Deep CNNs and Adversarial Regularization for Fatigue Damage Failure Prediction of Concrete Anchors
Open access
Date
2020-02Type
- Conference Poster
ETH Bibliography
yes
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Abstract
Fatigue experiments present with large scatter even for identical specimens tested under controlled laboratory conditions. It has long been known that variations in the mechanical behavior of fatigued metals occur, such as hardening or softening and variations on the shape of hysteresis curves. In order to incorporate measurements in the fatigue life prediction of concrete anchors, a fully data-driven model, using load-displacement and acceleration data, was trained to predict directly the remaining cycles to failure for anchors embedded in cracked concrete loaded in variable amplitude fatigue. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000456700Publication status
publishedPublisher
ETH Zurich, Department of Civil Environmental and Geomatic EngineeringEvent
Subject
Deep Learning; domain adversarial training; Fatigue prediction; Convolutional neural network (CNN); DenseNetOrganisational unit
03890 - Chatzi, Eleni / Chatzi, Eleni
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ETH Bibliography
yes
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