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The physical system can be represented in mathematical models. The
mathematical procedure of system modelling often leads to a comprehensive
description of a process in the form of higher order ordinary differential equations
or partial differential equations which are difficult to use and sometimes necessary
to find the possibility of some equations of the same type but of lower order that
may adequately reflect all essential characteristics of the original system. Hence a
systematic approximation of the original model is required which results in a reduced
order model. The systematic procedure that leads to reduced order model is termed
as model order reduction (MOR), which tries to quickly capture the essential features
of an original system.
A large number of order reduction techniques have been suggested by several
authors in the literature. These are broadly categorized as time and frequency
domain reduction techniques. The frequency domain reduction methods also
utilized to reduce the order of interval systems based on Kharitonov’s theorem
and interval arithmetic operation (IAO). Furthermore, combined methods have been
developed by several authors in which denominator polynomials are determined by
one method and numerator terms are determined by another method. In spite of
many existing reduction techniques, there is always a scope of developing new
techniques. Therefore, the model order reduction of original higher order systems
is in demand in the field of system and control due to the various issues like good
time/frequency response matching, stability and realizability etc. So, it is of great
interest to investigate the efficacy of new algorithms.
The initial aim of this thesis is to highlight the frequency domain and interval
domain order reduction methods available in the literature. This lead to motivate
to develop some new algorithm for order reduction of linear time invariant single
input single output (SISO) and multi input multi output (MIMO) systems. The work
represented in this thesis involves the use of both conventional and interval approach
for order reduction of continuous and discrete time systems. In addition, the other
objective is to ensure the superiority of the new reduction methods by comparing
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with other well-known reduction methods available in the literature. Lastly, to solve
the problem of designing the controller both in direct and indirect approaches by
using proposed reduced order methods.
The introduction followed by importance and application of model order reduction
is presented, subsequently followed by the mathematical preliminaries, then the
concept of interval systems is introduced. Besides a brief overview of the
development that have taken place in the area of model order reduction, various
existing reduction methods and their associated qualities/ drawbacks are also
reflected. New composite reduction methods are developed for reduction of higher
order linear time invariant systems. Time moment matching method, factor division
algorithm, Pade approximation method and differentiation method are employed to
propose composite MOR methods. These methods are applicable to SISO/MIMO
systems taken from the literature and the results are compared with the some
available reduction models. The comparative analysis has been done on the basis
of their performance indices which justify the proposed methods.
New composite reduction methods are developed for reduction of higher-order
linear-time invariant (LTI) interval systems using differentiation method, stability
equation method and time moment matching method based on Kharitonov’s
theorem. Further, based on interval arithmetic operations new mixed methods have
also been proposed by using Pade approximation method, factor division algorithm
and differentiation method. To show the efficacy and powerfulness of the proposed
reduction methods the popular numerical examples available in the literature are
considered. Some of these methods are also extended to model reduction of discrete
time systems.
The controller is designed on the basis of approximate model matching,
with both the direct and indirect approaches, using the proposed reduction
methods. The desired performance specifications of the plant are translated into
a specification/reference model transfer function. In direct approach the original
higher order plant is reduced and the controller designed for reduced order model.
In indirect approach of controller design, a controller is designed for original plant
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transfer function and the higher order closed loop transfer function is obtained with
unity feedback. Then this higher order closed loop transfer function is reduced to
lower order model and performance is compared with that of the reference model.
The performance comparison of various models has been carried out using
MATLAB software package |
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