Skip to main content

Advertisement

Log in

A Hybrid Approach to Nonconformance Tracking and Recovery

  • Published:
Journal of Intelligent Manufacturing Aims and scope Submit manuscript

Abstract

The nonconformance diagnosis problem has been a major issue facing industry and academia over the years. Research has been carried out on technologies for different aspects of nonconformance diagnosis such as nonconformance monitoring, prediction, prevention, classification, tracking, and recovery. Despite these advances, nonconformance tracking and recovery still receive many concerns due to the fact that they are knowledge intensive and experience-based tasks, which in complex manufacturing environments can sometimes be beyond the capabilities of skilled operators and engineers. In addition, the existing systems for nonconformance tracking and recovery are usually special purpose systems. They lack the capabilities to migrate to new working domains. This paper proposes a generic intelligent nonconformance tracking and recovery (GINTR) system. In conjunction with computational intelligent techniques such as Artificial Neural Networks (ANN) and Genetic Algorithm (GA), the system identifies the root causes of a nonconformance and provides timely corrective actions. The drive towards designing such a system is motivated by the need to implement a generic base of system capabilities that is reliable, economical, scalable, and provides a stable foundation for migrating the system to different domains.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  • C. Angeli D. Atherton (2001) ArticleTitleA model-based method for an online diagnostic knowledge-based system Expert Systems. 18 IssueID3 150–158 Occurrence Handle10.1111/1468-0394.00167

    Article  Google Scholar 

  • C. Angeli A. Chatzinikolaou (1999) ArticleTitleFault prediction and compensation functions in a diagnostic knowledge-based system for hydraulic systems Journal of Intelligent and Robotic Systems. 25 IssueID2 153–165 Occurrence Handle10.1023/A:1008077902102

    Article  Google Scholar 

  • S.H. Cheraghi X. Chen J.M. Twomey A. Ravishankar (1999) ArticleTitleA Closed-loop process analysis and control system for machining parts International Journal of Production Research. 37 IssueID6 1353–1368 Occurrence Handle10.1080/002075499191292

    Article  Google Scholar 

  • P.H. Dastoor P. Radhakrishnaiah K. Srinivasan S. Jayaraman (1994) ArticleTitleSDAS: a knowledge-based framework for analyzing defects in apparel manufacturing Journal of the Textile Institute. 85 IssueID4 542–560

    Google Scholar 

  • Dvir G., Langholz G., Schneider M. (1999). Fuzzy Information Matching attributes in a fuzzy case based reasoning, NAFIPS. 18th International Conference of the North American, 33–36.

  • M. Gen R. Cheng (1997) Genetic Algorithms and Engineering Design Wiley J New York

    Google Scholar 

  • G.K. Griffith (1996) The Quality Technician’s Handbook Premtice-Hall Inc. New Jersey

    Google Scholar 

  • G. E. Hayes (1974) Quality Assurance: Management and Technology (revised ed) Charger Productions Califoria 276–281

    Google Scholar 

  • A.A. Hopgood (2001) Intelligent Systems for Engineers and Scientists CRC Press LLC, Boca Raton Florida

    Google Scholar 

  • B.C. Jeng T.P. Liang (1995) ArticleTitleFuzzy indexing and retrieval in case-based system Expert System with Application 8 IssueID1 135–142

    Google Scholar 

  • L.P. Khoo C.L. Ang J. Zhang (2000) ArticleTitleFuzzy-based genetic approach to the diagnosis of manufacturing systems Engineering Applications of Artificial Intelligence. 13 IssueID3 303–310 Occurrence Handle10.1016/S0952-1976(00)00003-8

    Article  Google Scholar 

  • W. Liu S.H. Cheraghi (2004) ArticleTitleA generic distributed architecture for nonconformance diagnosing system International Journal of Computer Integrated Manufacturing 17 IssueID5 467–477 Occurrence Handle10.1080/09511920410001664353

    Article  Google Scholar 

  • W. Liu S.H. Cheraghi (2002) Intelligent Orthogonal Defect Classification (ODC) towards manufacturing nonconformance tracking and diagnostic recovery. Proceedings of IERC conference May 19–21, (2002) Orlando Florida

