Abstract:
The growing commercial market of wireless communication systems/devices over
the past decade has led to the explosion of interests and opportunities for the
design and development of microwave components. The wireless industry em
phasizes on the development of components in shortest possible time and at low
development cost [1]. There is also a class of critical design applications such as
design of high power devices and components where the accuracy requirement is
the prime goal. The design of the most microwave components require the use
of commercially available electromagnetic (EM) simulation tools for their analy
sis. In the design process, the simulations are carried out by varying the design
parameters until the desired response is obtained. The optimization of design
parameters by manual searching is a cumbersome and time consuming process,
and the chances to get local minima are very high. Moreover, increasing number
of design parameters or widening the search range makes it difficult to converge
to the global optima.
Soft computing methods play important role in the design and optimization
of many engineering disciplines including microwave domain. The aim of these
methods is to tolerate imprecision, uncertainty, and approximation to achieve
robust and low cost solution in a small time frame [2]. Soft computing methods
such as Genetic Algorithm (GA), Artificial Neural Network (ANN) and Fuzzy
Logic (FL) have been widely used by EM researchers for microwave design since
last decade [1, 2, 3]. However, these methods suffer from certain drawbacks.
GA is a powerful optimization tool, but it requires a large number of iterations
to achieve convergence and to arrive at an optimum solution. ANN has proved
its efficiency in modeling microwave components, but it has also suffered with
generalization problems. Moreover, due to very small wavelengths involved in
microwave design, which requires high precision, it is not easy to model compo
nents using conventional methods. In all, modeling andoptimization are essential
parts and powerful tools for the microwave design task but they must be applied
judiciously.
Our present research work deals with the development and use of soft comput
ing based methods for tackling challenging design problems in microwave domain.
Our aim in the development and investigation of these methods is to obtain the
designs in small time frame while improving the accuracy of the design for a
wide range of applications. In order to achieve this goal, a few diverse design
problems of microwave field, representing varied challenges in the design, such
as microstrip antennas, microwave filters, a microstrip-via, and also some criti
cal high power components such as nonlinear tapers and RF-windows have been
considered as case-study design problems. Different design methodologies are
developed for these applications. The first chapter of the thesis presents intro
duction and motivation behind the work. It also presents the scope of the overall
work.
In chapter two of the thesis, a state-of-the-art review on the use of soft com
puting methods for the design of microwave components is presented. In this
chapter, we have described the conceptual background offive importantsoftcom
puting methods namely GA [4, 5], Particle Swarm Optimization (PSO) [6, 7],
Bacterial Foraging Optimization (BFO) [8], ANN [9, 10] and Support Vector
Machine (SVM) [11]. Although each description is followed by the review of
microwave designs based on these methods, the emphasis is made on covering
design works using recently developed techniques such as PSO, SVM and BFO.
Microwave designs obtained using hybridization of these soft computing methods
are also discussed.
Chapter three presents a modified particle swarm optimizer and demonstrates
its applicability for the design of a specific microwave filter. Commercial growth
in the use of wireless communication products necessitates the efficient design
of components in a smaller and realistic time frame. A Computer-Aided Design
(CAD) approach is adopted to minimize the time required to obtain best possi
ble design parameters and reduce the experimental iterations as far as possible.
Though GA and PSO can be directly used for microwave filter design problems,
an inherent limitation of these algorithms is that they require a large number
of iterations to converge to an optimum solution. Therefore, the researchers on
PSO have also been continuously working for improving the convergence speed
and accuracy of the standard PSO [12]. In this work, we present a novel modifi
cation to PSO algorithm, PSO with Multiple Subswarms (PSO-MS), which aims
to offer faster convergence while improving quality of solution. The solution is
generic as it can be applied to the cases when the design process is complex,
computationally expensive and time consuming. In the proposed modification,
we have introduced a new paradigm of multiple sub-swarms for searching pa
rameter space with the PSO algorithm. The social component of PSO's velocity
update equation is modified to consider the effects of multiple sub-swarms. Five
benchmark functions have been considered for testing the proposed algorithm.
The approach is implemented and tested for two basic variations of PSO, namely,
PSO with inertia weight [13] and PSO with constriction factor method [14]. The
experimental results illustrate that the PSO-MS algorithm has the potential to
converge faster, thus reducing the computational expenses, while improving the
quality/accuracy of the solution. The PSO-MS is also used for the design of cou
pled microstrip-line band-pass filter which is a computationally expensive process
when EM tool is invoked in iterative loop of PSO. The results of the proposed
algorithm show improvement over the design results obtained using standard
PSO.
Chapter four deals with support vector driven evolutionary algorithms for the
design of specific microwave components. Full-wave EM simulation techniques
provide accurate solution. However, the accuracy, computational time and con
vergence of the solution using EM simulators are dependent on the number of
constraints to be handled. Since, these constraints have to be handled man
ually in full-wave EM simulators, they do not guarantee convergence and also
require long run time especially when optimization-based design automation is
considered. In order to overcome these obstacles, either closed-form expressions
or mathematical curve fitting techniques, which use data obtained from mea
surements or EM simulators, can be employed to compute the output response.
