Development of an Intelligent Quality Management System for Micro Laser Welding: An Innovative Framework and Its Implementation Perspectives
Abstract
:1. Introduction
2. Industrial Standards and Laser Micro-Welding
2.1. Regulatory Environment
2.2. Welding Best Practices Adoption
3. Industry 4.0 and Quality Control for Laser Micro-Welding
4. Analysis of Laser Welding Quality On-line Monitoring
4.1. Defects in Laser Micro-Welding
4.2. Defects Capturing
4.2.1. Light Emissions
4.2.2. Acoustic Emissions
4.2.3. Image Processing
4.2.4. Thermal Signals
4.2.5. A Hybrid Data Collection
4.3. Defects Diagnosing
5. Framework of an Intelligent Laser Micro-Welding Quality Management System and Its Implementations
5.1. Vertical Integration
5.1.1. Welding Procedures and Welder Qualifications
5.1.2. Inspection and Testing of Laser Micro Welds
5.1.3. Equipment Maintenance, Calibration and Tooling for Laser Micro-Welding
5.2. Horizontal Integration
5.2.1. Requirements, Technical Challenges and Subcontracting
5.2.2. Production Control
5.2.3. Welding Coordination
5.3. End to End Integration: Co-Design, Servitization and Business Models Support
6. Future Research and Development
- Welding data and analytics: Quality of the information and data captured may constitute a concern and be perceived by some as a limitation to digitization. Further research should be directed to determine when and how welding data quality and the associated analytics are acceptable. The research should pinpoint if an aspect of welding quality should be dependent on data quality and the underlying analytical algorithms and analytics. The integration of Industry 4.0 is assembled on the reliability premise of welding quality. A methodology to measure welding data and ensure their quality should be researched likely through in-process measurement. Standardization of data is also an interesting research area. Incorporating these ideas above into the regular business activities may be the forfeiting of quality data. Traditional NDT reports and data, however, can be falsified, of which most welding professionals are often aware. Blockchain technology, so appropriate for this context, may increase the technology to do so, while limiting the incentive for fraud. NDT data integrity and veracity are areas that should be further researched. Research and development addressing digitization in quality management are further expected to identify all defects and their intricate correlations.
- Welding quality certification and documentation: Product personalization and/or customized product co-design multiply the need to qualify many additional WPS at every exchange with customers, as the design may be unique and involve no previous experience in those specific welds. A fascinating research theme could be the extrapolation of historical data to determine the process parameters for a new weld. Researching the results of allowing this practice in ISO 15611-4, qualification based on previous welding experience, should add substantial value. Updating the ISO 3834 family to reflect these new realities should be considered in research as well, particularly through integration with industry 4.0 principles and data automation.
- There is abundant literature on signal processing of laser welding thicker plates and butt welds on the most common materials used in industry, like steels and aluminum. The research appears to focus often on a generalized “one for all” solution. Further research is needed to find signal correlations to other materials and combinations, including dissimilar materials, weld preparations and joints and smaller thicknesses to establish causality between welding signal and specific defects.
- Business ecosystems for welding: Further research is required for a better understanding of welding process/value chains, their morphology, and strategies for capturing and providing added engineering value. Nowadays there is only incipient research available.
- A final interesting topic is to study the optimal ratio between vertical to horizontal integration for high-value welding companies.
7. Conclusions
- Industrial companies applying laser micro-welding often encounter difficulties assessing the quality of their small welds, particularly in a high-value manufacturing environment, in which defects are not allowed and can be detrimental to business. While appropriate for a lab setting, a mass production-oriented NDT protocol is costly and thus hard to apply on a production shop floor.
- Digitization of the welding processes brings along important consequences for both the production shop floor level and business level. For once, it facilitates the digitization of all activities involved in ISO-3834:2021, which inevitably results in an intelligent welding quality management system. An intelligent quality management system is dynamic and able to offer continuously a varying “snapshot” of the entire quality system, from suppliers or nodes of the network to the various vertical processes inside the company.
- The complexity and nonlinearity of the quality system can foster the required coarseness that cannot be captured in the traditional welding quality management philosophy. The intelligent welding quality management system is data-based and works in the industry 4.0 context, which provides the new framework for quality control and assurance in the laser micro-welding industry for high-pressure products/applications in particular.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Stages | Monitoring Signals | Objectives |
---|---|---|
Monitoring before welding | Optical signals | Seam tracking and gap measuring |
Monitoring during welding | Acoustic signals Optical signals Electrical signals Thermal signals | Defects monitoring, feedback control and feature prediction |
Monitoring after welding | Optical signal Acoustic signal | Defects classification and weld geometry |
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Velázquez de la Hoz, J.L.; Cheng, K. Development of an Intelligent Quality Management System for Micro Laser Welding: An Innovative Framework and Its Implementation Perspectives. Machines 2021, 9, 252. https://doi.org/10.3390/machines9110252
Velázquez de la Hoz JL, Cheng K. Development of an Intelligent Quality Management System for Micro Laser Welding: An Innovative Framework and Its Implementation Perspectives. Machines. 2021; 9(11):252. https://doi.org/10.3390/machines9110252
Chicago/Turabian StyleVelázquez de la Hoz, José Luis, and Kai Cheng. 2021. "Development of an Intelligent Quality Management System for Micro Laser Welding: An Innovative Framework and Its Implementation Perspectives" Machines 9, no. 11: 252. https://doi.org/10.3390/machines9110252
APA StyleVelázquez de la Hoz, J. L., & Cheng, K. (2021). Development of an Intelligent Quality Management System for Micro Laser Welding: An Innovative Framework and Its Implementation Perspectives. Machines, 9(11), 252. https://doi.org/10.3390/machines9110252