This tutorial investigates the problem of the occurrence of multiple faults in the sensors used to monitor and control a network of cyberphysical systems. The goal is to formulate a general methodology, which will be used for designing sensor fault diagnosis schemes with emphasis on the isolation of multiple sensor faults, and for analyzing the performance of these schemes with respect to the design parameters and system characteristics. The backbone of the proposed methodology is the design of several monitoring and aggregation cyber agents (modules) with specific properties and tasks. The monitoring agents check the healthy operation of sets of sensors and infer the occurrence of faults in these sensor sets based on structured robustness and sensitivity properties. These properties are obtained by deriving analytical redundancy relations of observer-based residuals sensitive to specific subsets of sensor faults, and adaptive thresholds that bound the residuals under healthy conditions, assuming bounded modeling uncertainty and measurement noise. The aggregation agents are employed to collect and process the decisions of the agents, while they apply diagnostic reasoning to isolate combinations of sensor faults that have possibly occurred. The design and performance analysis methodology is presented in the context of three different architectures: for cyber-physical systems that consist of a set of interconnected systems, a distributed architecture and a decentralized architecture, and for cyber-physical systems that are treated as monolithic, a centralized architecture. For all three architectures, the decomposition of the sensor set into subsets of sensors plays a key role in their ability to isolate multiple sensor faults. A discussion of the challenges and benefits of the three architectures is provided, based on the system scale, the type of system nonlinearities, the number of sensors and the communication needs. Lastly, this tutorial concludes with a discussion of open problems in fault diagnosis.
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21 July 2016
Research Article|
July 21 2016
Sensor Fault Diagnosis Available to Purchase
Vasso Reppa;
Vasso Reppa
Laboratory of Signals and Systems (L2S, UMR CNRS 8506) CentraleSupélec-CNRS-University Paris-Sud University Paris-Saclay
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Marios M. Polycarpou;
Marios M. Polycarpou
KIOS Research Center for Intelligent Systems and Networks Electrical & Computer Engineering Department University of Cyprus
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Christos G. Panayiotou
Christos G. Panayiotou
KIOS Research Center for Intelligent Systems and Networks Electrical & Computer Engineering Department University of Cyprus
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Online ISSN: 2325-6826
Print ISSN: 2325-6818
© 2016 V. Reppa, M. M. Polycarpou and C. G. Panayiotou
2016
V. Reppa, M. M. Polycarpou and C. G. Panayiotou
Licensed re-use rights only
Foundations and Trends in Systems and Control (2016) 3 (1-2): 1–248.
Citation
Reppa V, Polycarpou MM, Panayiotou CG (2016), "Sensor Fault Diagnosis". Foundations and Trends in Systems and Control, Vol. 3 No. 1-2 pp. 1–248, doi: https://doi.org/10.1561/2600000007
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