Design Method of Equipment Carbon Emission Monitoring System Driven by Carbon Footprint Knowledge in Manufacturing Process
KE Qingdi1,2, CUI Huatao1,2, ZOU Xiang1,2, BAO Hong1,2, HUANG Haihong1,2
1. School of Mechanical Engineering, Hefei University of Technology, Hefei 230009; 2. Anhui Provincial Key Laboratory of Low Carbon Recycling Technology and Equipment for Mechanical and Electrical Products, Heifei 230009
KE Qingdi, CUI Huatao, ZOU Xiang, BAO Hong, HUANG Haihong. Design Method of Equipment Carbon Emission Monitoring System Driven by Carbon Footprint Knowledge in Manufacturing Process[J]. Journal of Mechanical Engineering, 2025, 61(2): 395-406.
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