Abstract: Subspace identification is a classical and very well studied problem in system identification. The problem was recently posed as a convex optimization problem via the nuclear norm relaxation. Inspired by robust PCA, we extend this framework to handle outliers. The proposed framework takes the form of a convex optimization problem with an objective that trades off fit, rank and sparsity. As in robust PCA, it can be problematic to find a suitable regularization parameter. We show how the space in which a suitable parameter should be sought can be limited to a bounded open set of the two-dimensional parameter space. In practice, this is very useful since it restricts the parameter space that is needed to be surveyed
Nuclear norm based subspace identification methods have recently gained importance due to their abil...
Abstract: This special session aims to survey, present new results and stimulate discussions on how ...
This paper proposes a new algorithm for linear system identification from noisy measure-ments. The p...
Abstract: Subspace identification is a classical and very well studied problem in system identificat...
Subspace identification is a classical and very well studied problem in system identification. The p...
The nuclear norm is an effective proxy for matrix rank in a range of minimization problems, includin...
New system identification methods are developing constantly to come up with solutions that can take ...
We compare two iterative frequency domain subspace identification methods using nuclear norm minimiz...
The identification of multivariable state space models in innovation form is solved in a subspace id...
ii In this dissertation, we discuss the problem of robust linear subspace estimation using low-rank ...
Abstract: Subspace identification is revisited in the scope of nuclear norm minimization methods. It...
Abstract—In system identification, the true system is often known to be stable. However, due to fini...
Abstract—In recent work, robust PCA has been posed as a problem of recovering a low-rank matrix L an...
This paper studies the local subspace identification of 1D homogeneous networked systems. The main c...
Subspace identification techniques have gained widespread acceptance as a method of obtaining a low-...
Nuclear norm based subspace identification methods have recently gained importance due to their abil...
Abstract: This special session aims to survey, present new results and stimulate discussions on how ...
This paper proposes a new algorithm for linear system identification from noisy measure-ments. The p...
Abstract: Subspace identification is a classical and very well studied problem in system identificat...
Subspace identification is a classical and very well studied problem in system identification. The p...
The nuclear norm is an effective proxy for matrix rank in a range of minimization problems, includin...
New system identification methods are developing constantly to come up with solutions that can take ...
We compare two iterative frequency domain subspace identification methods using nuclear norm minimiz...
The identification of multivariable state space models in innovation form is solved in a subspace id...
ii In this dissertation, we discuss the problem of robust linear subspace estimation using low-rank ...
Abstract: Subspace identification is revisited in the scope of nuclear norm minimization methods. It...
Abstract—In system identification, the true system is often known to be stable. However, due to fini...
Abstract—In recent work, robust PCA has been posed as a problem of recovering a low-rank matrix L an...
This paper studies the local subspace identification of 1D homogeneous networked systems. The main c...
Subspace identification techniques have gained widespread acceptance as a method of obtaining a low-...
Nuclear norm based subspace identification methods have recently gained importance due to their abil...
Abstract: This special session aims to survey, present new results and stimulate discussions on how ...
This paper proposes a new algorithm for linear system identification from noisy measure-ments. The p...