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Digital twin-driven surface roughness prediction and process parameter adaptive optimization
Affiliation:1. College of Mechanical Engineering, Donghua University, Shanghai 201620, China;2. Department of Mechanical Engineering, The University of Auckland, Auckland 1010, New Zealand;3. Department of Industrial and Systems Engineering, The Hong Kong Polytechnic University, Hong Kong, China;4. Laboratory for Artificial Intelligence in Design, Hong Kong Science Park, New Territories, Hong Kong, China;1. College of Mechanical Engineering, Chongqing University, Chongqing 400044, China;2. State Key Laboratory of Mechanical Transmissions, Chongqing University, Chongqing 400044, China;3. Chongqing University of Arts and Sciences, Chongqing 400044, China;4. Ammunition Packaging Products Factory, Xinhua Chemical Co., Ltd., Shanxi 030000, China
Abstract:In the process of parts machining, the real-time state of equipment such as tool wear will change dynamically with the cutting process, and then affect the surface roughness of parts. The traditional process parameter optimization method is difficult to take into account the uncertain factors in the machining process, and cannot meet the requirements of real-time and predictability of process parameter optimization in intelligent manufacturing. To solve this problem, a digital twin-driven surface roughness prediction and process parameter adaptive optimization method is proposed. Firstly, a digital twin containing machining elements is constructed to monitor the machining process in real-time and serve as a data source for process parameter optimization; Then IPSO-GRNN (Improved Particle Swarm Optimization-Generalized Regression Neural Networks) prediction model is constructed to realize tool wear prediction and surface roughness prediction based on data; Finally, when the surface roughness predicted based on the real-time data fails to meet the processing requirements, the digital twin system will warn and perform adaptive optimization of cutting parameters based on the currently predicted tool wear. Through the development of a process-optimized digital twin system and a large number of cutting tests, the effectiveness and advancement of the method proposed in this paper are verified. The organic combination of real-time monitoring, accurate prediction, and optimization decision-making in the machining process is realized which solves the problem of inconsistency between quality and efficiency of the machining process.
Keywords:Digital twin  Process parameter optimization  Surface roughness prediction  Tool wear prediction  IPSO-GRNN
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