Adaptive Optimization Method for Prediction and Compensation of Thin-Walled Parts Machining Deformation Based on On-Machine Measurement
Abstract
:1. Introduction
2. Literature Review
2.1. Simulation-Based Prediction and Compensation of Machining Deformation
2.2. Measurement-Based Compensation Methods
3. Efficient Machining Deformation Prediction Based on SSM
3.1. Principle of SSM Establishment
3.2. Structure and Composition of SSM
3.3. Cutting Force Estimation
3.4. Machining Deformation Prediction Considering Coupling between Force and Deformation
4. Iterative Optimization Compensation Method Based on OMM and SSM
4.1. SSM Iterative Optimization Based on OMM
4.2. Machining Deformation Compensation Based on the Optimized Stiffness Model
4.2.1. Machining of Long Straight Segment Trajectories
4.2.2. Error Calculation and Compensation Process of the Stiffness Model
5. Case Study
5.1. Experimental and Simulation Environment
5.2. Comparison of Calculation Effects between SSM and Conventional FEM
5.3. Verification of SSM Deformation Prediction Effect
5.4. Validation of the Proposed Iterative Optimization Compensation Strategy
6. Conclusions
- (1)
- Compared to the pure FEM-based machining deformation prediction model, the proposed SSM model exhibits higher computational efficiency and flexibility while ensuring essentially the same prediction accuracy.
- (2)
- For the initially used SSM, iterative correction based on the interlayer correction coefficient βj,i can gradually improve the accuracy of compensation machining, The deviation of the prediction model that was iteratively optimized by OMM was reduced by 75.9%. Thus, the workpieces can finally meet the accuracy requirements, indicating that the proposed method can be used for the compensation of single parts.
- (3)
- For parts that are machined in batches, the iterative correction based on the inter-part correction coefficient αj,i can further improve the accuracy of compensation machining, which is 56.4% higher than that of SSM used for the first time. The utilization rate of machining error information is improved through the use of αj,i and βj,i.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Material | Young’s Modulus (GPa) | Poisson’s Ratio | Density (kg/m3) |
---|---|---|---|
AL6061 | 70 | 0.33 | 2.75 × 103 |
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Wu, L.; Wang, A.; Wang, K.; Xing, W.; Xu, B.; Zhang, J.; Yu, Y. Adaptive Optimization Method for Prediction and Compensation of Thin-Walled Parts Machining Deformation Based on On-Machine Measurement. Sensors 2024, 24, 613. https://doi.org/10.3390/s24020613
Wu L, Wang A, Wang K, Xing W, Xu B, Zhang J, Yu Y. Adaptive Optimization Method for Prediction and Compensation of Thin-Walled Parts Machining Deformation Based on On-Machine Measurement. Sensors. 2024; 24(2):613. https://doi.org/10.3390/s24020613
Chicago/Turabian StyleWu, Long, Aimin Wang, Kang Wang, Wenhao Xing, Baode Xu, Jiayu Zhang, and Yuan Yu. 2024. "Adaptive Optimization Method for Prediction and Compensation of Thin-Walled Parts Machining Deformation Based on On-Machine Measurement" Sensors 24, no. 2: 613. https://doi.org/10.3390/s24020613
APA StyleWu, L., Wang, A., Wang, K., Xing, W., Xu, B., Zhang, J., & Yu, Y. (2024). Adaptive Optimization Method for Prediction and Compensation of Thin-Walled Parts Machining Deformation Based on On-Machine Measurement. Sensors, 24(2), 613. https://doi.org/10.3390/s24020613