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Intelligent process supervision for predicting tool wear in machining processes

An intelligent supervisory system supported on a model-based approach is presented herein. The application for predicting tool wear in machining processes is selected as a case study. A model created using artificial neural networks and able to predict the process output is introduced as a means of...

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Bibliographic Details
Published in:Mechatronics (Oxford) 2003-10, Vol.13 (8), p.825-849
Main Authors: Haber, Rodolfo E, Alique, A
Format: Article
Language:English
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Summary:An intelligent supervisory system supported on a model-based approach is presented herein. The application for predicting tool wear in machining processes is selected as a case study. A model created using artificial neural networks and able to predict the process output is introduced as a means of dealing with the characteristics of such an ill-defined process as machining. This model describes the output’s dynamic response to changes in the process-input command (feed rate) and process parameters (depth of cut). In order to predict tool wear, residual errors are used as the basis for a decision-making algorithm. Based on the model and the weighted sum of squared residuals method, the procedure continuously checks whether a given index (tool condition) exceeds a critical threshold. In the chosen application, an over-the-threshold index is interpreted as indicating unacceptable tool wear necessitating immediate tool replacement. Experimental tests are run in a professional machining centre under different cutting conditions using real-time data and new, half-worn and worn tools. The results show this supervisory system’s suitability and potential for industrial applications.
ISSN:0957-4158
1873-4006
DOI:10.1016/S0957-4158(03)00005-9