Research output: Contribution to journal › Article › peer-review
Randomized Control Strategies Under Arbitrary External Noise. / Amelin, Konstantin; Granichin, Oleg.
In: IEEE Transactions on Automatic Control, Vol. 61, No. 5, 05.2016, p. 1328-1333.Research output: Contribution to journal › Article › peer-review
}
TY - JOUR
T1 - Randomized Control Strategies Under Arbitrary External Noise
AU - Amelin, Konstantin
AU - Granichin, Oleg
PY - 2016/5
Y1 - 2016/5
N2 - This technical note deals with the identification problem for a linear dynamic plant described by an autoregressive moving average model with additive external noise (exogenous disturbance). We use an approach which is based on randomization of control and allows to make minimal assumptions about the noise: randomized test perturbations in control and the external noise must be stochastically independent. In particular, any unknown but bounded deterministic real sequence is an example of such a noise. In the case of a finite set of observations, we propose two procedures for computing data-based confidence regions for unknown parameters of the plant. They could be used in adaptive control schemes. The first procedure is of the stochastic approximation type, while the second one is developed in the general framework of "counting of leave-out sign-dominant correlation regions" (LSCR), which returns confidence regions that are guaranteed to contain the true parameters with a prescribed probability. If the number of observations increases infinitely, we propose the combined procedure for computing confidence regions which shrink to the true parameters asymptotically. The theoretical results are illustrated via a simulation example with a nonminimum-phase second-order plant.
AB - This technical note deals with the identification problem for a linear dynamic plant described by an autoregressive moving average model with additive external noise (exogenous disturbance). We use an approach which is based on randomization of control and allows to make minimal assumptions about the noise: randomized test perturbations in control and the external noise must be stochastically independent. In particular, any unknown but bounded deterministic real sequence is an example of such a noise. In the case of a finite set of observations, we propose two procedures for computing data-based confidence regions for unknown parameters of the plant. They could be used in adaptive control schemes. The first procedure is of the stochastic approximation type, while the second one is developed in the general framework of "counting of leave-out sign-dominant correlation regions" (LSCR), which returns confidence regions that are guaranteed to contain the true parameters with a prescribed probability. If the number of observations increases infinitely, we propose the combined procedure for computing confidence regions which shrink to the true parameters asymptotically. The theoretical results are illustrated via a simulation example with a nonminimum-phase second-order plant.
KW - Adaptive control
KW - external arbitrary noise
KW - identification
KW - leave-out sign-dominant correlation region (LSCR) method
KW - randomized control
KW - stochastic approximation
KW - PARAMETERS
KW - DISTURBANCE
U2 - 10.1109/TAC.2015.2463612
DO - 10.1109/TAC.2015.2463612
M3 - статья
VL - 61
SP - 1328
EP - 1333
JO - IEEE Transactions on Automatic Control
JF - IEEE Transactions on Automatic Control
SN - 0018-9286
IS - 5
ER -
ID: 5802123