Title of article :
Projection based MIMO control
performance monitoring:
I>covariance monitoring in
state space
Author/Authors :
C.A. McNabb and S.J. Qin، نويسنده ,
Abstract :
In this paper we propose a new control performance monitoring method based on subspace projections. We begin with a state
space model of a generally non-square process and derive the minimum variance control (MVC) law and minimum achievable
variance in a state feedback form. We derive a multivariate time delay (MTD) matrix for use with our extended state space formulation,
which implicitly is equivalent to the interactor matrix. We show how the minimum variance output space can be considered
an optimal subspace of the general closed-loop output space and propose a simple control performance calculation which
uses orthogonal projection of filtered output data onto past closed-loop data. Finally, we propose a control performance monitoring
technique based on the output covariance and diagnose the cause of suboptimal control performance using generalized
eigenvector analysis. The proposed methods are demonstrated on a few simulated examples and an industrial wood waste burning
power boiler.
Keywords :
Covariance monitoring , Control performance monitoring , Principal component analysis , Minimum variance
Journal title :
Astroparticle Physics