Various meta-modeling techniques such as ANN, response surface method, kriging,
etc., can be used to create approximate model from the empirical data
[15, 16]. Most of these models have inherent limitations of accuracy and valid
ity over a restricted range of parameter values. ANN has been used by many
EM researchers to model microwave components and balance the trade-off be
tween computation time and accuracy [1]. However, the generalization accuracy
achieved bythe ANN basedmodels ofmicrowave components needs improvement
to increase the effectiveness of CAD. In this chapter, we have presented a more
accurate model of microwave components using SVM. Similar to ANN, SVM is
also a learning technique to learn from empirical data to deal with the accuracy
and complexity trade-off, by minimizing upper bound on the generalization error
[11, 17]. Adetailed description for SVM based microwave modeling is presented
and models for specific microwave components such as a one-port microstrip via
and two microstrip antennas are developed. The accuracy of the SVM models is
compared with other meta-models developed using ANN. Another contribution
of the chapter is in presenting a hybrid approach combining SVM with evoluiv
tionary algorithms such as PSO/GA. In this approach, the model of microwave
component obtained using SVM is invoked in the optimization loop of evolu
tionary algorithms. The significant advantage obtained with SVM model is that
it responds quickly (approximately in milliseconds) compared to iterative para
metric analysis using EM simulation tools for which the response time is large
(approximately in minutes depending upon the complexity of the problem). The
hybrid method, support vector driven genetic algorithm, is demonstrated for the
design of circular polarized microstrip antenna at 2.6 GHz band, while another
similar hybrid method, support vector driven particle swarm optimization, is
demonstrated for the design of a simple aperture coupled microstrip antenna.
Chapter five of the thesis deals with the design of a nonlinear taper using
swarm intelligence based algorithms. The design of high power microwave sources
and their components belong to a class of problems in which high precision is
required with very less tolerance. Vulnerability of one component may cause the
failure of the entire system and spell catastrophic damage. Nonlinear taper is one
such component which is used in the output system of high power gyrotrons to
connect output section of cavity with the main waveguide system. For high power
applications, the design of a nonlinear taper requires very high transmission
(above 99%), with minimum spurious mode content. In this work, the design
optimization of a nonlinear taper to be used in a specific gyrotron (42 GHz,
200 kW, CW gyrotron operating in the TE0,3 cavity mode with axial output
collection) has been taken as a case study. The taper synthesis has been carried
out considering a raised cosine type of nonlinear taper and the analysis is done
using a dedicated scattering matrix code as it is very fast and accurate for taper
analysis [18]. The design of nonlinear taper is carried out using two swarm
intelligence based algorithms, namely, PSO and a modified BFO. The classical
BFO ignores the effects of swarming, and all the bacteria are assumed to have the
same swim length. However, varying the swim length according to the fitness
may give better convergence speed. In order to improve the convergence and
quality ofsolution, the BFO algorithm is modified such that it includes memory
of the bacteria, global swarming effect and variable swim length. The modified
BFO (MBFO) is tested on a set of benchmark functions. The optimization of a
nonlinear taper is carried out using both the PSO and MBFO algorithms, which
show very good agreement with the desired objective. The best optimized taper
design shows excellent response with very high transmission (99.86%) indicating
the effectiveness of these methods.
In chapter six, the design of disc-type RF-windows is presented using Multi-
Objective Particle Swarm Optimization (MOPSO) method. High power mi
crowave and millimeter-wave sources such as gyrotrons, klystrons, and other
gyro-devices produce very high output power at wavelengths in microwave and
millimeter-wave ranges [19]. RF-window is a critical component in the output
system of these devices. The design requirement ofthe window is that it should
withstand high power, mechanical and thermal stresses, be leak tight and loss
less. Therefore, the challenge is to select a proper window material, and obtain
an optimized design that minimizes power reflections and absorption for a better
transmission [19]. Hence, these components have to bedesigned carefully. Many
real time design problems require optimization ofmore than one objective. In this
case, it is desired to find a solution that optimally balances the trade-off between
multiple objectives. Multi-objective optimization is implemented with PSO by
several researchers[7]. In this work, the design of two types of RF-windows,
namely, double disc window [19, 20] and pillbox-type window [21] for use in
high power devices is presented using a specific implementation of MOPSO [22],
which uses the mechanism of crowding distance and found to be highly compet
itive in converging towards Pareto front. The role ofMOPSO is to find physical
dimensions for both the types of windows while optimizing the trade-off between
matching of desired resonant frequency and maximizing bandwidth around the
resonant frequency. The design of double-disk window is carried out for a specific
42 GHz, 200 kW, CW gyrotron (with two different disc materials) and for a 170
GHz, 1 MW, CW gyrotron, while the design of pillbox-type window is carried
out for a 2.856 GHz, 5 MW, pulsed klystron. The results show the best resonance
matching for each window design and prove the applicability of MOPSO to wide
range of high power microwave devices/components.
Finally, in chapter seven, the contributions made in the thesis are summarized
and scope of the future work is outlined. In summary, the thesis contributes
towards improvement of the efficiency and accuracy of the design problems in
microwave domain by proposing and investigating soft computing methods, their
modifications and hybridizations.