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Parametric Identification Using Weighted Null-Space Fitting
TL;DR: A rigorous analysis of the properties of Weighted null-space fitting, namely, consistency, and asymptotic efficiency, is conducted.
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Abstract: In identification of dynamical systems, the prediction error method using a quadratic cost function provides asymptotically efficient estimates under Gaussian noise and additional mild assumptions, but in general it requires solving a non-convex optimization problem. An alternative class of methods uses a non-parametric model as intermediate step to obtain the model of interest. Weighted null-space fitting (WNSF) belongs to this class. It is a weighted least-squares method consisting of three steps. In the first step, a high-order ARX model is estimated. In a second least-squares step, this high-order estimate is reduced to a parametric estimate. In the third step, weighted least squares is used to reduce the variance of the estimates. The method is flexible in parametrization and suitable for both open- and closed-loop data. In this paper, we show that WNSF provides estimates with the same asymptotic properties as PEM with a quadratic cost function when the model orders are chosen according to the true system. Also, simulation studies indicate that WNSF may be competitive with state-of-the-art methods.
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Citations
Identification based fault detection: Residual selection and optimal filter
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TL;DR: A fault detection performance index is introduced in a statistical framework and it is shown that the output error residual is more suitable for fault detection than the prediction error residual.
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Toward Tractable Global Solutions to Maximum-Likelihood Estimation Problems via Sparse Sum-of-Squares Relaxations *
Diogo Rodrigues,Mohamed Rasheed Abdalmoaty,Hakan Hjalmarssond +2 more
- 01 Jan 2019
TL;DR: A computationally tractable method that computes the maximum-likelihood parameter estimates with posterior certification of global optimality via the concept of sum-of-squares polynomials and sparse semidefinite relaxations is proposed.
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An asymptotically optimal indirect approach to continuous-time system identification
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Identifiability and Identification Methods for Dynamic Networks
H.H.M. Weerts
- 07 Nov 2018
TL;DR: The final author version and the galley proof are versions of the publication after peer review that features the final layout of the paper including the volume, issue and page numbers.
Estimating models with high-order noise dynamics using semi-parametric weighted null-space fitting
TL;DR: The weighted null-space fitting (WNSF) method is considered, and the asymptotic covariance for the estimation error obtained in closed loop is derived, which is optimal for an infinite-order noise model.
2
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