Continual-learning-based framework for structural damage recognition
Jiangpeng Shu, Jiawei Zhang, Reachsak Ly, Fangzheng Lin, Yuanfeng Duan

TL;DR
This paper introduces a continual learning framework for structural damage recognition in reinforced concrete, reducing data storage and prediction time while maintaining high accuracy across multiple tasks.
Contribution
It integrates learning without forgetting into ResNet-34, enabling efficient damage recognition with less data and better retention of previous knowledge.
Findings
Reduces data storage and prediction time by 75%
Achieves high accuracy in damage classification
Maintains performance with increasing tasks
Abstract
Multi-damage is common in reinforced concrete structures and leads to the requirement of large number of neural networks, parameters and data storage, if convolutional neural network (CNN) is used for damage recognition. In addition, conventional CNN experiences catastrophic forgetting and training inefficiency as the number of tasks increases during continual learning, leading to large accuracy decrease of previous learned tasks. To address these problems, this study proposes a continuallearning-based damage recognition model (CLDRM) which integrates the learning without forgetting continual learning method into the ResNet-34 architecture for the recognition of damages in RC structures as well as relevant structural components. Three experiments for four recognition tasks were designed to validate the feasibility and effectiveness of the CLDRM framework. In this way, it reduces both…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Fault Detection and Control Systems · Infrastructure Maintenance and Monitoring
