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Operational systems available in the real-time world studied through their
well-established mathematical representations are recognized to be a challenging
task. This assignment is then processed via system identification contributing to
the derivation of a vast number of differential and difference equations resulting
in state variable or transfer function of higher order, making the overall study
and analysis of the system cumbersome. Here, rises the trouble for researchers
working on a particular system via numerical investigations. This analysis of
composite nature is stated to be time-consuming and is inconvenient especially
if a repeated assessment is desired. Thus, demanding a technique or an algorithm
to cut down the order of the system to a user-friendly approximate model which
is readily available for their investigation. The method emerged to the practice for
deriving the simplified version of the higher order system known as Model Order
Reduction (MOR). It aims to preserve fewer of the essential characteristics such
as stability, transient and steady state response, etc. of the original system. This
requirement is concerned with the limited computational, accuracy, and storage
capabilities. Nevertheless, the reduced models are believed to be a replica of
primary systems. The derived reduced models are then substituted in place of the
original complex systems making them simple for either study or analysis or
simulation or control. Throughout the thesis, the label of System, and Model are
used for the higher and lower order mathematical representations respectively.
The acceptance of formulating the MOR algorithms grabbed a consistent
interest from every arena from theoretical to practical from electrical to
mechanical systems accommodating every smaller to larger subjects. The practice
resulted in the emergence of various algorithms and techniques observed through
the bulk of literature both in time and frequency domains ranging from
continuous-time to discrete-time domains.
In-depth study of the system dynamics showcased the presence of uncertainty
within the system. These uncertainties are the consequence of un-modeled
dynamics, sensor noises, disturbances, manual errors, parameter variations,
actuator constraints and many others. Thus, systems having coefficients of
uncertain nature are known as uncertain systems. And when these systems are
bounded by a finite range or boundary is designated as Interval Systems. In
literature, researcher assigns them either Interval or Uncertain systems. In this
Model Order Reduction of Discrete-Time Interval Systems
thesis, they are Interval Systems for convenience. The presence of uncertainties
in the system results in foster inconvenience for the systems simulation, design
and implementation. Additionally, these errors significantly affect the stability
and performance of the structure. Since the uncertainty in the system cannot be
ignored or neglected, the study proceeded towards the order reduction of such
systems which is the prime objective of this thesis.
As the study of larger systems matured from non-interval systems to the
present day interval systems, the arena for MOR also enhanced from non-interval
to interval systems. Again, literature retrieves various algorithms for the
approximation of such systems. From the available series of reduction
methodologies, the researcher can observe that there are multiple algorithms for
interval systems in the continuous-time domain, whereas discrete-time domain
bear only fewer algorithms, leaving a possible arena for work. The observation
affirms the prime motivation for the author to work through Model Order
Reduction of Discrete-Time Interval Systems.
The present work elaborates the development of MOR techniques for discretetime interval systems classified into two categories.
1) Routh Approximation Approach. It constitutes the methods based on Routh
approximation. Since the Routh approximation is not applicable to discrete-time
systems directly; an appropriate discrete-transformation performs its execution.
The proposed algorithms under this approach are Gamma-Delta Approximation,
Arithmetic Operator or Multiplicative approach; Novel Arrangement of Routh array;
Simplified Interval Structure Approximation; Advanced Routh Approximation
Method (A-RAM), Extended Direct Routh Approximation Method (E-DRAM), Routh
Approximant, Routh and Pade Approximation, Direct Truncation and Pade
Approximation amalgamated with Routh Approximation,
2) Another category of the proposed algorithms in the thesis considers
Assorted Approach, developed from the necessary mathematical adaptations. The
methods formulated in this category are Non-Computational Technique, Classical
Differentiation Technique, Direct Truncation Method, Routh approximation and
Direct Truncation combined with Mikhailov Stability Criterion.
Validation of the proposed algorithms is through examples available in the
literature. Their comparison with the existing techniques via widely accepted
performance tools as the weighted square error and step response depict the
effectiveness. Frequency domain response performs the stability check of the
derived reduced model. MATLAB environment is used to verify the algorithms.
Model Order Reduction of Discrete-Time Interval Systems
The thesis is spread over six chapters commencing with Chapter 1 letting in
the introduction, motivation, literature survey, thesis contribution and the road
map to the thesis write-up. Chapter 2 reports the preliminaries required for
understanding the argument for MOR of interval system. The necessities
integrated include the interval arithmetic, stability check algorithm, performance
analysis tools, problem statement and the desired transformation. Chapter 3 and
Chapter 4 describes the order reduction techniques based on Routh
approximation approach and Assorted approach respectively. Chapter 5
discusses two separate assessments from the results. One is an evaluation of the
two frequently used discrete transformation techniques namely linear and
bilinear transformation for order reduction of interval systems. Another is the
overall analysis of the proposed algorithms observed throughout the thesis
including the limitations if discovered any. Lastly, the conclusion in Chapter 6
conveys the inevitable development of successful algorithms of varied forms
applicable to linear discrete-time interval systems. These algorithms are stated to
be computationally effortless and uncomplicated to access with a promise to
retain dynamic characteristics. This chapter also addresses three possible future
works. |
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