Qualitative Fault Isolation of Hybrid Systems: A Structural Model Decomposition-Based Approach

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Published Jul 5, 2016
Anibal Bregon Matthew Daigle Indranil Roychoudhury

Abstract

Quick and robust fault diagnosis is critical to ensuring safe operation of complex engineering systems. A large number of techniques are available to provide fault diagnosis in systems with continuous dynamics. However, many systems in aerospace and industrial environments are best represented as hybrid systems that consist of discrete behavioral modes, each with its own continuous dynamics. These hybrid dynamics make the on-line fault diagnosis task computationally more complex due to the large number of possible system modes and the existence of autonomous mode transitions This paper presents a qualitative fault isolation framework for hybrid systems based on structural model decomposition. The fault isolation is performed by  analyzing the qualitative information of the residual deviations. However, in hybrid systems this process becomes complex due to possible existence of observation delays, which can cause observed deviations to be inconsistent with the expected deviations for the current mode in the system. The great advantage of structural model decomposition is that (i) it allows to design residuals that respond to only a subset of the faults, and (ii) every time a mode change occurs, only a subset of the residuals will need to be reconfigured, thus reducing the complexity of the reasoning process for isolation purposes. To demonstrate and test the validity of our approach, we use an electric circuit simulation as the case study.

How to Cite

Bregon, A., Daigle, M., & Roychoudhury, I. (2016). Qualitative Fault Isolation of Hybrid Systems: A Structural Model Decomposition-Based Approach. PHM Society European Conference, 3(1). https://doi.org/10.36001/phme.2016.v3i1.1575
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References
Alonso, N. M., Bregon, A., Alonso-González, C. J.,&Pulido, B. (2013). A common framework for fault diagnosis of parametric and discrete faults using possible conflicts. In Advances in artificial intelligence (pp. 239–249). Springer.
Bayoudh, M., Travé-Massuy`es, L., & Olive, X. (2008). Coupling continuous and discrete event system techniques for hybrid system diagnosability analysis. In 18th european conf. on artificial intel. (pp. 219–223).
Bayoudh, M., Travé-Massuy`es, L., & Olive, X. (2009). Diagnosis of a Class of Non Linear Hybrid Systems by On-line Instantiation of Parameterized Analytical Redundancy Relations. In 20th international workshop on principles of diagnosis (p. 283-289).
Benazera, E., & Travé-Massuy`es, L. (2009, October). Settheoretic estimation of hybrid system configurations. Trans. Sys. Man Cyber. Part B, 39, 1277–1291. doi: 10.1109/TSMCB.2009.2015280
Bregon, A., Daigle, M., Roychoudhury, I., Biswas, G., Koutsoukos, X., & Pulido, B. (2014, May). An event-based distributed diagnosis framework using structural model decomposition. Artificial Intelligence, 210, 1-35.
Bregon, A., Narasimhan, S., Roychoudhury, I., Daigle, M., & Pulido, B. (2013, October). An efficient model-based diagnosis engine for hybrid systems using structural model decomposition. In Proceedings of the annual conference of the prognostics and health management society, 2013.
Cocquempot, V., El Mezyani, T., & Staroswiecki, M. (2004, July). Fault detection and isolation for hybrid systems using structured parity residuals. In 5th asian control conference (Vol. 2, p. 1204-1212). doi: 10.1109/ASCC.2004.185027
Daigle, M. (2008). A qualitative event-based approach to fault diagnosis of hybrid systems (Unpublished doctoral dissertation). Vanderbilt University.
Daigle, M., Bregon, A., & Roychoudhury, I. (2015, September). A Structural Model Decomposition Framework for Hybrid Systems Diagnosis. In Proceedings of the 26nd international workshop on principles of diagnosis. Paris, France.
Daigle, M., Koutsoukos, X., & Biswas, G. (2009, July). A qualitative event-based approach to continuous systems diagnosis. IEEE Transactions on Control Systems Technology, 17(4), 780–793.
Daigle, M., Roychoudhury, I., Biswas, G., Koutsoukos, X., Patterson-Hine, A., & Poll, S. (2010, September). A comprehensive diagnosis methodology for complex hybrid systems: A case study on spacecraft power distribution systems. IEEE Transactions of Systems, Man, and Cybernetics, Part A, 4(5), 917–931.
Daigle, M., Roychoudhury, I., & Bregon, A. (2014, September). Qualitative event-based fault isolation under uncertain observations. In Annual conference of the prognostics and health management society 2014 (p. 347-355).
Daigle, M., Roychoudhury, I., & Bregon, A. (2015). Qualitative event-based diagnosis applied to a spacecraft electrical power distribution system. Control Engineering Practice, 38, 75 - 91. doi:
http://dx.doi.org/10.1016/j.conengprac.2015.01.007
Gaudel, Q., Chanthery, E.,&Ribot, P. (2015). Hybrid particle petri nets for systems health monitoring under uncertainty. International Journal of Prognostics and Health Management., 6.
Henzinger, T. A. (2000). The theory of hybrid automata. Springer.
Hofbaur, M., & Williams, B. (2004). Hybrid estimation of complex systems. IEEE Trans. on Sys., Man, and Cyber, Part B: Cyber., 34(5), 2178-2191. doi: 10.1109/TSMCB.2004.835009
Koutsoukos, X., Kurien, J., & Zhao, F. (2003). Estimation of distributed hybrid systems using particle filtering methods. In In hybrid systems: Computation and control (hscc 2003). springer verlag lecture notes on computer science (pp. 298–313). Springer.
Mosterman, P., & Biswas, G. (2000). A comprehensive methodology for building hybrid models of physical systems. Artificial Intel., 121(1-2), 171 - 209. doi: DOI: 10.1016/S0004-3702(00)00032-1
Mosterman, P. J., & Biswas, G. (1999). Diagnosis of continuous valued systems in transient operating regions. IEEE Transactions on Systems, Man, and Cybernetics, Part A: Systems and Humans, 29(6), 554-565.
Narasimhan, S., & Biswas, G. (2007, May). Model-Based Diagnosis of Hybrid Systems. IEEE Trans. Syst. Man. Cy. Part A, 37(3), 348-361.
Narasimhan, S., & Brownston, L. (2007, May). HyDE: A General Framework for Stochastic and Hybrid Modelbased Diagnosis. In Proc. of the 18th int. ws. on principles of diagnosis (p. 186-193).
Reiter, R. (1987). A Theory of Diagnosis from First Principles. Artificial Intelligence, 32, 57-95. Rienm¨uller, T., Bayoudh, M., Hofbaur, M., & Travé-Massuy`es, L. (2009). Hybrid Estimation through Synergic Mode-Set Focusing. In 7th ifac symposium on fault detection, supervision and safety of technical processes (p. 1480-1485). Barcelona, Spain.
Roychoudhury, I., Daigle, M., Bregon, A., & Pulido, B. (2013, March). A structural model decomposition framework for systems health management. In Proceedings of the 2013 IEEE aerospace conference.
Trave-Massuyes, L., & Pons, R. (1997). Causal ordering for multiple mode systems. In Proceedings of the eleventh international workshop on qualitative reasoning (pp. 203–214).
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Technical Papers