Content area

Abstract

Weld evaluation processes are usually conducted in the post-weld stage. In this way, defects are found after the weld is completed, often resulting in disposal of expensive material or lengthy repair processes. Simultaneously, weld quality inspections tend to be performed manually by a human, even for an automated weld. Therefore, a proper real-time weld quality monitoring method associated with a decision-making strategy is needed to increase the productivity and automaticity in weld. In this study, acoustic emission (AE) as a real-time monitoring method is introduced for gas metal arc weld. The AE system is designed to cover a wide range of frequencies from 5 to 400 kHz. Additionally, the welding parameters (weld current, voltage, gas flow rate, and heat input) are recorded concurrently with AE. Different types of weld defects are artificially created to generate different signals. For the automated decision-making system, machine learning algorithms are used. Several features extracted from the AE and welding parameters feed into a machine learning algorithm. A new AE feature as the rate of AE energy accumulation extracted from time driven AE feature is defined. For decision-making, supervised learning models are trained and evaluated using testing data. General classification methods—such as Logistic Regression—predict each data-point separately. In this study, Adversarial Sequence Tagging method is applied to predict the presence of four weld states as good, excessive penetration, burn-through, porosity and porosity-excessive penetration. We explore the prediction task as a sequence tagging problem where the label of a data-point depends on its corresponding features as well as neighboring labels. When all the AE features as well as heat input are used in the feature set, the sequence tagging and logistic regression algorithms achieve a prediction accuracy of 91.18% and 82.35%, respectively, as compared to metallographic analysis.

Details

Title
Machine learning model to predict welding quality using air-coupled acoustic emission and weld inputs
Author
Kaiser, Asif 1 ; Zhang, Lu 2   VIAFID ORCID Logo  ; Derrible Sybil 3 ; Ernesto, Indacochea J 3 ; Ozevin Didem 3 ; Ziebart, Brian 1 

 University of Illinois at Chicago, Department of Computer Science, Chicago, USA (GRID:grid.185648.6) (ISNI:0000 0001 2175 0319) 
 Guilin University of Technology, College of Civil Engineering and Architecture, Guilin, China (GRID:grid.440725.0) (ISNI:0000 0000 9050 0527); University of Illinois at Chicago, Department of Civil and Materials Engineering, Chicago, USA (GRID:grid.185648.6) (ISNI:0000 0001 2175 0319) 
 University of Illinois at Chicago, Department of Civil and Materials Engineering, Chicago, USA (GRID:grid.185648.6) (ISNI:0000 0001 2175 0319) 
Pages
881-895
Publication year
2022
Publication date
Mar 2022
Publisher
Springer Nature B.V.
ISSN
09565515
e-ISSN
15728145
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2627874129
Copyright
© Springer Science+Business Media, LLC, part of Springer Nature 2020.