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Advanced virtual manufacturing systems: A review

Mohsen Soori Behrooz Arezoo Roza Dastres

Mohsen Soori, Behrooz Arezoo, Roza Dastres. Advanced virtual manufacturing systems: A review[J]. 先进制造科学与技术, 2023, 3(3): 2023009. doi: 10.51393/j.jamst.2023009
引用本文: Mohsen Soori, Behrooz Arezoo, Roza Dastres. Advanced virtual manufacturing systems: A review[J]. 先进制造科学与技术, 2023, 3(3): 2023009. doi: 10.51393/j.jamst.2023009
Mohsen Soori, Behrooz Arezoo, Roza Dastres. Advanced virtual manufacturing systems: A review[J]. Journal of Advanced Manufacturing Science and Technology , 2023, 3(3): 2023009. doi: 10.51393/j.jamst.2023009
Citation: Mohsen Soori, Behrooz Arezoo, Roza Dastres. Advanced virtual manufacturing systems: A review[J]. Journal of Advanced Manufacturing Science and Technology , 2023, 3(3): 2023009. doi: 10.51393/j.jamst.2023009

Advanced virtual manufacturing systems: A review

doi: 10.51393/j.jamst.2023009
详细信息
    通讯作者:

    Mohsen Soori,E-mail: Mohsen.soori@gmail.com,Mohsen.soori@kyrenia.edu.tr

Advanced virtual manufacturing systems: A review

  • 摘要:

    Advanced virtual manufacturing systems refer to highly sophisticated computer-based systems which simulate and optimize manufacturing processes in a virtual environment. Recently, many researchers have presented research works in different areas of simulation and analysis of manufacturing process in virtual environments such as cloud manufacturing, virtual training systems, virtual inspection systems, virtual process planning, flexible manufacturing systems, virtual manufacturing networks, virtual monitoring systems, virtual manufacturing for optimized production process, virtual machining systems and virtual commissioning systems. The advantages of virtual manufacturing systems include improving the quality of the produced components, decreasing the quantity of waste materials and accelerate product and process design using virtual simulation and modification. As a result, accuracy as well as efficiency in process of part manufacturing can be increased by applying the virtual environments to manufacturing operations. Moreover, digital marketing by using virtual manufacturing systems can increase the added value in the process of part production. To analyze and modify the processes of part production, recent achievements in virtual manufacturing systems are reviewed and presented in the study. The applications of virtual manufacturing systems in creating manufacturing processes are discussed, and future research works are also proposed. It has been discovered that reviewing and evaluating recent achievements in the published papers can promote the process of manufacturing engineering using virtual simulation and modification.

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出版历程
  • 收稿日期:  2023-04-24
  • 修回日期:  2023-05-14
  • 网络出版日期:  2023-06-02
  • 刊出日期:  2023-05-30

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