Intelligent Sliding Mode Control of Cutting Force During Single-Point Turning Operations

Author:

Buckner Gregory D.1

Affiliation:

1. Department of Mechanical and Aerospace Engineering, North Carolina State University, Raleigh, NC 27695

Abstract

A novel intelligent control architecture has been developed to regulate cutting forces during single-point turning operations. A self-adapting Sliding Mode Controller (SMC) accounts for parameter variations and unmodeled dynamics in the cutting process. A unique artificial neural network, the 2-Sigma network, statistically bounds modeling uncertainties between a low-order, linear dynamic model and the actual cutting process. These uncertainty bounds provide “localized” gains for the SMC, thus reducing excess control activity while maintaining performance. Initially, the 2-Sigma networks are trained off-line using experimental data from a variety of operating conditions. In the final implementation, the 2-Sigma networks are updated on-line, allowing the SMC to respond to parameter variations and unmodeled dynamics. Experiments conducted on a CNC lathe demonstrate the exceptional performance and robustness of this control system.

Publisher

ASME International

Subject

Industrial and Manufacturing Engineering,Computer Science Applications,Mechanical Engineering,Control and Systems Engineering

Reference35 articles.

1. Manji, J. F. , 1990, “Does America Lead the World in Manufacturing?” Automation, 37, No. 8, August, pp. 44–45.

2. Editor, 1992, “National Technology Initiative: Towards Manufacturing Competitiveness,” Am. Ceram. Soc. Bull., 71, No. 7, July, pp. 1058–1061.

3. Shaw, M. C., 1984, Metal Cutting Principle, Oxford University Press.

4. Tomizuka, M., and Zhang, S., 1998, “Modeling and Conventional/Adaptive Pi Control of a Lathe Cutting Process,” Trans. ASME, 110, pp. 350–354

5. Boothroyd, G., 1989, Fundamentals of Machining and Machine Tools, Marcel Dekker.

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