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Published July 2016 | public
Book Section - Chapter

On identification of parameterized switched linear systems

Abstract

Motivated by applications in fault/attack detection of engineering systems, we formulate in this paper a parameterized switched linear systems identification problem. First, we show that the identifiability of parameterized switched linear systems is equivalent to the global identifiability of a parameterized linear time-invariant system. We propose a new necessary and sufficient condition to check the identifiability of a parameterized linear time-invariant system. Second, using the prior knowledge that the difference between the nominal system and the perturbed system is small (with only a small number of parameters that have been changed), we formulate the fault localization problem as a sparse linear regression problem. We investigate the performance of the proposed algorithm when there is a finite number of samples, and propose a necessary and sufficient condition to determine the number of samples required to achieve a "close-to-true" solution. Potential applications of this work can be: a) development of a sensor placement strategy as well as a real-time monitoring algorithm for the early detection of faults (e.g., material aging, line tripping) or attacks in power grids; b) understanding the functionality of genes, proteins and metabolites in disease dynamics, which could potentially lead to early disease detection and drug design.

Additional Information

© 2016 IEEE. This work is supported in part by NSF under CPS:ActionWebs (CNS-0931843) and CPS:FORCES (CNS-1239166), by NASA under grants NNX12AR18A and UCSCMCA-14-022 (UARC), by ONR under grants N00014-12-1-0609, N000141310341 (Embedded Humans MURI), and MIT_5710002646 (SMARTS MURI), and by AFOSR under grants UPenn-FA9550-10-1-0567 (CHASE MURI) and the SURE project. We acknowledge Dr. Jorge Gonçalves, Dr. Yilin Mo, Dr. Keith Glover, Dr. Lennart Ljung, Dr. John C. Doyle, and Mr. Roel Dobbe with their great supports.

Additional details

Created:
August 20, 2023
Modified:
October 20, 2023