Damage Detection of Seismically Excited Buildings Using Neural Network Arrays with Branch Pruning Optimization
Journal
Buildings
Journal Volume
15
Journal Issue
12
Start Page
2052
ISSN
2075-5309
Date Issued
2025-06-13
Author(s)
Abstract
In structural health monitoring, visual inspection remains vital for detecting damage, especially in concealed elements such as columns and beams. To improve damage localization, many studies have investigated and implemented deep learning into damage detection frameworks. However, the practicality of such models is often limited by their computational demands, and the relative accuracy may suffer if input features lack sensitivity to localized damage. This study introduces an efficient method for estimating damage locations and severity in buildings using a neural network array. A synthetic dataset is first generated from a simplified building model that includes floor flexural behavior and reflects the target dynamics of the structures. A dense, single-layer neural network array is initially trained with full floor accelerations, then pruned iteratively via the Lottery Ticket Hypothesis to retain only the most effective sub-networks. Subsequently, critical event measurements are input into the pruned array to estimate story-wise stiffness reductions. The approach is validated through numerical simulation of a six-story model and further verified via shake table tests on a scaled twin-tower steel-frame building. Results show that the pruned neural network array based on the Lottery Ticket Hypothesis achieves high accuracy in identifying stiffness reductions while significantly reducing computational load and outperforming full-input models in both efficiency and precision.
Subjects
branch pruning optimization
building damage detection
Lottery Ticket Hypothesis
neural network
stiffness reduction
structural health monitoring
SDGs
Publisher
MDPI AG
Type
journal article
