Abstract
Motivated by the sliding mode control approach, a stochastic controller design methodology is developed for discrete-time, vector-state linear systems with additive Cauchy-distributed noises, scalar control inputs, and scalar measurements. The control law exploits the recently derived characteristic function of the conditional probability density function of the system state given the measurements. This result is used to derive the characteristic function of the conditional probability density function of the sliding variable, utilized in the design of the stochastic controller. The incentive for the proposed approach is mainly the high numerical complexity of the currently available method for such systems, that is based on the optimal predictive control paradigm. The performance of the proposed controller is evaluated numerically and compared to the alternative Cauchy controller and a controller based on the Gaussian assumption. A fundamental difference between controllers based on the Cauchy and Gaussian assumptions is the superior response of Cauchy controllers to noise outliers. The newly proposed Cauchy controller exhibits similar performance to the optimal predictive controller, while requiring significantly lower computational effort.
Original language | English |
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Pages (from-to) | 393-414 |
Number of pages | 22 |
Journal | Journal of Optimization Theory and Applications |
Volume | 191 |
Issue number | 2-3 |
DOIs | |
State | Published - Dec 2021 |
Keywords
- Heavy tailed distributions
- Optimal controller synthesis for systems with uncertainties
- Stochastic control
All Science Journal Classification (ASJC) codes
- Control and Optimization
- Applied Mathematics
- Management Science and Operations Research