Thermal deformation error is one of the most important factors affecting the CNCs’ accuracy, so research is conducted on the temperature errors affecting CNCs’ machining accuracy; on the basis of analyzing the unpredictability and pre-maturing of the results of the genetic algorithm, as well as the slow speed of the training speed of the particle algorithm, a kind of Mind Evolutionary Algorithm optimized BP neural network featuring extremely strong global search capacity was proposed; type KVC850MA/2 five-axis CNC of Changzheng Lathe Factory was used as the research subject, and the Mind Evolutionary Algorithm optimized BP neural network algorithm was used for the establishment of the compensation model between temperature changes and the CNCs’ thermal deformation errors, as well as the realization method on hardware. The simulation results indicated that this method featured extremely high practical value.
References
[1]
Ni, J. (1997) Review and Outlooks of the CNC Error Compensation. China Mechanical Engineering, 8, 29.
[2]
Fu, J.Z., Yao, X.h., He, Y., et al. (2010) The Developmental Status of CNC Thermal Error Compensation Technology. Aeronautical Manufacturing Technology, 4, 64-66.
[3]
Sun, Y. and Zeng, H.L. (2010) A Kind of New CNC Thermal errors Real-Time Compensation Method. Machinery Design & Manufacture, 1, 244.
[4]
Wang, X.C., Shi, F., Yu, L., et al. (20123) Analyses of 43 Cases of MATLAB Neural Network. Beihang University Press, Beijing.
[5]
Cheng, Y.S. and Yan, S. (1998) Mind-Evolution-Based Machine Learning: Framework and the Implementation of Optimization. Proceedings of IEEE International Conference on Intelligent Engineering Systems, Vienna, 17-19 September 1998, 355-359.
[6]
Liu, J. (2015) Application Research of Mind Evolutionary Algorithm in BP Neural Network Nonlinear Fitting Function. Journal of Mianyang Normal University, 32, 79.
[7]
Ren, B., Ren, X.H. and Li, G.Z. (2013) The Lathes and Hydraulic Pressure of CNC Thermal Compensation Based on PSO Algorithm Optimized BP Neural Network. Machine Tool & Hydraulics, 41, 61.
[8]
Hong, X.H. (2014) Technical Research of CNC Thermal Compensation Based on Embedment. Manufacturing Automation, 36, 39.
[9]
Ren, X.H., Xu, W.D., Liu, L.X., et al. (2010) CNC Thermal Error Compensation Based on Genetic Algorithm Optimized BP Neural Networks. Manufacturing Automation, 33, 41.
[10]
He, X.J. (2004) Optimizations of the Weighted Values and Structures of the Neural Networks Based on Mind Evolutionary Algorithm. Computer Engineering & Science, 26, 38-39.