Title
Surface roughness stabilization method based on digital twin-driven machining parameters self-adaption adjustment: a case study in five-axis machining
Abstract
Surface roughness, which has a significant influence on fatigue strength and wear resistance, is an important technical parameter. In practical machining, it is unstable and may be larger than the acceptable surface roughness due to unstable machining process. This will seriously deteriorate the surface performance of the workpieces. Therefore, an effective surface roughness stabilization method is of great significance to improve machining efficiency and reduce machining cost. In this paper, a surface roughness stabilization method is proposed and illustrated by taking five-axis machining as an example. A self-learning surface roughness prediction model based on Pigeon-Inspired Optimization and Support Vector Machine is firstly constructed and its prediction error is only 8.69% in the initial stage. This model has the self-learning ability that the prediction accuracy can be improved with the increase of training data. Furthermore, a machining parameters self-adaption adjustment method based on digital twin is proposed to make the machined surface quality stable. In this method, considering the feasibility of practical machining operation, the cutter posture (i.e. lead angle and tilt angle in five-axis machining) and spindle speed are selected as the adjustable parameters. When the predicted surface roughness doesn’t meet the requirements, the Gradient Descent algorithm is applied to recalculate the new parameters for adjustment. According to the experimental results, the proposed method can stabilize surface roughness and improve the surface quality, which is vital for the precision manufacturing of complex workpiece. Meanwhile, it also greatly improves the intelligence level of manufacturing and production.
Year
DOI
Venue
2022
10.1007/s10845-020-01698-4
Journal of Intelligent Manufacturing
Keywords
DocType
Volume
Surface roughness stabilization, Pigeon-Inspired Optimization and Support Vector Machine (PIO–SVM), Self-learning, Machining parameters self-adaption adjustment, Digital twin
Journal
33
Issue
ISSN
Citations 
4
0956-5515
0
PageRank 
References 
Authors
0.34
14
6
Name
Order
Citations
PageRank
Zhao, Zengya100.34
Sibao Wang200.68
Wang, Zehua300.34
Shilong Wang423.41
Chi Ma501.69
Bo Yang623.75