Methods of system identification, parameter estimation and optimisation applied to problems of modelling and control in engineering and physiology
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- @PhdThesis{2009murraysmithdsc,
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author = "David James Murray-Smith",
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title = "Methods of system identification, parameter estimation
and optimisation applied to problems of modelling and
control in engineering and physiology",
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school = "University of Glasgow",
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year = "2009",
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type = "Doctor of Science in Engineering",
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address = "UK",
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month = may,
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keywords = "genetic algorithms, genetic programming",
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URL = "http://theses.gla.ac.uk/1170/",
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URL = "http://theses.gla.ac.uk/1170/1/2009murraysmithdsc.pdf",
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URL = "http://encore.lib.gla.ac.uk/iii/encore/record/C__Rb2694600",
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size = "143 679(?) pages",
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abstract = "Mathematical and computer-based models provide the
foundation of most methods of engineering design. They
are recognised as being especially important in the
development of integrated dynamic systems, such as
control-configured aircraft or in complex robotics
applications. These models usually involve combinations
of linear or nonlinear ordinary differential equations
or difference equations, partial differential equations
and algebraic equations. In some cases models may be
based on differential algebraic equations. Dynamic
models are also important in many other fields of
research, including physiology where the highly
integrated nature of biological control systems is
starting to be more fully understood. Although many
models may be developed using physical, chemical, or
biological principles in the initial stages, the use of
experimentation is important for checking the
significance of underlying assumptions or
simplifications and also for estimating appropriate
sets of parameters. This experimental approach to
modelling is also of central importance in establishing
the suitability, or otherwise, of a given model for an
intended application, the so-called model validation
problem. System identification, which is the broad term
used to describe the processes of experimental
modelling, is generally considered to be a mature field
and classical methods of identification involve linear
discrete-time models within a stochastic framework. The
aspects of the research described in this thesis that
relate to applications of identification, parameter
estimation and optimisation techniques for model
development and model validation mainly involve
nonlinear continuous time models Experimentally-based
models of this kind have been used very successfully in
the course of the research described in this thesis
very in two areas of physiological research and in a
number of different engineering applications. In terms
of optimisation problems, the design, experimental
tuning and performance evaluation of nonlinear control
systems has much in common with the use of optimisation
techniques within the model development process and it
is therefore helpful to consider these two areas
together.",
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abstract = "The work described in the thesis is strongly
applications oriented. Many similarities have been
found in applying modelling and control techniques to
problems arising in fields that appear very different.
For example, the areas of neurophysiology, respiratory
gas exchange processes, electro-optic sensor systems,
helicopter flight-control, hydro-electric power
generation and surface ship or underwater vehicles
appear to have little in common. However, closer
examination shows that they have many similarities in
terms of the types of problem that are presented, both
in modelling and in system design. In addition to
nonlinear behaviour; most models of these systems
involve significant uncertainties or require important
simplifications if the model is to be used in a
real-time application such as automatic control. One
recurring theme, that is important both in the
modelling work described and for control applications,
is the additional insight that can be gained through
the dual use of time-domain and frequency-domain
information. One example of this is the importance of
coherence information in establishing the existence of
linear or nonlinear relationships between variables and
this has proved to be valuable in the experimental
investigation of neuromuscular systems and in the
identification of helicopter models from flight test
data. Frequency-domain techniques have also proved
useful for the reduction of high-order multi-input
multi-output models. Another important theme that has
appeared both within the modelling applications and in
research on nonlinear control system design methods,
relates to the problems of optimisation in cases where
the associated response surface has many local optima.
Finding the global optimum in practical applications
presents major difficulties and much emphasis has been
placed on evolutionary methods of optimisation (both
genetic algorithms and genetic programming) in
providing usable methods for optimisation in design and
in complex nonlinear modelling applications that do not
involve real-time problems.",
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abstract = "Another topic, considered both in the context of
system modelling and control, is parameter sensitivity
analysis and it has been found that insight gained from
sensitivity information can be of value not only in the
development of system models (e.g. through
investigation of model robustness and the design of
appropriate test inputs), but also in feedback system
design and in controller tuning. A technique has been
developed based on sensitivity analysis for the
semi-automatic tuning of cascade and feedback
controllers for multi-input multi-output feedback
control systems. This tuning technique has been applied
successfully to several problems. Inverse systems also
receive significant attention in the thesis. These
systems have provided a basis for theoretical research
in the control systems field over the past two decades
and some significant applications have been reported,
despite the inherent difficulties in the mathematical
methods needed for the nonlinear case. Inverse
simulation methods, developed initially by others for
use in handling-qualities studies for fixed-wing
aircraft and helicopters, are shown in the thesis to
provide some important potential benefits in control
applications compared with classical methods of
inversion. New developments in terms of methodology are
presented in terms of a novel sensitivity based
approach to inverse simulation that has advantages in
terms of numerical accuracy and a new search-based
optimisation technique based on the Nelder-Mead
algorithm that can handle inverse simulation problems
involving hard nonlinearities. Engineering applications
of inverse simulation are presented, some of which
involve helicopter flight control applications while
others are concerned with feed-forward controllers for
ship steering systems. The methods of search-based
optimisation show some important advantages over
conventional gradient-based methods, especially in
cases where saturation and other nonlinearities are
significant. The final discussion section takes the
form of a critical evaluation of results obtained using
the chosen methods of system identification, parameter
estimation and optimisation for the modelling and
control applications considered. Areas of success are
highlighted and situations are identified where
currently available techniques have important
limitations. The benefits of an inter-disciplinary and
applications-oriented approach to problems of modelling
and control are also discussed and the value in terms
of cross-fertilisation of ideas resulting from
involvement in a wide range of applications is
emphasised. Areas for further research are discussed.",
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notes = "page x 'Note that all Submitted Papers have been
BibTeX entry too long. Truncated
Genetic Programming entries for
David James Murray-Smith
Citations