Litcius/Paper detail

Crack identification using electrical impedance tomography and transfer learning

Said Quqa, Luca Landi, Kenneth J. Loh

2023Computer-Aided Civil and Infrastructure Engineering13 citationsDOIOpen Access PDF

Abstract

Sensing skins and electrical impedance tomography constitute a convenient and inexpensive alternative to dense sensor networks for distributed sensing in civil structures. However, their performance can deteriorate with the aging of the sensing film. Guaranteeing high identification performance after minor lesions is crucial to improving their ability to identify structural damage. In this paper, electrical resistance tomography is used to identify the crack locations in nanocomposite paint sprayed onto structural components. The main novelty consists of using crack annotations collected during visual inspections to improve the crack identification performance of deep neural networks trained using simulated datasets through transfer learning. Transfer component analysis is employed for simulation-to-real information transfer and applied at a population level, extracting low-dimensional domain-invariant features shared by simulated models and structures with similar geometry. The results show that the proposed method outperforms traditional approaches for crack localization in complex damage patterns.

Topics & Concepts

Electrical impedance tomographyTransfer of learningElectrical impedanceComputer scienceNoveltyIdentification (biology)TomographyArtificial neural networkPopulationComponent (thermodynamics)Artificial intelligenceMaterials scienceAcousticsEngineeringElectrical engineeringOpticsSociologyBotanyDemographyTheologyPhysicsThermodynamicsPhilosophyBiologyElectrical and Bioimpedance TomographyInfrastructure Maintenance and MonitoringNon-Destructive Testing Techniques
Crack identification using electrical impedance tomography and transfer learning | Litcius