Damage Detection
Damage detection research focuses on automatically identifying structural flaws using various data sources, primarily aiming to improve safety and reduce maintenance costs across diverse applications. Current research emphasizes the use of deep learning models, including convolutional neural networks (CNNs), autoencoders, generative adversarial networks (GANs), and transformers, often combined with techniques like transfer learning and attention mechanisms to enhance accuracy and efficiency, particularly in handling noisy or incomplete data. These advancements are significant for improving structural health monitoring (SHM) in civil engineering, cultural heritage preservation, and industrial settings, enabling more proactive and data-driven maintenance strategies.
Papers
Generative Adversarial Networks for Labeled Acceleration Data Augmentation for Structural Damage Detection
Furkan Luleci, F. Necati Catbas, Onur Avci
Generative Adversarial Networks for Data Generation in Structural Health Monitoring
Furkan Luleci, F. Necati Catbas, Onur Avci
Generative Adversarial Networks for Labelled Vibration Data Generation
Furkan Luleci, F. Necati Catbas, Onur Avci
A Fast Parallel Tensor Decomposition with Optimal Stochastic Gradient Descent: an Application in Structural Damage Identification
Ali Anaissi, Basem Suleiman, Seid Miad Zandavi
Characterizing Human Explanation Strategies to Inform the Design of Explainable AI for Building Damage Assessment
Donghoon Shin, Sachin Grover, Kenneth Holstein, Adam Perer