Smart photovoltaic module with embedded power electronic systems for optimizing solar electricity generation
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Date
2021
Journal Title
Journal ISSN
Volume Title
Publisher
Université M'Hamed Bougara : Institut de génie électrique et électronique
Abstract
The performance of photovoltaic (PV) modules is highly affected by the changing climatic
conditions mainly the partial shading condition (PSC), where the generated power may be reduced
dramatically. Intelligent maximum power point tracking (MPPT) techniques are highly required to
track the global MPP in the multi-peak power curve and mitigate PSC effects. Thus, the integration of
an MPPT controller with the PV system is vital to improve its performance and efficiency and optimize
the harvested power. Various MPPT techniques have been presented in the literature, however,
metaheuristics-based MPPTs are given great concern due to their powerful performance. This thesis is
concerned with the power optimization of the PV module under PSC, and this is using MPPT
controllers based on metaheuristic optimization algorithms. In our work, three approaches have been
presented; the first approach is the hybridization of both the genetic algorithm GA and the particle
swarm optimization PSO with the conventional perturb and observe P&O. Both P&O-based GA and
P&O-based PSO has been evaluated and compared. The second approach presents metaheuristic-based
MPPTs; the monarch butterfly optimization (MBO) and the novel squirrel search algorithm SSA that
has been designed for the first time as MPPT controllers. In the third approach, an improved version
of the SSA called ISSA has been developed to overcome the limitations of the SSA in terms of the
tracking time and power oscillations. All the presented MPPT controllers have been implemented
within a PV system in the MATLAB/SIMULINK environment. They have been tested for various
PSCs and compared with some common MPPT methods. The proposed ISSA-based MPPT followed
by MBO proved their superiority in terms of efficiency and the reduced tracking time. The ISSA has
been experimentally validated; the obtained experimental results demonstrated its capability in
optimizing the power of the PV system under all the PSCs selected with an average efficiency of
99.48% and an average tracking time of 0.66s
Description
142 p. : ill. ; 30 cm
Keywords
Photovoltaic, Electricity generation, Power optimization
