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Last few decades have seen the rapid advances and diffusion of technologies in science, engineering,
robotics, biomedical, economics and other fields. Diverse technologies are incorporated in
industrial processes to increase the efficiency, which in turn alleviated the complexity of the systems.
Highly specialized skills and expert knowledge are required to design, develop, operate,
and control such complex systems. Along with this, the uncertainties caused by inaccurate modeling,
external disturbances, and variations of working conditions influence the system performance.
Eventually, design and development of robust control system with intelligent computational
tools is essentially required to get desired performance in efficient manner. In recent years,
the concept of soft computing based intelligent control has emerged as an efficient tool to enhance
the existing non-linear, optimal, adaptive, and stochastic control methods. The intelligent
control can be achieved through the involvement of various artificial intelligence (AI) and soft
computing approaches utilized for closed-loop feedback control to improve system performance,
reliability, and efficiency. The major soft computing techniques are fuzzy logic system, metaheuristic
algorithms (MAs), chaos theory, neurocomputing, and probabilistic reasoning. Various
soft computing techniques and their fusions are commonly used to enhance the intelligent control
tools by incorporating human expert knowledge in computing processes.
The field of soft computing is always growing by contributions from the large community of
researchers and provides an exceptional opportunity to advance its methodology and applications.
Consequently, there is a great scope and motivation to ameliorate, design, hybridize, and apply
these techniques. This fact motivates us to present some significant improvements and novel
contributions to major components of soft computing like fuzzy logic system and MAs. The
main aim of the overall work presented in this thesis is to enhance the soft computing techniques
to improve the performance of the control system design. The complete work in this thesis is
distinguished by four research objectives, given as (a) Design efficient optimization algorithm
for enhancing the performance of complex systems, (b) Performance analysis of the proposed
algorithm for optimization of different controller design problems, (c) Design of interval type-2
fuzzy precompensated PID (IT2FP-PID) controller applied to 2-link robotic manipulator with
variable payload, and (d) Constrained multi-objective optimization (MOO) approach for robust
controller design and performance analysis.
The tuning of controllers is considered as a high-dimensional, complex, multimodal numerical
optimization problem, as many locally optimal solutions can be obtained for different combinations
of the parameter values. Thus, it is always a challenging task for designers to get the
optimal tuning parameters. MAs are extensively considered for solving such control system design
problems to get the best performance and robust response. Some common deficiencies faced
by the majority of population-based MAs are lack of exploration ability, slow and premature
convergence behaviour, and stagnation to local optima. Considering the above-stated problems,
important features of two well established MAs, grey wolf optimizer (GWO) and artificial bee
colony algorithm (ABC), are hybridized to develop an improved GWO-ABC algorithm as the
first objective of the thesis. In GWO-ABC algorithm, information sharing property of employed
bees in ABC is adopted with conventional GWO algorithm to comprehend the benefits of both
the algorithms. A new population initialization strategy is introduced to get widespread range
solutions. These strategies are incorporated to overcome the shortcomings of the conventional
GWO algorithm by improving exploration capability, convergence rate, and reduce the chances
of entrapment at local optima. The performance of theGWO-ABC algorithm is validated through
extensive experimental analysis of 27 benchmark functions and comparisons with 5 other standard
intelligent algorithms.
After successfully substantiating that GWO-ABC algorithm is an efficient algorithm for solving
complex test functions, it is applied to control system design problem for linear and non-linear
test bench process plants. Here, the GWO-ABC algorithm is applied to minimize the objective
function so that optimal time-domain specifications could be achieved. All the design requirements
like low overshoot, better rise time, faster settling time, minimum steady-state error, and
performance index are evaluated and compared to other state-of-the-art algorithms. Further, the
conventional GWO algorithm is improved by incorporating the communication signalling strategy
used in cooperative foraging of wolves. The leadership hierarchy approach and communicating
behaviours are merged to present improved cooperative foraging based GWO (CFGWO)
algorithm. New acceleration coefficient is proposed to balance the exploration and exploitation
behaviour throughout the iterations. The proposed algorithm is examined on a real-world optimization
problem of controller designing for trajectory tracking problems of a 2-link robotic
manipulator with payload at tip. The comparative graphs of trajectory tracking performance, the
path traced by the end-effector, and X and Y coordinate versus time variations against their desired
reference curves are plotted. Also, the plots of position errors and controller output for both
the links are also presented.
As mentioned earlier, many of the real-world industrial processes are influenced by large
amounts of uncertainties due to dynamic unstructured environments. The type-2 fuzzy logic
controllers with type-2 fuzzy sets are highly recognized to deliver a satisfactory performance in
the face of uncertainty and imprecision than their type-1 counterparts. In order to establish its
applicability, an efficient IT2FP-PID controller is presented for trajectory tracking of a 2-link
robotic manipulator with variable payload. The controller is comprised of unique features of interval
type-2 fuzzy precompensated controller cascaded with a conventional PID controller. The
fuzzy logic controller (FLC) based precompensator is incorporated to regulate the control signal
to compensate the undershoots and overshoots in the system output when the system has unknown
non-linearities. Tuning of control parameters and the antecedent MF structures emerged
as a complex, high-dimensional, and constrained optimization problem. Hence, a systematic
strategy for optimizing the controller parameters along with scaling factors and the antecedent
MF parameters for minimization of performance metric integral time absolute error (ITAE) is
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presented. The structures of MFs are also optimized to get maximum benefits of footprint of
uncertainty (FOU) in type-2 FLC. Prominently, GWO-ABC algorithm is utilized for solving this
high-dimensional constrained optimization problem. In order to witness effectiveness, the performance
is compared with type-1 fuzzy precompensated PID (T1FP-PID), fuzzy PID (FPID), and
conventional PID controllers. The efficacy of the proposed controller is also validated through
exhaustive robustness analysis in presence of distinct non-linear dynamics such as (i) payload
variations, (ii) model uncertainties, (iii) disturbance in signals, and (iv) random noise at feedback
path. After experimental outcome, it is inferred that IT2FP-PID controller outperforms others
and can be adopted as a viable alternative for controlling non-linear complex systems with higher
uncertainties. As a whole, the work in this objective manifests that (a) additional tuning parameters
provide extra degree of freedom (DOF) to get better performance in optimal controller
design, (b) in case of IT2-FLC, the systematic strategy to optimize the shapes of MFs derive maximum
benefit of FOU to handle uncertainty (c) the proposed IT2FP-PID controller revealed as
viable alternative to control complex non-linear systems with high uncertainties, (d) GWO-ABC
algorithm can efficiently solve the low- and high-dimensional constrained optimization problems.
The last part of the thesis is dedicated to investigate the applicability of MOO approach for
tuning of controller parameters for multi-variable, constrained, and complex control systems.
In the control system design, minimization of performance error indices for set-point and disturbance
are considered as conflicting objective functions with various constraints. A simple
design and parameter tuning strategy for 2-DOF fractional order PID (2-DOF-FOPID) controller
is presented using MOO approach. A fast and elitist non-dominated sorting genetic algorithm
(NSGA-II) with constraint handling methodology is utilized and the sensitivity function is used
as a constraint. The major robustness investigations are carried for minimization of integrated absolute
error (IAE) for both set-point tracking and external disturbance rejection. The comparative
performance evaluation is assessed against equivalent counterparts and found that the proposed
2-DOF-FOPID controller performs with superior results. |
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