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Estimation Using Low Rank Signal ModelsMahata, Kaushik January 2003 (has links)
Designing estimators based on low rank signal models is a common practice in signal processing. Some of these estimators are designed to use a single low rank snapshot vector, while others employ multiple snapshots. This dissertation deals with both these cases in different contexts. Separable nonlinear least squares is a popular tool to extract parameter estimates from a single snapshot vector. Asymptotic statistical properties of the separable non-linear least squares estimates are explored in the first part of the thesis. The assumptions imposed on the noise process and the data model are general. Therefore, the results are useful in a wide range of applications. Sufficient conditions are established for consistency, asymptotic normality and statistical efficiency of the estimates. An expression for the asymptotic covariance matrix is derived and it is shown that the estimates are circular. The analysis is extended also to the constrained separable nonlinear least squares problems. Nonparametric estimation of the material functions from wave propagation experiments is the topic of the second part. This is a typical application where a single snapshot vector is employed. Numerical and statistical properties of the least squares algorithm are explored in this context. Boundary conditions in the experiments are used to achieve superior estimation performance. Subsequently, a subspace based estimation algorithm is proposed. The subspace algorithm is not only computationally efficient, but is also equivalent to the least squares method in accuracy. Estimation of the frequencies of multiple real valued sine waves is the topic in the third part, where multiple snapshots are employed. A new low rank signal model is introduced. Subsequently, an ESPRIT like method named R-Esprit and a weighted subspace fitting approach are developed based on the proposed model. When compared to ESPRIT, R-Esprit is not only computationally more economical but is also equivalent in performance. The weighted subspace fitting approach shows significant improvement in the resolution threshold. It is also robust to additive noise.
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Estimation Using Low Rank Signal ModelsMahata, Kaushik January 2003 (has links)
<p>Designing estimators based on low rank signal models is a common practice in signal processing. Some of these estimators are designed to use a single low rank snapshot vector, while others employ multiple snapshots. This dissertation deals with both these cases in different contexts.</p><p>Separable nonlinear least squares is a popular tool to extract parameter estimates from a single snapshot vector. Asymptotic statistical properties of the separable non-linear least squares estimates are explored in the first part of the thesis. The assumptions imposed on the noise process and the data model are general. Therefore, the results are useful in a wide range of applications. Sufficient conditions are established for consistency, asymptotic normality and statistical efficiency of the estimates. An expression for the asymptotic covariance matrix is derived and it is shown that the estimates are circular. The analysis is extended also to the constrained separable nonlinear least squares problems.</p><p>Nonparametric estimation of the material functions from wave propagation experiments is the topic of the second part. This is a typical application where a single snapshot vector is employed. Numerical and statistical properties of the least squares algorithm are explored in this context. Boundary conditions in the experiments are used to achieve superior estimation performance. Subsequently, a subspace based estimation algorithm is proposed. The subspace algorithm is not only computationally efficient, but is also equivalent to the least squares method in accuracy.</p><p>Estimation of the frequencies of multiple real valued sine waves is the topic in the third part, where multiple snapshots are employed. A new low rank signal model is introduced. Subsequently, an ESPRIT like method named R-Esprit and a weighted subspace fitting approach are developed based on the proposed model. When compared to ESPRIT, R-Esprit is not only computationally more economical but is also equivalent in performance. The weighted subspace fitting approach shows significant improvement in the resolution threshold. It is also robust to additive noise.</p>
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[en] PARAMETRIC IDENTIFICATION OF MECHANICAL SYSTEMS USING SUBSPACE ALGORITHMS / [pt] IDENTIFICAÇÃO PARAMÉTRICA DE SISTEMAS MECÂNICOS USANDO ALGORITMOS DE SUBESPAÇOGERMAIN CARLOS VENERO LOZANO 22 December 2003 (has links)
[pt] Identificação paramétrica de sistemas mecânicos é uma das
principais aplicações das técnicas de identificação de
sistemas na Engenharia Mecânica, especificamente para a
identificação de parâmetros modais de estruturas
flexíveis.
Um dos principais problemas na identificação é a presença
de ruido nas medições. Este trabalho apresenta uma
análise
na presença de ruído de alguns dos métodos no domínio do
tempo aplicáveis na identificação de parâmetros modais de
sistemas mecânicos lineares invariantes no tempo com
múltiplas entradas e múltiplas saídas (MIMO), usando como
base o modelo em espaço de estados tipicamente usado em
Dinâmica e Vibrações. Os algoritmos de subespaço
envolvidos
neste estudo destacam-se pela utilização da decomposição
em
valores singulares (SVD) dos dados, obtendo subespaços
ortogonais dos modos associados ao sistema e dos modos
associados ao ruído. Outros complicadores no processo de
identificação que serão explorados neste trabalho são:
flexibilidde e baixo amortecimento. Comparam-se as
técnicas
usando o modelo no espaço de estado da estrutura Mini-
mast
desenvolvida pela NASA Langley Research Center e
simulações
são feitas variando o nível de ruído nos dados, o
amortecimento e a flexibilidade da estrutura. O problema
de
identificação de parâmetros estruturais (matrizes de
massa,
rigidez e amortecimento) também é estudado, as
características e limitações dos algoritmos utilizados
são
analisados. Como exemplo de aplicação prática, um
experimento foi realizado para identificar os parâmetros
modais e estruturais de um rotor flexível e os resultados
são discutidos. / [en] Parametric identification of mechanical systems is one of
the main applications of the system identification
techniques in Mechanical Engineering, specifically for the
identification of modal parameters of flexible structures.
