Machine Learning Techniques for Large-Scale System Modeling

This thesis is about some issues in system modeling: The first is a parsimonious representation of MISO Hammerstein system, which is by projecting the multivariate linear function into a univariate input function space. This leads to the so-called semiparamtric Hammerstein model, which overcomes...

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Main Author: Lv, Jiaqing
Other Authors: Pawlak, Miroslaw (Electrical & Computer Engineering)
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/1993/4808
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-MWU.1993-48082014-03-29T03:43:48Z Machine Learning Techniques for Large-Scale System Modeling Lv, Jiaqing Pawlak, Miroslaw (Electrical & Computer Engineering) Yahampath, Pradeepa (Electrical & Computer Engineering) Thavaneswaran, A. (Statistics) nonparametric estimation semiparametric MISO Hammerstein model curse of dimensionality model selection Lasso transient stability boundary machine learning This thesis is about some issues in system modeling: The first is a parsimonious representation of MISO Hammerstein system, which is by projecting the multivariate linear function into a univariate input function space. This leads to the so-called semiparamtric Hammerstein model, which overcomes the commonly known “Curse of dimensionality” for nonparametric estimation on MISO systems. The second issue discussed in this thesis is orthogonal expansion analysis on a univariate Hammerstein model and hypothesis testing for the structure of the nonlinear subsystem. The generalization of this technique can be used to test the validity for parametric assumptions of the nonlinear function in Hammersteim models. It can also be applied to approximate a general nonlinear function by a certain class of parametric function in the Hammerstein models. These techniques can also be extended to other block-oriented systems, e.g, Wiener systems, with slight modification. The third issue in this thesis is applying machine learning and system modeling techniques to transient stability studies in power engineering. The simultaneous variable section and estimation lead to a substantially reduced complexity and yet possesses a stronger prediction power than techniques known in the power engineering literature so far. 2011-08-31T17:49:27Z 2011-08-31T17:49:27Z 2011-08-31 http://hdl.handle.net/1993/4808
collection NDLTD
sources NDLTD
topic nonparametric estimation
semiparametric
MISO Hammerstein model
curse of dimensionality
model selection
Lasso
transient stability boundary
machine learning
spellingShingle nonparametric estimation
semiparametric
MISO Hammerstein model
curse of dimensionality
model selection
Lasso
transient stability boundary
machine learning
Lv, Jiaqing
Machine Learning Techniques for Large-Scale System Modeling
description This thesis is about some issues in system modeling: The first is a parsimonious representation of MISO Hammerstein system, which is by projecting the multivariate linear function into a univariate input function space. This leads to the so-called semiparamtric Hammerstein model, which overcomes the commonly known “Curse of dimensionality” for nonparametric estimation on MISO systems. The second issue discussed in this thesis is orthogonal expansion analysis on a univariate Hammerstein model and hypothesis testing for the structure of the nonlinear subsystem. The generalization of this technique can be used to test the validity for parametric assumptions of the nonlinear function in Hammersteim models. It can also be applied to approximate a general nonlinear function by a certain class of parametric function in the Hammerstein models. These techniques can also be extended to other block-oriented systems, e.g, Wiener systems, with slight modification. The third issue in this thesis is applying machine learning and system modeling techniques to transient stability studies in power engineering. The simultaneous variable section and estimation lead to a substantially reduced complexity and yet possesses a stronger prediction power than techniques known in the power engineering literature so far.
author2 Pawlak, Miroslaw (Electrical & Computer Engineering)
author_facet Pawlak, Miroslaw (Electrical & Computer Engineering)
Lv, Jiaqing
author Lv, Jiaqing
author_sort Lv, Jiaqing
title Machine Learning Techniques for Large-Scale System Modeling
title_short Machine Learning Techniques for Large-Scale System Modeling
title_full Machine Learning Techniques for Large-Scale System Modeling
title_fullStr Machine Learning Techniques for Large-Scale System Modeling
title_full_unstemmed Machine Learning Techniques for Large-Scale System Modeling
title_sort machine learning techniques for large-scale system modeling
publishDate 2011
url http://hdl.handle.net/1993/4808
work_keys_str_mv AT lvjiaqing machinelearningtechniquesforlargescalesystemmodeling
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