Digital Engineering Methods in Practical Use during Mechatronic Design Processes
Abstract
:1. Introduction
- Which use-cases of digital engineering methods are currently available for the application in product development?
2. Materials and Methods
2.1. Product Development Process According to VDI 2206
2.2. Digital Engineering
3. Literature Review
4. Results
4.1. System Design
4.2. Implementation
4.3. System Integration
4.4. Validation
5. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Area | Keywords |
---|---|
General | “data mining” | “machine learning” | “data-driven” | “digital engineering” & “product development” & NOT “construction” |
AND | |
System Design | “requirement” | “concept” | “system design” |
Implementation | “design” | “application” & “domain specific” | “subsystem” | “mechatronics” & “development” & “method” | “product” |
System Integration | “system integration” | (“component” & “integration” & “system”) & “method” | “product” |
Validation | (“data-driven” | “machine learning” | “data mining”) & (“design” | “application”) & (“development” & (method* | “product”) & “assurance”) & NOT “construction” |
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Gerschütz, B.; Sauer, C.; Kormann, A.; Nicklas, S.J.; Goetz, S.; Roppel, M.; Tremmel, S.; Paetzold-Byhain, K.; Wartzack, S. Digital Engineering Methods in Practical Use during Mechatronic Design Processes. Designs 2023, 7, 93. https://doi.org/10.3390/designs7040093
Gerschütz B, Sauer C, Kormann A, Nicklas SJ, Goetz S, Roppel M, Tremmel S, Paetzold-Byhain K, Wartzack S. Digital Engineering Methods in Practical Use during Mechatronic Design Processes. Designs. 2023; 7(4):93. https://doi.org/10.3390/designs7040093
Chicago/Turabian StyleGerschütz, Benjamin, Christopher Sauer, Andreas Kormann, Simon J. Nicklas, Stefan Goetz, Matthias Roppel, Stephan Tremmel, Kristin Paetzold-Byhain, and Sandro Wartzack. 2023. "Digital Engineering Methods in Practical Use during Mechatronic Design Processes" Designs 7, no. 4: 93. https://doi.org/10.3390/designs7040093