Title of article :
Performance assessment and
robustness analysis using an
ARMarkov approach
Author/Authors :
M. Kamrunnahar، نويسنده , , D.G. Fisher and
B. Huang، نويسنده ,
Abstract :
Application of the ARMarkov model-based formulation offers significant advantages for assessment/monitoring and robustness
analysis of process systems. The ARMarkov method does not require a priori specification of the system time delay/interactor
matrix, needs only an approximate estimate of model order and can be done using open or closed-loop process data. By appropriate
use of standard, linear model estimation techniques, it directly produces statistically consistent estimates of the first few, userspecified
number of Markov parameters even in the presence of colored noise. It is shown in this paper that the Markov parameters
and the ARMarkov model can be used to calculate the interactor matrix and several process performance metrics including sensitivity/
complementary-sensitivity functions and time-domain criteria such as speed of response, minimum variance values etc. In
addition it is shown that model-based predictive control (MPC) systems formulated using ARMarkov models have a special state
space structure that leads to less conservative robustness bounds for specific types of uncertainties (such as gain mismatch,
uncertainty in the fast or slow dynamics, etc.) than applying the Small Gain Theorem directly to the conventional state space model
structure.
Keywords :
FCOR algorithm , closed-loop identification , performance assessment , Robustness bounds , ARMarkov MPC , ARMarkov identification
Journal title :
Astroparticle Physics