。