AI-Assisted 3D Modeling and Engineering Optimization of Artistic Mechanical Parts for TWS Earbud Charging Cases

Main Article Content

Jiayi Qi

Keywords

AI-assisted 3D modeling, engineering optimization, TWS earbud charging cases, artistic mechanical parts

Abstract

Under the fast-growing demand for consumer electronic products, traditional computer-aided design contains several issues, like a long design cycle, insufficient cross-link collaboration, and limited creative expression. To explore the application effect of AI-driven technology for the design of consumer electronic products, this study takes True Wireless Stereo (TWS) earbud charging cases as a research object, analyzes the improvement influences of generative artificial intelligence and digital twin for the design process. By integrating multimodal interaction, prototyping process, data interoperability, and other technologies to achieve full-lifestyle design. The results show that the method effectively increasing the design efficiency, engineering feasibility, and decreasing the total costs of business. This study provides a practical reference for balancing artistic expression and engineering performance in consumer electronic products field.

Abstract 24 | PDF Downloads 19

References

  • [1] Chamola, V., et al., Generative AI for consumer electronics: Enhancing user experience with cognitive and semantic computing. IEEE Consumer Electronics Magazine, 2024. 14(2): p. 10–19.
  • [2] Aloqaily, M., et al., Integrating digital twin and advanced intelligent technologies to realize the metaverse. IEEE Consumer Electronics Magazine, 2022. 12(6): p. 47–55.
  • [3] Li, Y. and Q. Zhang, The analysis of aesthetic preferences for cultural and creative design trends under artificial intelligence. IEEE Access, 2024. 12: p. 158799–158808.
  • [4] Wong, M., C.W. Khong, and H. Thwaites, Applied UX and UCD design process in interface design. Procedia-Social and Behavioral Sciences, 2012. 51: p. 703–708.
  • [5] Lo, J., et al. Aesthetic electronics: Designing, sketching, and fabricating circuits through digital exploration. in Proceedings of the 29th Annual Symposium on User Interface Software and Technology. 2016.
  • [6] Sonderegger, A. and J. Sauer, The influence of design aesthetics in usability testing: Effects on user performance and perceived usability. Applied ergonomics, 2010. 41(3): p. 403–410.
  • [7] Zang, Y., et al., From Sketch to Reality: Enabling High-Quality, Cross-Category 3D Model Generation from Free-Hand Sketches with Minimal Data. IEEE Transactions on Visualization and Computer Graphics, 2026.
  • [8] Hall, A. and M.H. Goldstein. WIP: Generative vs. Traditional Computer-Aided Design-How Design Tools Impact CAD Artifact Quality. in 2024 IEEE Frontiers in Education Conference (FIE). 2024. IEEE.
  • [9] Gharib, I., Integration of sketch-based ideation and 3D modeling with CAD systems. 2013, Brunel University School of Engineering and Design PhD Theses.
  • [10] Hu, L., Application of AutoCAD's 3D Modeling Function in Industrial Modeling Design. Computer-Aided Design & Applications, 2021. 18.
  • [11] Hao, J., S. Luo, and L. Pan, Computer-aided intelligent design using deep multi-objective cooperative optimization algorithm. Future Generation Computer Systems, 2021. 124: p. 49–53.
  • [12] Hunde, B.R. and A.D. Woldeyohannes, Future prospects of computer-aided design (CAD)–A review from the perspective of artificial intelligence (AI), extended reality, and 3D printing. Results in Engineering, 2022. 14: p. 100478.
  • [13] Emmer, C., A. Fröhlich, and J. Stjepandic. Advanced engineering visualization with standardized 3D formats. in IFIP International Conference on Product Lifecycle Management. 2013. Springer.
  • [14] Yao, Y., Emotional design and consumer purchase intention of digital cultural creative products under the background of artificial intelligence. International Journal of Instructional Cases, 2024. 8(2): p. 346–366.
  • [15] Deb, K., K. Sindhya, and J. Hakanen, Multi-objective optimization, in Decision sciences. 2016, CRC Press. p. 161–200.
  • [16] Wang, L., et al., Artificial intelligence in product lifecycle management. The International Journal of Advanced Manufacturing Technology, 2021. 114(3): p. 771–796.
  • [17] Özsoy, H.Ö., AI-driven tools for advancing the industrial design process–a literature review. Gazi University Journal of Science Part B: Art Humanities Design and Planning, 2025. 13(1): p. 77–96.
  • [18] Zhou, J., et al. Understanding nonlinear collaboration between human and AI agents: A co-design framework for creative design. in Proceedings of the 2024 CHI conference on human factors in computing systems. 2024.
  • [19] Sai, S., A. Rastogi, and V. Chamola, Digital twins for consumer electronics. IEEE Consumer Electronics Magazine, 2023. 13(6): p. 11–16.