Abstract
This paper proposes a cutting mechanics-based machine learning (CMML) modeling method to discover governing equations of machining dynamics. The main idea of CMML design is to integrate existing physics in cutting mechanics and unknown physics in data to achieve automated model discovery, with the potential to advance machining modeling. Based on existing physics in cutting mechanics, CMML first establishes a general modeling structure governing machining dynamics, that is represented by a set of unknown differential algebraic equations. CMML can therefore achieve data-driven discovery of these unknown equations through effective cutting mechanics-based nonlinear learning function space design and discrete optimization-based learning algorithm. Experimentally verified time domain simulation of milling is used to validate the proposed modeling method. Numerical results show CMML can discover the exact milling dynamics models with nonlinear process damping and edge force from noisy data. This indicates that CMML has the potential to be used for advancing machining modeling in practice with the development of effective metrology systems.
| Original language | English |
|---|---|
| Pages (from-to) | 759-769 |
| Number of pages | 11 |
| Journal | Manufacturing Letters |
| Volume | 44 |
| DOIs | |
| State | Published - Aug 2025 |
Funding
The authors acknowledge support from the NSF Engineering Research Center for Hybrid Autonomous Manufacturing Moving from Evolution to Revolution (ERC-HAMMER) under Award Number EEC-2133630. This work was partially supported by the DOE Office of Energy Efficiency and Renewable Energy (EERE), under contract DE-AC05 00OR22725. The authors also gratefully acknowledge the AI Tennessee Initiative and Southeastern Advanced Machine Tools Network (SEAMTN) to partially support this research.
Keywords
- Cutting mechanics
- Delayed differential equations
- Machine learning
- Machining dynamics
- Modeling