Convolutional Neural Network-Based Rapid Post-Earthquake Structural Damage Detection: Case Study

Sensors (Basel). 2022 Aug 25;22(17):6426. doi: 10.3390/s22176426.

Abstract

It is necessary to detect the structural damage condition of essential buildings immediately after an earthquake to identify safe structures, evacuate, or resume crucial activities. For this reason, a CNN methodology proposed to detect the structural damage condition of a building is here improved and validated for two currently instrumented essential buildings (Tahara City Hall and Toyohashi Fire Station). Three-dimensional frames instead of lumped mass models are used for the buildings. Besides this, a methodology to select records is introduced to reduce the variability of the structural responses. The maximum inter-storey drift and absolute acceleration of each storey are used as damage indicators. The accuracy is evaluated by the usability of the building, total damage condition, storey damage condition, and total comparison of the damage indicators. Finally, the maximum accuracy and R2 of the responses are obtained as follows: for the Tahara City Hall building, 90.0% and 0.825, respectively; for the Toyohashi Fire Station building, 100% and 0.909, respectively.

Keywords: convolutional neural network; damage detection; power wavelet spectrum; structural health monitoring.

MeSH terms

  • Earthquakes*
  • Neural Networks, Computer

Grants and funding

This research received no external funding.