System identification methods for (operational) modal analysis: review and comparison
E Reynders - Archives of Computational Methods in Engineering, 2012 - Springer
Operational modal analysis deals with the estimation of modal parameters from vibration
data obtained in operational rather than laboratory conditions. This paper extensively …
data obtained in operational rather than laboratory conditions. This paper extensively …
Perspectives on process monitoring of industrial systems
Process monitoring systems are necessary for ensuring the long-term reliability of the
operation of industrial systems. This article provides some perspectives on progress in the …
operation of industrial systems. This article provides some perspectives on progress in the …
[KIRJA][B] Subspace methods for system identification
T Katayama - 2005 - Springer
Part I deals with the mathematical preliminaries: numerical linear algebra; system theory;
stochastic processes; and Kalman filtering. Part II explains realization theory as applied to …
stochastic processes; and Kalman filtering. Part II explains realization theory as applied to …
Identification of the deterministic part of MIMO state space models given in innovations form from input-output data
M Verhaegen - Automatica, 1994 - Elsevier
In this paper we describe two algorithms to identify a linear, time-invariant, finite dimensional
state space model from input-output data. The system to be identified is assumed to be …
state space model from input-output data. The system to be identified is assumed to be …
Subspace-based methods for the identification of linear time-invariant systems
M Viberg - Automatica, 1995 - Elsevier
Subspace-based methods for system identification have attracted much attention during the
past few years. This interest is due to the ability of providing accurate state-space models for …
past few years. This interest is due to the ability of providing accurate state-space models for …
Learning linear dynamical systems with semi-parametric least squares
We analyze a simple prefiltered variation of the least squares estimator for the problem of
estimation with biased,\emph {semi-parametric} noise, an error model studied more broadly …
estimation with biased,\emph {semi-parametric} noise, an error model studied more broadly …
Provable reinforcement learning with a short-term memory
Real-world sequential decision making problems commonly involve partial observability,
which requires the agent to maintain a memory of history in order to infer the latent states …
which requires the agent to maintain a memory of history in order to infer the latent states …
Identification of Hammerstein nonlinear ARMAX systems
F Ding, T Chen - Automatica, 2005 - Elsevier
Two identification algorithms, an iterative least-squares and a recursive least-squares, are
developed for Hammerstein nonlinear systems with memoryless nonlinear blocks and linear …
developed for Hammerstein nonlinear systems with memoryless nonlinear blocks and linear …
Performance analysis of multi-innovation gradient type identification methods
F Ding, T Chen - Automatica, 2007 - Elsevier
It is well-known that the stochastic gradient (SG) identification algorithm has poor
convergence rate. In order to improve the convergence rate, we extend the SG algorithm …
convergence rate. In order to improve the convergence rate, we extend the SG algorithm …
Hierarchical gradient-based identification of multivariable discrete-time systems
F Ding, T Chen - Automatica, 2005 - Elsevier
In this paper, we use a hierarchical identification principle to study identification problems for
multivariable discrete-time systems. We propose a hierarchical gradient iterative algorithm …
multivariable discrete-time systems. We propose a hierarchical gradient iterative algorithm …