TY - JOUR
T1 - A physics-informed learning approach for milling stability analysis with deep subdomain adaptation network
AU - Zhao, Dingtang
AU - Jin, Xiaoliang
AU - Wan, Shaoke
AU - Hong, Jun
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/3/1
Y1 - 2025/3/1
N2 - Efficient and accurate chatter prediction is critical for selection of chatter-free process parameters to improve machining productivity and surface quality of the workpiece. However, challenges arise due to the uncertainty and inaccuracy in model parameters, which may lead to significant differences between predicted and measured stability boundaries. This study introduces a novel physics-informed learning approach for efficiently determining stability in milling based on the deep subdomain adaptation network. First, a deep subdomain adaptation network (DSAN) is developed to extract essential features that characterize the relationship between operating conditions and chatter stability, using both physical models and testing data. Subsequently, we introduce the Local Maximum Mean Discrepancy (LMMD) metric that quantifies the discrepancies in mathematical distribution between features from physical models and testing data, which are generally present and tend to be significant under conditions such as high spindle speeds, heavy cutting forces, or when flexible workpieces are involved. Following this, the LMMD loss is defined and incorporated into the established feedforward network. This loss is calculated and minimized iteratively during the network's training via backpropagation. We demonstrate that considering those discrepancies in the proposed hybrid-driven modeling enhances prediction accuracies without compromising efficiency. The proposed approach is experimentally validated by extensive milling tests and exhibits greater industrial applicability compared to previous methods.
AB - Efficient and accurate chatter prediction is critical for selection of chatter-free process parameters to improve machining productivity and surface quality of the workpiece. However, challenges arise due to the uncertainty and inaccuracy in model parameters, which may lead to significant differences between predicted and measured stability boundaries. This study introduces a novel physics-informed learning approach for efficiently determining stability in milling based on the deep subdomain adaptation network. First, a deep subdomain adaptation network (DSAN) is developed to extract essential features that characterize the relationship between operating conditions and chatter stability, using both physical models and testing data. Subsequently, we introduce the Local Maximum Mean Discrepancy (LMMD) metric that quantifies the discrepancies in mathematical distribution between features from physical models and testing data, which are generally present and tend to be significant under conditions such as high spindle speeds, heavy cutting forces, or when flexible workpieces are involved. Following this, the LMMD loss is defined and incorporated into the established feedforward network. This loss is calculated and minimized iteratively during the network's training via backpropagation. We demonstrate that considering those discrepancies in the proposed hybrid-driven modeling enhances prediction accuracies without compromising efficiency. The proposed approach is experimentally validated by extensive milling tests and exhibits greater industrial applicability compared to previous methods.
KW - Chatter stability
KW - Distribution adaptation
KW - Physics-informed learning
KW - Receptance coupling
KW - Transfer learning
UR - https://www.scopus.com/pages/publications/85215112577
U2 - 10.1016/j.ymssp.2025.112312
DO - 10.1016/j.ymssp.2025.112312
M3 - 文章
AN - SCOPUS:85215112577
SN - 0888-3270
VL - 226
JO - Mechanical Systems and Signal Processing
JF - Mechanical Systems and Signal Processing
M1 - 112312
ER -