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Subspace Identification for Linear Systems: Theory - Implementation - Applications

TLDR
This book focuses on the theory, implementation and applications of subspace identification algorithms for linear time-invariant finitedimensional dynamical systems, which allow for a fast, straightforward and accurate determination of linear multivariable models from measured inputoutput data.
Abstract
Subspace Identification for Linear Systems focuses on the theory, implementation and applications of subspace identification algorithms for linear time-invariant finitedimensional dynamical systems. These algorithms allow for a fast, straightforward and accurate determination of linear multivariable models from measured inputoutput data. The theory of subspace identification algorithms is presented in detail. Several chapters are devoted to deterministic, stochastic and combined deterministicstochastic subspace identification algorithms. For each case, the geometric properties are stated in a main 'subspace' Theorem. Relations to existing algorithms and literature are explored, as are the interconnections between different subspace algorithms. The subspace identification theory is linked to the theory of frequency weighted model reduction, which leads to new interpretations and insights. The implementation of subspace identification algorithms is discussed in terms of the robust and computationally efficient RQ and singular value decompositions, which are well-established algorithms from numerical linear algebra. The algorithms are implemented in combination with a whole set of classical identification algorithms,processing and validation tools in Xmath's ISID, a commercially available graphical user interface toolbox. The basic subspace algorithms in the book are also implemented in a set of MATLAB® files accompanying the book. An application of ISID to an industrial glass tube manufacturing process is presented in detail, illustrating the power and user-friendliness of the subspace identification algorithms and of their implementation in ISID. The identified model allows for an optimal control of the process, leading to a significant enhancement of the production quality. The applicability of subspace identification algorithms in industry is further illustrated with the application of the MATLAB® files to ten practical problems. Since all necessary data and MATLAB® files are included, the reader can easily step through these applications, and thus get more insight in the algorithms. Subspace Identification for Linear Systems is an important reference for all researchers in system theory, control theory, signal processing, automization,mechatronics, chemical, electrical, mechanical and aeronautical engineering.

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Citations
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TL;DR: In this paper, a Rao-Blackwellised particle filter is used in the estimation of the parameters of a linear stochastic state space model for condition monitoring in a railway vehicle dynamic model.
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Output-only modal analysis of linear time-periodic systems with application to wind turbine simulation data

TL;DR: This work presents a system identification methodology that can be used to identify models for linear, periodically time-varying systems when the input forces are unmeasured, broadband and random, and is demonstrated for the well-known Mathieu oscillator.
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Willems’ Fundamental Lemma for State-Space Systems and Its Extension to Multiple Datasets

TL;DR: It is shown that all trajectories of a linear system can be obtained from a given finite number of trajectories, as long as these are collectively persistently exciting, which enables the identification of linear systems from data sets with missing samples.
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Tracking articulated hand motion with eigen dynamics analysis

TL;DR: This paper constructs a dynamic Bayesian network (DBN) to analyze the generative process of a image sequence of natural hand motion and proposes an eigen dynamics analysis (EDA) method to learn the dynamics ofnatural hand motion from labelled sets of motion captured with a data glove.
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