Tool wear monitoring and prognostics challenges: a comparison of connectionist methods toward an adaptive ensemble model
Kamran Javed (),
Rafael Gouriveau,
Xiang Li and
Noureddine Zerhouni
Additional contact information
Kamran Javed: FEMTO-ST Institute (AS2M Department), UMR CNRS 6174, UBFC/ UFC/ ENSMM / UTBM
Rafael Gouriveau: FEMTO-ST Institute (AS2M Department), UMR CNRS 6174, UBFC/ UFC/ ENSMM / UTBM
Xiang Li: Singapore Institute of Manufacturing Technology
Noureddine Zerhouni: FEMTO-ST Institute (AS2M Department), UMR CNRS 6174, UBFC/ UFC/ ENSMM / UTBM
Journal of Intelligent Manufacturing, 2018, vol. 29, issue 8, No 12, 1873-1890
Abstract:
Abstract In a high speed milling operation the cutting tool acts as a backbone of machining process, which requires timely replacement to avoid loss of costly workpiece or machine downtime. To this aim, prognostics is applied for predicting tool wear and estimating its life span to replace the cutting tool before failure. However, the life span of cutting tools varies between minutes or hours, therefore time is critical for tool condition monitoring. Moreover, complex nature of manufacturing process requires models that can accurately predict tool degradation and provide confidence for decisions. In this context, a data-driven connectionist approach is proposed for tool condition monitoring application. In brief, an ensemble of Summation Wavelet-Extreme Learning Machine models is proposed with incremental learning scheme. The proposed approach is validated on cutting force measurements data from Computer Numerical Control machine. Results clearly show the significance of our proposition.
Keywords: Applicability; Data-driven; Ensemble; Monitoring; Prognostics; Robustness; Reliability (search for similar items in EconPapers)
Date: 2018
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Citations: View citations in EconPapers (4)
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DOI: 10.1007/s10845-016-1221-2
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