Abstract
This article presents a novel MPPT (maximum power point tracking) algorithm, based on a modified GA (genetic algorithm). When photovoltaic systems are affected by partial shading, a GMPPT (global maximum power point tracking) algorithm is required to increase the energy harvesting capability of the system. A new GMPPT algorithm is proposed in this article: a P&O (perturb and observe) algorithm is integrated inside the GA function and creates a single algorithm. By embedding a simple MPPT algorithm (P&O) inside the structure of the GA, the population size and the number of iterations are decreased, thus finding the MPP (maximum power point) in a shorter time. The algorithm parameters (population size, number of genes, and number of iterations) are optimized and the final solution is provided. A macromodel is used to average the real DC-DC converter and reduce the computation burden of the simulator, thus reducing the simulation time. The control part and the GMPPT algorithm were implemented on a DSP (digital signal processor) and tested on an experimental small scale photovoltaic system. A description of this algorithm and its performances are detailed in this article, verified through simulation and experimental results.
Author supplied keywords
- Ant-colony optimization (ACO)
- Converter DC/DC
- DC-DC power conversion
- DSP (digital signal processor)
- Firefly algorithm (FA)
- Fuzzy logic control
- GMPP (global maximum power point)
- Genetic algorithm
- Grid-connected photovoltaic power generator
- Iincremental conductance
- MPPT
- MPPT (maximum power point tracking)
- Maximum power point tracking (MPPT)
- Partial shading
- Perturbation and observation
- Photo-voltaic (PV)
- Photovoltaic
- Photovoltaic system
- Ripple correlation control (RCC)
- maximum power point (MPP) tracking (MPPT)
- maximum power point trackers
- maximum power point tracking (MPPT)
- maximum power-point tracking (MPPT)
- mismatch losses
- optimisation
- partial shaded conditions (PSCs)
- particle swarm optimization
- particle swarm optimization (PSO)
- perturb and observe (P&O)
- perturb and observe (P&O) method
- photovol
- photovoltaic (PV) power systems
- photovoltaic (PV) pumping
- photovoltaic (PV) systems
- photovoltaic cells
- photovoltaic systems
- simulated annealing
- solar energy
- solar power generation
- stability
Cite
CITATION STYLE
Bouchafaa, F., Hamzaoui, I., Hadjammar, A., Daraban, S., Petreus, D., Morel, C., … Chuang, S. T. (2016). A Grey Wolf Assisted Perturb &Observe MPPT Algorithm for a Photovoltaic Power System. IEEE Transactions on Energy Conversion, 27(1), 39–43. https://doi.org/10.1109/TEVC.2008.919004
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