Quantized Fault-Tolerant Control for Descriptor Systems with Intermittent Actuator Faults, Randomly Occurring Sensor Non-Linearity, and Missing Data
Abstract
:1. Introduction, Notations, and Outline
1.1. Bibliographical Review
1.2. Objective and Outline
2. Preliminaries and Problem Statements
2.1. The Model
2.2. Assumption
- A1
- is a singular matrix such that .
- A2
- Matrix is defined as , where matrices H and F are known and constant with appropriate dimensions, and matrix is an unknown matrix verifying .
- A3
- Due to actuator perturbation, we assume that there may exist an intermittent fault in the actuator, which is described asMatrix is defined as , where the degradation levels of the actuator, , are defined in with a probability matrix , . defines the transition probability such that , and for each i. A Markov chain that exhibits time-dependent transition probabilities is known as a non-homogeneous Markov chain. Transition matrix is assumed to have the following structure:Accordingly, the time-varying transition probability matrix evolves on a polytope defined by its vertices , as well as referring to the polytopic time-varying transition matrix.
- A4
- Sensor outputs are sent over an unreliable network, where random non-linearities may affect the sensors. Here, we assume that the sensor output is as follows:
- A5
- Additionally, this study attempts to develop a controller using the quantization of sensor output. Based on the logarithmic quantizer, the following model can be used to define sensor output:To define the logarithmic quantizer, we propose the following set of quantization levels:Specifically, the corresponding logarithmic quantizer is defined as follows:The quantization error of a logarithmic quantizer is , where . Then, we have
- A6
- The measured output suffers from both signal losses and quantization arriving to the controller, thus, the output is given by
3. Admissibility and Dissipativity Analysis
4. Dissipativity Controller Design
5. A Numerical Application
5.1. A Machine Infinite-Bus System
5.2. Results and Graphical Plots
5.3. Comparative Explanations
- Ref. [35] describes a discrete-time Markovian jump system with a quantized and resilient state feedback control law. As we considered a more general class of singular systems with partially measured states, our approach was more general. Additionally, random sensor non-linearity and missing data were taken into account.
- Although the reliable control problem for discrete-time descriptor systems, using a dynamic output feedback controller, had been explored in our previous work [41], the present investigation differed with the following points:
- The intermittent actuator failures were described by a non-homogeneous Markov process with time-varying transition probabilities. Moreover, the randomly occurring sensor non-linearity, suggested in this study, was more general and might include the saturation non-linearity.
- To handle a networked control system, the output quantization and missing data might be an effective scheme to reduce the storage space and transmission bandwidth [44].
- Between resilient controllers proposed in [35,44] and the reliable controller developed in this study, resilient controllers were employed to precisely handle gain fluctuations, whereas the reliable controller was used to compensate for failures of components in the system, especially actuators and sensors.
6. Conclusions and Future Work
6.1. Concluding Remarks
6.2. Limitations
6.3. Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Symbol | Acronym/Notation |
---|---|
ℕ | the set of positive integer numbers |
ℝ | the set of real numbers |
n-dimensional Euclidean space | |
real matrix | |
real symmetric positive definite matrix | |
norm of the matrix | |
transpose of the matrix | |
eigenvalue of a matrix | |
mathematical expectation | |
* | term that is induced by symmetry |
discrete-time Markov process | |
LMI | linear matrix inequalities |
MJS | Markovian jump system |
FTC | fault-tolerant control |
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Kchaou, M.; Jerbi, H.; Stefanoiu, D.; Popescu, D. Quantized Fault-Tolerant Control for Descriptor Systems with Intermittent Actuator Faults, Randomly Occurring Sensor Non-Linearity, and Missing Data. Mathematics 2022, 10, 1872. https://doi.org/10.3390/math10111872
Kchaou M, Jerbi H, Stefanoiu D, Popescu D. Quantized Fault-Tolerant Control for Descriptor Systems with Intermittent Actuator Faults, Randomly Occurring Sensor Non-Linearity, and Missing Data. Mathematics. 2022; 10(11):1872. https://doi.org/10.3390/math10111872
Chicago/Turabian StyleKchaou, Mourad, Houssem Jerbi, Dan Stefanoiu, and Dumitru Popescu. 2022. "Quantized Fault-Tolerant Control for Descriptor Systems with Intermittent Actuator Faults, Randomly Occurring Sensor Non-Linearity, and Missing Data" Mathematics 10, no. 11: 1872. https://doi.org/10.3390/math10111872
APA StyleKchaou, M., Jerbi, H., Stefanoiu, D., & Popescu, D. (2022). Quantized Fault-Tolerant Control for Descriptor Systems with Intermittent Actuator Faults, Randomly Occurring Sensor Non-Linearity, and Missing Data. Mathematics, 10(11), 1872. https://doi.org/10.3390/math10111872