Deformation stage identification in steel material using acoustic emission with a hybrid denoising method and artificial neural network

Journal Article (2024)
Authors

Lu Cheng (TU Delft - Steel & Composite Structures)

Qingkun Sun (Student TU Delft)

Rui Yan (The Hong Kong Polytechnic University, TU Delft - Steel & Composite Structures)

Roger Groves (TU Delft - Group Groves)

Milan Veljković (TU Delft - Steel & Composite Structures)

Research Group
Steel & Composite Structures
To reference this document use:
https://doi.org/10.1016/j.ymssp.2024.111805
More Info
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Publication Year
2024
Language
English
Research Group
Steel & Composite Structures
Volume number
222
DOI:
https://doi.org/10.1016/j.ymssp.2024.111805
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Abstract

Acoustic emission (AE) is widely used for identifying source mechanisms and the deformation stage of steel material. The effectiveness of this non-destructive monitoring technique heavily depends on the quality of the measured AE signals. However, the AE signals from deformation are easily contaminated by the signals from noise in a noisy environment. This paper presents a hybrid model for deformation stage identification, which combines a self-adaptive denoising technique and an Artificial neural network (ANN). In pursuit of model generality, AE signals were collected from tensile coupon tests with various steel materials and loading speeds. First, a decomposition-based denoising method is applied based on the singular spectral analysis (SSA) and variational mode decomposition (VMD), which is defined as SSA-VMD. Its effectiveness is demonstrated by simulated signals and experimental results. Following the use of the denoising technique, an ANN is constructed to identify the deformation stage of steel materials with the input of features extracted from the filtered AE signals. The results indicate that the ANN achieves a high prediction accuracy of 0.93 in the test set and 0.87 in unseen data. By applying this denoising method, the ANN-based approach enables accurate correlation of the collected AE signals to deformation stages. The finding can be used as the basis for the creation of new methodologies for monitoring structural health status of in-service steel structures.