Nuclear norm based subspace identification methods have recently gained importance due to their ability to find low rank solutions while maintaining accuracy through convex optimization. However, their heavy computational burden typically precludes the use in an online, recursive manner, such as may be required for adaptive control. This paper deals with the formulation of a recursive version of a nuclear norm based subspace identification method with an emphasis on reducing the computational complexity. The developed methodology is analyzed through simulations on Linear Time-Varying (LTV) systems particularly in terms of convergence rate, tracking speed and the accuracy of identification and it is shown to be computationally lighter and ef...
Abstract — This paper presents a novel algorithm for efficiently minimizing the nuclear norm of a ma...
The convergence properties of recently developed recursive subspace identification methods are inves...
Abstract: The problem of the recursive identification of MIMO state space models in the framework of...
The main contribution of this thesis is the development of an inherently adaptive controller which r...
New system identification methods are developing constantly to come up with solutions that can take ...
The nuclear norm is an effective proxy for matrix rank in a range of minimization problems, includin...
Abstract: Subspace identification is revisited in the scope of nuclear norm minimization methods. It...
We compare two iterative frequency domain subspace identification methods using nuclear norm minimiz...
Subspace model identification (SMI) method is the effective method in identifying dynamic state spac...
Abstract: Subspace identification is a classical and very well studied problem in system identificat...
The identification of multivariable state space models in innovation form is solved in a subspace id...
Abstract: Subspace identification is a classical and very well studied problem in system identificat...
A novel method combining the nuclear norm minimization (NNM) and continuous-time (CT) subspace ident...
Subspace identification is a classical and very well studied problem in system identification. The p...
This paper studies the local subspace identification of 1D homogeneous networked systems. The main c...
Abstract — This paper presents a novel algorithm for efficiently minimizing the nuclear norm of a ma...
The convergence properties of recently developed recursive subspace identification methods are inves...
Abstract: The problem of the recursive identification of MIMO state space models in the framework of...
The main contribution of this thesis is the development of an inherently adaptive controller which r...
New system identification methods are developing constantly to come up with solutions that can take ...
The nuclear norm is an effective proxy for matrix rank in a range of minimization problems, includin...
Abstract: Subspace identification is revisited in the scope of nuclear norm minimization methods. It...
We compare two iterative frequency domain subspace identification methods using nuclear norm minimiz...
Subspace model identification (SMI) method is the effective method in identifying dynamic state spac...
Abstract: Subspace identification is a classical and very well studied problem in system identificat...
The identification of multivariable state space models in innovation form is solved in a subspace id...
Abstract: Subspace identification is a classical and very well studied problem in system identificat...
A novel method combining the nuclear norm minimization (NNM) and continuous-time (CT) subspace ident...
Subspace identification is a classical and very well studied problem in system identification. The p...
This paper studies the local subspace identification of 1D homogeneous networked systems. The main c...
Abstract — This paper presents a novel algorithm for efficiently minimizing the nuclear norm of a ma...
The convergence properties of recently developed recursive subspace identification methods are inves...
Abstract: The problem of the recursive identification of MIMO state space models in the framework of...