Unsupervised structural damage identification based on covariance matrix and deep clustering

Author:

Zhang Xianwen1,Wang Zifa12ORCID,Zhao Dengke1,Wang Jianming1,Li Zhaoyan1

Affiliation:

1. Institute of Engineering Mechanics China Earthquake Administration Harbin China

2. CEAKJ ADPRHexa Inc Shaoguan China

Abstract

SummaryStructural damage identification is a major task in structural health monitoring. Machine learning and deep learning algorithms have been widely applied in the research of structural damage identification. Supervised algorithms require expert labeling, making it difficult to implement in engineering applications. Unsupervised structural damage identification algorithms are generally divided into two parts: damage‐sensitive factor extraction and damage determination. Existing algorithms all perform these two steps separately. This paper proposes a damage identification method combining covariance matrix and improved deep embedding clustering network (IDEC). IDEC can perform damage‐sensitive factor extraction and damage determination operations at the same time. The covariance matrix that introduces delay information contains rich damage features, and the combination of the two has been proven to effectively mine the damage‐sensitive feature space. After network hyperparameter optimization via Bayesian optimization, the proposed method is applied to the damage identification and quantification using real bridge acceleration response data under vehicle load. The results show that this method can identify structural damage with an accuracy of up to 97% with better performance than existing technologies, and it also has great performance in identifying small damages. The proposed method is expected to increase the damage identification accuracy if applied in engineering practice.

Funder

Institute of Engineering Mechanics, China Earthquake Administration

National Natural Science Foundation of China

Publisher

Wiley

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