One of the main problems in the identification is the
presence of noise in the measurements. This work presents
an analysis in the presence of noise of some of the time
domain methods applicable in modal parameters
identification of linear time-invariant mechanical systems
with multiple inputs and multiple outputs (MIMO), using as
base the state-space model typically used in Dynamics and
Vibrations. The subspace algorithms involved in this
study are distinguished for the use of the singular values
decomposition (SVD) of the data, obtaining ortogonal
subspaces of the modes associates to the system and of the
modes associates to the noise. Other complicators in the
identification process that will be explored in this work
are: flexibility and low damping. The techniques are
compared using the state-space model of the Mini-mast
structure developed for NASA Langley Research Center and
simulations are made varying the level of noise in the
data, the damping and the flexibility of the structure. The
problem of identification of structural parameters (mass,
stiffness and damping matrices) also is studied, the
characteristics and limitations of the used algorithm is
analyzed. As example of practical application, an
experiment was made to identify the modal parameters of a
flexible rotor and the results are discussed.
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Ενίσχυση σημάτων μουσικής υπό το περιβάλλον θορύβουΠαπανικολάου, Παναγιώτης 20 October 2010 (has links)
Στην παρούσα εργασία επιχειρείται η εφαρμογή αλγορίθμων αποθορυβοποίησης σε σήματα
μουσικής και η εξαγωγή συμπερασμάτων σχετικά με την απόδοση αυτών ανά μουσικό είδος. Η
κύρια επιδίωξη είναι να αποσαφηνιστούν τα βασικά προβλήματα της ενίσχυσης ήχων και να
παρουσιαστούν οι διάφοροι αλγόριθμοι που έχουν αναπτυχθεί για την επίλυση των προβλημάτων αυτών. Αρχικά γίνεται μία σύντομη εισαγωγή στις βασικές έννοιες πάνω στις οποίες δομείται η τεχνολογία ενίσχυσης ομιλίας. Στην συνέχεια εξετάζονται και αναλύονται αντιπροσωπευτικοί
αλγόριθμοι από κάθε κατηγορία τεχνικών αποθορυβοποίησης, την κατηγορία φασματικής
αφαίρεσης, την κατηγορία στατιστικών μοντέλων και αυτήν του υποχώρου. Για να μπορέσουμε να
αξιολογήσουμε την απόδοση των παραπάνω αλγορίθμων χρησιμοποιούμε αντικειμενικές μετρήσεις
ποιότητας, τα αποτελέσματα των οποίων μας δίνουν την δυνατότητα να συγκρίνουμε την απόδοση
του κάθε αλγορίθμου. Με την χρήση τεσσάρων διαφορετικών μεθόδων αντικειμενικών μετρήσεων
διεξάγουμε τα πειράματα εξάγοντας μια σειρά ενδεικτικών τιμών που μας δίνουν την ευχέρεια να
συγκρίνουμε είτε τυχόν διαφοροποιήσεις στην απόδοση των αλγορίθμων της ίδιας κατηγορίας είτε
διαφοροποιήσεις στο σύνολο των αλγορίθμων. Από την σύγκριση αυτή γίνεται εξαγωγή χρήσιμων
συμπερασμάτων σχετικά με τον προσδιορισμό των παραμέτρων κάθε αλγορίθμου αλλά και με την καταλληλότητα του κάθε αλγορίθμου για συγκεκριμένες συνθήκες θορύβου και για συγκεκριμένο μουσικό είδος. / This thesis attempts to apply Noise Reduction algorithms to signals of music and draw conclusions concerning the performance of each algorithm for every musical genre. The main aims are to clarify the basic problems of sound enhancement and present the various algorithms
developed for solving these problems. After a brief introduction to basic concepts on sound enhancement we examine and analyze various algorithms that have been proposed at times in the literature for speech enhancement. These algorithms can be divided into three main classes: spectral
subtractive algorithms, statistical-model-based algorithms and subspace algorithms. In order to
evaluate the performance of the above algorithms we use objective measures of quality, the results of which give us the opportunity to compare the performance of each algorithm. By using four different methods of objective measures to conduct the experiments we draw a set of values that
facilitate us to make within-class algorithm comparisons and across-class algorithm comparisons. From these comparisons we can draw conclusions on the determination of parameters for each algorithm and the appropriateness of algorithms for specific noise conditions and music genre.
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