Mechanical Quantities Prediction of Metal Cutting by Machine Learning and Simulation Data
Yijin Cheng,
Yan Li,
Yu Cong
et al.
Abstract:Metal cutting is an important process in industrial manufacturing. Using the mechanical quantities of metal cutting to optimize process design is helpful to improve productivity. However, it is expensive to obtain these quantities due to the complexity of the cutting process, including material nonlinearity, geometric nonlinearity, state nonlinearity and their interactions. In this paper, a prediction model is constructed by combining machine learning (ML) and simulation data to quickly acquire multi-difficult… Show more
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