Author:
Moreh Fatahlla,Lyu Hao,Rizvi Zarghaam Haider,Wuttke Frank
Abstract
AbstractCrack detection is a long-standing topic in structural health monitoring. Conventional damage detection techniques rely on intensive, time-consuming, resource-intensive intervention. The current trend of crack detection emphasizes using deep neural networks to build an automated pipeline from measured signals to damaged areas. This work focuses on the seismic-wave-based technique of crack detection for plate structures. Previous work proposed an encoder–decoder network to extract crack-related wave patterns from measured wave signals and predict crack existence on the plate. We extend previous work with extensive experiments on different network components and a data preprocessing strategy. The proposed methods are tested on an expanded crack detection dataset. We found that a robust backbone network, such as Densely Connected Convolutional Network (DenseNet) can effectively extract the features characterizing cracks of wave signals, and by using the reference wave field for normalization, the accuracy of detecting small cracks can be further improved.
Funder
European Union - European Regional Development Fund
Federal Ministry of Economic Affairs and Industry - BMWI and the German Federation of Industrial Research Associations - ZIM/ AIF
Christian-Albrechts-Universität zu Kiel
Publisher
Springer Science and Business Media LLC
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