A Review of Research in Manufacturing Prognostics

With the fast changing global business landscape, manufacturing companies are facing increasing challenge to reduce cost of production, increase equipment utilization and provide innovative products in order to compete with countries with low labour cost and production cost. On of the methods is zero down time. Unfortunately, the current research and industrial solution does not provide user friendly development environment to create "Adaptive microprocessor size with supercomputer performance" solution to reduce downtime. Most of the solutions are PC based computer with off the shelf research software tools which is inadequate for the space constraint manufacturing environment in developed countries. On the other hand, to develop solution for various manufacturing domain will take too much time, there is lacking tools available for rapid or adaptive way of create the solution. Therefore, this research is to understand the needs, trends, gaps of manufacturing prognostics and defines the research potential related to rapid embedded system framework for prognostic.

[1]  T. G. Edwards,et al.  Smart sensors and system health management tools for avionics and mechanical systems , 1997, 16th DASC. AIAA/IEEE Digital Avionics Systems Conference. Reflections to the Future. Proceedings.

[2]  J. C. Duke,et al.  Fiber optic sensors for predictive health monitoring , 2001, 2001 IEEE Autotestcon Proceedings. IEEE Systems Readiness Technology Conference. (Cat. No.01CH37237).

[3]  D. Wroblewski,et al.  A testbed for data fusion for engine diagnostics and prognostics , 2002, Proceedings, IEEE Aerospace Conference.

[4]  Krishna R. Pattipati,et al.  Reasoning and modeling systems in diagnosis and prognosis , 2001, SPIE Defense + Commercial Sensing.

[5]  Jay Lee,et al.  Smart products and service systems for e-business transformation , 2003, Int. J. Technol. Manag..

[6]  M. S. Lebold,et al.  Hybrid reasoning for prognostic learning in CBM systems , 2001, 2001 IEEE Aerospace Conference Proceedings (Cat. No.01TH8542).

[7]  Linilson Rodrigues Padovese,et al.  Rolling bearing fault diagnostic system using fuzzy logic , 2001, 10th IEEE International Conference on Fuzzy Systems. (Cat. No.01CH37297).

[8]  Robert J. Boncella Fuzzy Logic: An Introduction , 1995 .

[9]  Soon Heung Chang,et al.  Development of an on-line fuzzy expert system for integrated alarm processing in nuclear power plants , 1995 .

[10]  Stephen J. Engel,et al.  Prognostics, the real issues involved with predicting life remaining , 2000, 2000 IEEE Aerospace Conference. Proceedings (Cat. No.00TH8484).

[11]  M. Rao,et al.  Intelligent system for air-traffic control , 1990, Proceedings. 5th IEEE International Symposium on Intelligent Control 1990.

[12]  Kevin Kelly,et al.  Ai-based condition monitoring of the drilling process , 2002 .

[13]  Amit G. Mathur Data mining of aviation data for advancing health management , 2002, SPIE Defense + Commercial Sensing.

[14]  Anthony Zaknich,et al.  Neural Networks for Intelligent Signal Processing , 2003, Series on Innovative Intelligence.

[15]  Nagi Gebraeel,et al.  Residual life predictions from vibration-based degradation signals: a neural network approach , 2004, IEEE Transactions on Industrial Electronics.

[16]  Martin Hellmann,et al.  Fuzzy Logic Introduction by , 2005 .

[17]  G. S. Dangayach,et al.  Manufacturing strategy: Literature review and some issues , 2001 .

[18]  L. Nasser,et al.  Integration of material-based simulation into prognosis architectures , 2004, 2004 IEEE Aerospace Conference Proceedings (IEEE Cat. No.04TH8720).

[19]  Alice E. Smith,et al.  A Neural Network Approach to Condition Based Maintenance : Case Study of Airport Ground Transportation Vehicles , 2003 .

[20]  Krishna R. Pattipati,et al.  An interacting multiple model approach to model-based prognostics , 2003, SMC'03 Conference Proceedings. 2003 IEEE International Conference on Systems, Man and Cybernetics. Conference Theme - System Security and Assurance (Cat. No.03CH37483).

[21]  Raghunathan Rengaswamy,et al.  A review of process fault detection and diagnosis: Part II: Qualitative models and search strategies , 2003, Comput. Chem. Eng..

[22]  Srinivas Katipamula,et al.  Review Article: Methods for Fault Detection, Diagnostics, and Prognostics for Building Systems—A Review, Part I , 2005 .

[23]  Gregory Provan An open systems architecture for prognostic inference during condition-based monitoring , 2003, 2003 IEEE Aerospace Conference Proceedings (Cat. No.03TH8652).

[24]  Raghunathan Rengaswamy,et al.  A review of process fault detection and diagnosis: Part I: Quantitative model-based methods , 2003, Comput. Chem. Eng..