An Integrated Modeling Approach for ANN-Based Real-Time Thermal Error Compensation on a CNC Turning Center

Thermally induced errors play a critical role in controlling the level of machining accuracy. They can represent a significant proportion of dimensional errors in produced parts. Since thermal errors cannot totally be eliminated at the design stage, active errors compensation appears to be the most economical and realistic solution. Accurate and efficient modeling of the thermally induced errors is an indispensable part of the error compensation process. This paper presents an integrated and comprehensive modeling approach for real-time thermal error compensation. The modeling process is based on multiple temperature measurements, Taguchi’s orthogonal arrays, artificial neural networks and various statistical tools to provide cost effective selection of appropriate temperature variables and modeling conditions as well as to achieve robust and accurate thermal error models. The experimental results on a CNC turning center confirm the feasibility and efficiency of the proposed approach and show that the resultant model can accurately predict the time-variant spindle thermal drift errors under various operating conditions. After compensation, the thermally induced spindle errors were reduced from 19m to less than 1 m. The proposed modeling optimization strategy can be effectively and advantageously used for real-time error compensation since it presents the benefit of straightforward application, reduced modeling time and uncertainty.

[1]  G. G. Stokes "J." , 1890, The New Yale Book of Quotations.

[2]  M. A. Donmez,et al.  A general methodology for machine tool accuracy enhancement by error compensation , 1986 .

[3]  Placid Mathew Ferreira,et al.  A method for estimating and compensating quasistatic errors of machine tools , 1993 .

[4]  J. S. Hunter,et al.  Statistics for experimenters : an introduction to design, data analysis, and model building , 1979 .

[5]  P. A. McKeown,et al.  Reduction and compensation of thermal errors in machine tools , 1995 .

[6]  P. John Statistical Design and Analysis of Experiments , 1971 .

[7]  Jun Ni,et al.  Accuracy enhancement of a horizontal machining center by real-time error compensation , 1996 .

[8]  James B. Bryan,et al.  International Status of Thermal Error Research (1990) , 1990 .

[9]  Günter Spur,et al.  Thermal Behaviour Optimization of Machine Tools , 1988 .

[10]  Xiaoli Li Real-Time Prediction of Workpiece Errors for a CNC Turning Centre, Part 2. Modelling and Estimation of Thermally Induced Errors , 2001 .

[11]  Jun Ni,et al.  The improvement of thermal error modeling and compensation on machine tools by CMAC neural network , 1996 .

[12]  Toshimichi Moriwaki,et al.  Thermal Deformation and Its On-Line Compensation of Hydrostatically Supported Precision Spindle , 1988 .

[13]  K. Kato,et al.  Development of an Intelligent Machining Center Incorporating Active Compensation for Thermal Distortion , 1993 .

[14]  Jerzy Jedrzejewski,et al.  Numerical Optimization of Thermal Behaviour of Machine Tools , 1990 .