| Full text | |
| Author(s): |
da Silva, Samuel
;
Yano, Marcus Omori
;
Teloli, Rafael de Oliveira
;
Chevallier, Gael
;
Ritto, Thiago G.
Total Authors: 5
|
| Document type: | Journal article |
| Source: | ASCE-ASME JOURNAL OF RISK AND UNCERTAINTY IN ENGINEERING SYSTEMS PART B-MECHANICAL ENGINEERING; v. 10, n. 1, p. 10-pg., 2024-03-01. |
| Abstract | |
This paper investigates how to improve the performance of a classifier of tightening torque in bolted joints by applying transfer learning. The procedure uses vibration measurements to extract features and to train a classifier using a Gaussian mixture model (GMM). The key to enhancing the surrogate model for torque loss detection is considering the bolted joint structures with more qualitative and quantitative knowledge as the source domain, where labels are known and the classifier is trained. After applying a domain adaptation method, it is possible to reuse this trained classifier for a target domain, i.e., a set of different limited data of bolted joint structures with unknown labels. Four different bolted joint structures are analyzed. The new experimental tests adopt a wide range of torque in the bolts to extract the features with the respective labels under safe or unsafe tightening torque. All combinations of possible source or target domains are considered in the application to demonstrate whether the method can aid the detection of the loss of tightening torque, reducing the learning steps and the training sample. A guidance list is discussed based on this population-based structural health monitoring (SHM) of bolted joint structures. (AU) | |
| FAPESP's process: | 19/19684-3 - Nonlinear Structural Health Monitoring of Structures assembled by Bolted Joints |
| Grantee: | Samuel da Silva |
| Support Opportunities: | Regular Research Grants |
| FAPESP's process: | 23/00402-3 - XII International Conference on Structural Dynamics - EURODYN 2023 |
| Grantee: | Samuel da Silva |
| Support Opportunities: | Research Grants - Meeting - Abroad |