学习迁移
计算机科学
桥(图论)
人工智能
分类器(UML)
域适应
试验数据
机器学习
领域(数学分析)
深度学习
核(代数)
概率分布
人工神经网络
特征(语言学)
模式识别(心理学)
数学
医学
数学分析
统计
组合数学
内科学
程序设计语言
语言学
哲学
作者
Haitao Xiao,Limeng Dong,Wenjie Wang,Harutoshi Ogai
出处
期刊:IEEE Sensors Journal
[Institute of Electrical and Electronics Engineers]
日期:2022-08-01
卷期号:22 (15): 15258-15272
被引量:6
标识
DOI:10.1109/jsen.2022.3186885
摘要
Deep learning based bridge damage diagnosis methods can successfully use labeled data to detect bridge damage. These successful applications usually need that the training samples (source domain) and test samples (target domain) obey the same probability distribution. However, it is difficult to acquire a large amount of labeled data with damage information from actual bridges. It is also difficult to apply a model trained with bridge A to diagnose bridge B because of the distribution discrepancy of data from different bridges or environments. Therefore, transferring a well-trained damage diagnosis model to another bridge with unlabeled data remains a major challenge. Motivated by transfer learning, this paper proposes a new intelligent damage diagnosis method for bridges, namely, sub-domain adaptive deep transfer learning network (SADTLN), to solve the feature generalization problem in different bridges. In our method, a multi-kernel local maximum mean discrepancy (MK-LMMD) based sub-domain adaptation module, including a domain classifier for aligning the global distribution and a sub-domain multi-layer adaptation for aligning local distribution, is proposed for transfer learning, so that the learned features are domain-invariant. Experiments prove the effectiveness and advancement of the proposed method. This exploration will promote the practical application of intelligent bridge structural damage diagnosis.
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