RESEARCH AND PRACTICE ON THE CONSTRUCTION OF A VIRTUAL SIMULATION TRAINING PLATFORM FOR INTELLIGENT MANUFACTURING
Volume 6, Issue 4, Pp 31-35, 2024
DOI: 10.61784/ejst3023
Author(s)
YanQiao Ji
Affiliation(s)
Liaoning Equipment Manufacturing Vocational and Technical College, Shenyang 110161, Liaoning, China.
Corresponding Author
YanQiao Ji
ABSTRACT
The construction of a demonstrative virtual simulation training base for vocational education is a crucial task aimed at adapting to national strategies and digital economic development requirements, serving the cultivation of composite technical and skilled talents in the new era, and promoting the high-quality development of vocational education in the context of the rapid development of new generation information technologies represented by artificial intelligence, big data 5G, virtual reality technology, etc. In recent years, the national and local governments have continuously strengthened policy guidance, invested a large amount of financial support, and actively transformed their thinking to implement digital transformation. Major universities have explored new ways to use virtual reality new technologies to reform traditional education and teaching models, solve the "three highs and three difficulties" problems in vocational education teaching and training courses, improve teaching quality, and cultivate skilled talents that meet the needs of enterprises.In this context, we have designed and developed an intelligent manufacturing virtual simulation training platform featuring digital twin capabilities, based on the existing intelligent manufacturing training base. This platform comprises one production line with four unit islands, enabling it to simulate the entire operation process of each unit island. Through practical teaching activities involving 436 students from various majors, the platform has proven to effectively enhance students’ practical skills.
KEYWORDS
Intelligent manufacturing; Virtual simulation; Digital twins; Training platform
CITE THIS PAPER
YanQiao Ji. Research and practice on the construction of a virtual simulation training platform for intelligent manufacturing. Eurasia Journal of Science and Technology. 2024, 6(4): 31-35. DOI: 10.61784/ejst3023.
REFERENCES
[1] Zheng P, Wang HH, Sang ZQ, et al. Smart manufacturing systems for Industry 4.0: conceptual framework, scenarios, and future perspectives. Frontiers of Mechanical Engineering, 2018, 13, 137-150. DOI: https://doi.org/10.1007/s11465-018-0499-5.
[2] Tao F, Qi QL, Liu A, et al. Data-driven smart manufacturing. J Manuf Syst, 2018. 48, Part C, 157-169. DOI: https://doi.org/10.1016/j.jmsy.2018.01.006.
[3] Zhong RY, Xu X, Klotz E, et al. intelligent manufacturing in the context of Industry 4.0: a review. Engineering, 2017, 3(5): 616-630. DOI: https://doi.org/10.1016/J.ENG.2017.05.015.
[4] Yadav A, Jayswal SC. Modelling of flexible manufacturing system: a review. International Journal of Production Research, 2017, 56(7): 2464-2487. DOI: https://doi.org/10.1080/00207543.2017.1387302.
[5] Wang W, Wang X, Wu W, et al. Research on virtual simulation training base in higher vocational colleges. China Journal of Multimedia & Network Teaching, 2024, 07.
[6] Ye,WY. Research and Practice on the Construction of Virtual Simulation Training Center Based on Intelligent Manufacturing. Equipment Manufacturing Technology, 2024, 08.
[7] Liu,YG,Yao, LQ, Zhu, H. Practice of Digital Twin Virtual Simulation in Intelligent Manufacturing Production Line Technology Course. Science & Technology Information, 2023, 21(04). DOI: 10.16661/j.cnki.1672-3791.2207-5042-5588.
[8] Liu, M, Zhang, LD, Zheng J, et al. Design and Implementation of Digital Twin for Smart Factory. Automation Technology and Applications, 2024, 5.
[9] Xu, XL, Liu, S, Li HY, et al. Research and Practice on the Construction of Virtual Simulation Training Base for Smart Agricultural Equipment. Smart Agriculture Guide, 2024, 16.
[10] Luo, BF, Tong, ZL, Long YK, et al. Exploration of Intelligent Manufacturing Virtual Simulation Platform Construction in the Era of New Engineering Science. Machinery Management Development, 2024.