收藏切换
Structural damage identification via a deep belief memory network
收藏切换
PDF
Sheng-En FANG1, 2, Yang LIU1
Journal of Vibration Engineering | 2024, 37(11) : 1917 - 1924
Less
收藏切换
Journal of Vibration Engineering | 2024, 37(11): 1917-1924
Structural damage identification via a deep belief memory network
Full
Sheng-En FANG1, 2, Yang LIU1
Affiliations
  • 1College of Civil Engineering,Fuzhou University,Fuzhou 350108,China
  • 2National & Local Joint Engineering Research Center for Seismic and Disaster Informatization of Civil Engineering, Fuzhou University,Fuzhou 350108,China
Published: 2024-11-28 doi: 10.16385/j.cnki.issn.1004-4523.2024.11.012
Outline
收藏切换

Extracting sensitive damage features from structural response signals is crucial for damage identification methods based on pattern classification. To this end,a hybrid network that combines a deep belief networks (DBN) and a long-short term memory (LSTM) network is proposed through a hybrid learning mechanism to utilize the merits of both networks in the aspects of extracting high-order abstract features and considering data sequence correlations. First,transmissibility data from response signals are sequentially input into the DBN to achieve the initial data compression and feature extraction,reducing the redundant information in the responses. Then,the extracted feature sequences are input into the LSTM network to consider the correlation between the different responses for acquiring the relevant sensitive damage features. Finally,a classification layer with the Softmax function is used to classify the features output by the LSTM network. Thereby,different structural damage patterns can be identified. The damage identification results on a three-dimensional experimental steel frame demonstrate that the hybrid learning mechanism can better train the network parameters,and the fine-tuning on the whole hybrid network contributes to the subsequent damage feature classification. Under the pollution of numerical or measured noises,the hybrid network can still effectively perform the data compression,feature extraction and classification. The various damage scenarios of the experimental frame are well identified.

damage identification  /  frame structure  /  deep belief network  /  long short-term memory network  /  hybrid learning mechanism
Sheng-En FANG, Yang LIU. Structural damage identification via a deep belief memory network[J]. Journal of Vibration Engineering, 2024 , 37 (11) : 1917 -1924 . DOI: 10.16385/j.cnki.issn.1004-4523.2024.11.012
Year 2024 volume 37 Issue 11
PDF
79
40
Cite this Article
BibTeX
Article Info
doi: 10.16385/j.cnki.issn.1004-4523.2024.11.012
  • Receive Date:2023-04-14
  • Online Date:2026-02-12
  • Published:2024-11-28
Article Data
Affiliations
History
  • Received:2023-04-14
  • Revised:2023-06-17
Funding
Affiliations
    1College of Civil Engineering,Fuzhou University,Fuzhou 350108,China
    2National & Local Joint Engineering Research Center for Seismic and Disaster Informatization of Civil Engineering, Fuzhou University,Fuzhou 350108,China
References
Share
https://castjournals.cast.org.cn/joweb/zdgcxb/EN/10.16385/j.cnki.issn.1004-4523.2024.11.012
Share to
QR

Scan QR to access full text

Cite this article
BibTeX
Citations
表12种不同金属材料的力学参数

Family
属数
Number of
genus
种数
Number of
species
占总种数比例
Percentage of
total species (%)

Genus
种数
Number of
species
占总种数比例
Percentage of total
species (%)
鹅膏菌科Amanitaceae 2 11 5.26 鹅膏菌属 Amanita 10 4.78
小菇科 Mycenaceae 2 12 5.74 丝盖伞属 Inocybe 5 2.39
多孔菌科 Polyporaceae 8 14 6.70 蜡蘑属 Laccaria 5 2.39
红菇科 Russulaceae 3 23 11.00 小皮伞属 Marasmius 6 2.87
小菇属 Mycena 11 5.26
光柄菇属 Pluteus 5 2.39
红菇属 Russula 17 8.13
栓菌属 Trametes 5 2.39
关闭全屏
  • BibTeX
  • EndNote
  • RefWorks
  • TxT