• International Journal of Extreme Manufacturing
  • Vol. 2, Issue 2, 22001 (2020)
Lingbao Kong*, Xing Peng, Yao Chen, Ping Wang, and Min Xu
Author Affiliations
  • Shanghai Engineering Research Center of Ultra-precision Optical Manufacturing, Department of Optical Science and Engineering, Fudan University, Shanghai 200433, People's Republic of China
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    DOI: 10.1088/2631-7990/ab7ae6 Cite this Article
    Lingbao Kong, Xing Peng, Yao Chen, Ping Wang, Min Xu. Multi-sensor measurement and data fusion technology for manufacturing process monitoring: a literature review[J]. International Journal of Extreme Manufacturing, 2020, 2(2): 22001 Copy Citation Text show less
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    Lingbao Kong, Xing Peng, Yao Chen, Ping Wang, Min Xu. Multi-sensor measurement and data fusion technology for manufacturing process monitoring: a literature review[J]. International Journal of Extreme Manufacturing, 2020, 2(2): 22001
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