Online Gradient Descent for Flexible Power Point Tracking Under a Highly Fluctuating Weather and Load
The increasing electricity demand and the need for clean and renewable energy resources to satisfy this demand in a cost-effective manner, imposes new challenges on researchers and developers to maximize the output of these renewable resources at all times. However, the increasing penetration of ren...
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Zusammenfassung: | The increasing electricity demand and the need for clean and renewable energy
resources to satisfy this demand in a cost-effective manner, imposes new
challenges on researchers and developers to maximize the output of these
renewable resources at all times. However, the increasing penetration of
renewable energy into the grid imposes new challenges on the grid operators.
All of these challenges and issues gave rise to the need of Maximum Power Point
Tracker (MPPT) and Flexible Power Point Trackers (FPPT) in order to maximize
the power extracted from Photovoltaic (PV) systems and meet the grid operation
constraints. Existing solutions for these algorithms do not take into
consideration the very high dynamical nature of weather conditions that affects
the output power that can be extracted from the PV modules, whereas in
practice, the weather changes dynamically faster than what the algorithms time
needed to converge. The work in this document is an attempt to address this
shortcoming address shortcoming by utilizing online optimization algorithms for
this purpose. Numerical analysis and verification are presented in the
document. Code for the algorithms can be found at this link |
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DOI: | 10.48550/arxiv.2203.00197 |