Journal of Jilin University (Information Science Edition) ›› 2024, Vol. 42 ›› Issue (5): 781-789.
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XU Aihua, WANG Zhiyu, JIA Haotian, YUAN Wenjun
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Abstract: Under local shading conditions, the power-voltage characteristic curves of photovoltaic arrays show multiple peaks, and traditional population intelligence optimization suffers from slow convergence, large oscillation amplitude and the tendency to fall into local optimality. To address the above problems, an MPPT (Maximum Power Point Tracking)control method based on the PSO-GWO(Particle Swarm Optimization-Grey Wolf Optimization) algorithm is proposed. The algorithm introduces a convergence factor that varies with the cosine law to balance the global search and local search ability of the GWO algorithm; the PSO algorithm is introduced to improve the information exchange between individual grey wolves and their own experience. Simulation results show that the proposed PSO-GWO algorithm not only converges quickly under local shading conditions, but also has a smaller power output oscillation amplitude, effectively improving the maximum power tracking efficiency and accuracy of the PV(Photovoltaic) array under local shading conditions.
Key words: maximum power tracking, grey wolf algorithm, particle swarm algorithm, partial shadow
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XU Aihua, WANG Zhiyu, JIA Haotian, YUAN Wenjun . Research on Partial Shading of Photovoltaic MPPT Based on PSO-GWO Algorithm[J].Journal of Jilin University (Information Science Edition), 2024, 42(5): 781-789.
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