Mode Estimation of Probabilistic Hybrid Systems

Model-based diagnosis and mode estimation capabilities excel at diagnosing systems whose symptoms are clearly distinguished from normal behavior. A strength of mode estimation, in particular, is its ability to track a system's discrete dynamics as it moves between different behavioral modes. However, often failures bury their symptoms amongst the signal noise, until their effects become catastrophic.We introduce a hybrid mode estimation system that extracts mode estimates from subtle symptoms. First, we introduce a modeling formalism, called concurrent probabilistic hybrid automata (cPHA), that merge hidden Markov models (HMM) with continuous dynamical system models. Second, we introduce hybrid estimation as a method for tracking and diagnosing cPHA, by unifying traditional continuous state observers with HMM belief update. Finally, we introduce a novel, any-time, any-space algorithm for computing approximate hybrid estimates.

[1]  Arthur Gelb,et al.  Applied Optimal Estimation , 1974 .

[2]  Brian C. Williams,et al.  Diagnosis with Behavioral Modes , 1989, IJCAI.

[3]  Peter S. Maybeck,et al.  Reconfigurable flight control via multiple model adaptive control methods , 1991 .

[4]  Yaakov Bar-Shalom,et al.  Estimation and Tracking: Principles, Techniques, and Software , 1993 .

[5]  Robert F. Stengel,et al.  Optimal Control and Estimation , 1994 .

[6]  Michael S. Branicky,et al.  General Hybrid Dynamical Systems: Modeling, Analysis, and Control , 1996, Hybrid Systems.

[7]  Petros G. Voulgaris,et al.  On optimal ℓ∞ to ℓ∞ filtering , 1995, Autom..

[8]  Michael S. Branicky,et al.  Studies in hybrid systems: modeling, analysis, and control , 1996 .

[9]  P. Pandurang Nayak,et al.  A Model-Based Approach to Reactive Self-Configuring Systems , 1996, AAAI/IAAI, Vol. 2.

[10]  Thomas A. Henzinger,et al.  The theory of hybrid automata , 1996, Proceedings 11th Annual IEEE Symposium on Logic in Computer Science.

[11]  Y. Bar-Shalom,et al.  Multiple-model estimation with variable structure , 1996, IEEE Trans. Autom. Control..

[12]  Brian C. Williams,et al.  Decompositional, Model-based Learning and its Analogy to Diagnosis , 1998, AAAI/IAAI.

[13]  Thomas A. Henzinger,et al.  Hybrid Systems: Computation and Control , 1998, Lecture Notes in Computer Science.

[14]  Sheila A. McIlraith,et al.  Towards Diagnosing Hybrid Systems , 1999 .

[15]  Bernhard Rinner,et al.  Monitoring Piecewise Continuous Behaviors by Refining Semi-Quantative Trackers , 1999, IJCAI.

[16]  S. Sastry,et al.  Towars a Theory of Stochastic Hybrid Systems , 2000, HSCC.

[17]  Peter S. Maybeck,et al.  Multiple-model adaptive estimation using a residual correlation Kalman filter bank , 2000, IEEE Trans. Aerosp. Electron. Syst..

[18]  S. Narasimhan,et al.  Efficient diagnosis of hybrid systems using models of the supervisory controller , 2000 .

[19]  John Lygeros,et al.  Towars a Theory of Stochastic Hybrid Systems , 2000, HSCC.

[20]  P. Pandurang Nayak,et al.  Back to the Future for Consistency-Based Trajectory Tracking , 2000, AAAI/IAAI.

[21]  Gautam Biswas,et al.  Bayesian Fault Detection and Diagnosis in Dynamic Systems , 2000, AAAI/IAAI.

[22]  Feng Zhao,et al.  Distributed Monitoring of Hybrid Systems: A model-directed approach , 2001, IJCAI.

[23]  Nancy A. Lynch,et al.  Hybrid I/O Automata Revisited , 2001, HSCC.

[24]  Nancy A. Lynch,et al.  Hybrid Systems: Computation and Control , 2002, Lecture Notes in Computer Science.

[25]  Christian P. Robert,et al.  Monte Carlo Statistical Methods , 2005, Springer Texts in Statistics.