    Google Scholar 

  • W. Liu R. Fei (1996) ArticleTitleResearch on the application of modified BP neural networks model in intelligent machining Journal of Beijing Polytechnic University. 22 IssueID2 61–67

    Google Scholar 

  • J. Main T. Dillon S. Shiu (2001) A Tutorial on Case-Based Reasoning: Soft Computing in Case Based Reasoning Springer-Verlag London 1–28

    Google Scholar 

  • J.R.P. Mendes I.R. Guilherme C.K. Morooka (2001) ArticleTitleCase-based system: indexing and retrieval with fuzzy hypercube IFSA World Congress and 20th NAFIPS International Conference 2 818–823

    Google Scholar 

  • Pal S.K., Dillon T.S., Yeung D.S. (2001), Soft Computing in Case Based Reasoning, Springer Verlag, pp. 259–273.

  • R.J. Patton J. Chen H. Benkhedda (2000) ArticleTitleA study on neuro-fuzzy systems for fault diagnosis International Journal of Systems Science 31 IssueID11 1441–1448

    Google Scholar 

  • P. Roth (1994) ArticleTitleMissing data: a conceptual review for applied psychologists Personnel Psychology. 47 IssueID3 537–560

    Google Scholar 

  • L.L. Smith (1987) ArticleTitleWhy fore human factors? Human Factors Society Bulletin. 30 IssueID2 6–7

    Google Scholar 

  • K. Srinivasan P.H. Dastoor S. Jayaraman (1992) ArticleTitleFDAS: Architecture and implementation Expert Systems. 9 IssueID3 115–124

    Google Scholar 

  • D.A. Stewart S.H. Cheraghi D.E. Malzahn (2004) ArticleTitleFuzzy defect avoidance system (FDAS) for product defect control International Journal of Production Research. 42 IssueID16 3159–3182 Occurrence Handle10.1080/00207540410001696032

    Article  Google Scholar 

  • Stewart, D. A., Malzahn, D. E. and Cheraghi, S. H. (1999) Continuous quality improvement using fuzzy Bayesian inferencing. Proceedings of the 3rd International Engineering Design and Automation Conference, pp. 885–892, Prospect, KY: Integrated Technology Systems.

  • A. Varma N. Roddy (1999) ArticleTitleICARUS: Design and deployment of a case-based reasoning system for locomotive diagnostics Engineering Applications of Artificial Intelligence. 12 IssueID6 681–690 Occurrence Handle10.1016/S0952-1976(99)00039-1

    Article  Google Scholar 

  • K. Wang (2001) ArticleTitleUsing B-spline neural network to extract fuzzy rules for a centrifugal pump monitoring Journal of Intelligent Manufacturing. 12 IssueID1 5–11 Occurrence Handle10.1023/A:1008959628154

    Article  Google Scholar 

  • Wang. L, Balasubramanian S., Norrie D.H., Brennan and R.W. (1998). Agent-based control system for next generation manufacturing. Proceedings of the 1998 IEEE International Symposium on Intelligent Control, Gaithersburg, MD, USA pp. 78–83.

  • P.D. Wasserman (1993) Advanced Methods in Neural Computing Van Nostrand Reinhold New York, NY

    Google Scholar 

  • Z. Zhang T.W. Liao C.R. Mount (1997) ArticleTitleApplying case-based reasoning and genetic algorithms to failure mechanism identification Intelligent Engineering Systems Through Artificial Neural Networks. 7 415–420

    Google Scholar 

Download references

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to S. Hossein Cheraghi.

Rights and permissions

Reprints and permissions

About this article

Cite this article

Liu, W., Cheraghi, S.H. A Hybrid Approach to Nonconformance Tracking and Recovery. J Intell Manuf 17, 149–162 (2006). https://doi.org/10.1007/s10845-005-5518-9

Download citation

  • Issue Date:

  • DOI: https://doi.org/10.1007/s10845-005-5518-9

Keywords

Navigation