Enhanced control of Photovoltaic Power Converters under Mismatching Conditions
Date
2019
Authors
Ramana, Vanjari Venkata.
Journal Title
Journal ISSN
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Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Exhausting fossil fuel, a huge increase in oil prices, global warming, damage to environment, increasing energy demand are major problems being
faced. In order to avoid these problems, power generation is being done using renewable energy sources. Among the renewable energy sources, solar
photovoltaic (PV) is dominant because of long operational life, lesser emission, decreasing cost of solar photovoltaic panels. Photovoltaic sources
exhibit unique maximum power point under uniform conditions. Under
mismatching conditions, there will be multiple peak points because of the
presence of bypass diodes. Maximum power point tracking algorithm is
used to track the maximum power from the PV source.
This thesis presents a literature review of maximum power point tracking
(MPPT) algorithms for tracking the global peak. The methodology employed for tracking maximum power point is classified as empirical methods, perturbation methods, model-based methods, artificial intelligence
methods, evolutionary computing methods, scanning-based methods, and
modified perturbation methods. Based on the literature survey, research
gaps are identified and are presented as objectives for this thesis.
Four maximum power point tracking algorithms capable of tracking global
peak under mismatching conditions are proposed. The first algorithm is
based on searching technique and bisection method in which zone wise
division of characteristics is performed based on open circuit voltage and
panel characteristics. It is a duty ratio based control method and the value
of duty ratio is calculated based on bisection method until the global peak
is detected. Once the global peak is detected, conventional perturb and
observe method is used to retain the operating point at GP.
The second algorithm is based on current control in which reference current is moved in the forward and backward direction by multiplying or
dividing PV current with 0.9. The movement of PV current is continued
in the backward direction until the operating voltage is less than minimum voltage below which there is no chance of occurrence of global peak.
After that, the perturbation of PV current is continued in the forward
direction until the operating current is less than minimum current below
iiiwhich there is no chance of occurrence of global peak. During the process
of perturbation, the maximum power point is identified and a conventional
algorithm is used to retain the operating point at that point.
The third algorithm uses reference voltage control and reference current
control to track the global peak. The choice to use voltage or current
control is made using a decision variable. The algorithm operates in the
current control mode to find the nearest peak and operates in voltage
control mode to identify the inflection point. Initially, the voltage below
which there is no chance of occurrence of the global peak is identified
and it is initialized as the reference voltage. Then the succeeding peak is
identified using reference current control. Once the peak is determined,
reference voltage control is used to identify the inflection point. This process is continued until the operating PV current is less than the minimum
possible current.
The fourth algorithm tracks the global peak by sampling variations in the
transient period during charging of the input capacitor. The algorithm
operates in three stages viz., scanning, correcting and retaining the operating point at MPP. In the scanning stage, the maximum power and
voltage at maximum power are identified by changing the value of duty
ratio from maximum to minimum value. The correcting stages bring the
operating point close to the voltage at maximum power point by varying
the duty ratio and retaining stage maintains the operating point at MPP.
The simulation studies of all the four MPPT algorithms are performed
in MATLAB. All the methods are compared with recent existing MPPT
methods in the literature. Hardware implementation is performed using
solar array simulator, the boost converter, and resistive load.
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Keywords
Department of Electrical and Electronics Engineering