
@Article{cmes.2026.078250,
AUTHOR = {Mohammadreza Vafaei, Sophia C. Alih, Abdirahman Abdulkadir},
TITLE = {Rapid Seismic Damage Quantification for Reinforced Concrete Frames using Minimal Strain Inputs and Neural Networks Trained via Pushover Analysis},
JOURNAL = {Computer Modeling in Engineering \& Sciences},
VOLUME = {146},
YEAR = {2026},
NUMBER = {3},
PAGES = {0--0},
URL = {http://www.techscience.com/CMES/v146n3/66812},
ISSN = {1526-1506},
ABSTRACT = {Rapid quantification of seismic-induced damage immediately following an earthquake is critical for determining whether a structure is safe for continued occupation or requires evacuation. This study proposes a novel damage identification method that utilizes limited strain data points, significantly reducing installation, maintenance, and data analysis costs compared to traditional distributed sensor networks. The approach integrates finite element (FE) modeling to generate capacity curves through pushover analysis, incorporates noise-augmented datasets for Artificial Neural Network (ANN) training, and classifies structural conditions into four damage levels: Operational (OP), Immediate Occupancy (IO), Life Safety (LS), and Collapse Prevention (CP). To evaluate the method’s accuracy and efficiency, it was applied to two reinforced concrete (RC) frames; a single-story frame tested experimentally under cyclic loading and a three-story frame analyzed under various lateral load patterns. Strain data from selected beam and column ends were used as ANN inputs, while the corresponding damage classes served as outputs. Confusion matrix results demonstrated high true positive rates (>85% for the single-story and >90% for the three-story frame), even with a reduced number of sensors. The model also exhibited strong robustness to White Gaussian Noise (SNR = 2.5–5 dB) and generalized effectively to nonlinear time-history analyses under scaled ground motions (PGA = 0.1–1.0 g). Feature selection using the MRMR and ANOVA algorithms further enhanced computational efficiency. Overall, the proposed ANN-based framework has strong potential for real-time structural health monitoring applications.},
DOI = {10.32604/cmes.2026.078250}
}



