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PV arrays: Suffled Frog Leaping Algorithm and other MPPTs under partial shading - PSIM model

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DataCite Commons2024-07-23 更新2025-04-16 收录
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https://ieee-dataport.org/documents/pv-arrays-suffled-frog-leaping-algorithm-and-other-mppts-under-partial-shading-psim-model
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This PSIM model presents the Shuffled Frog Leaping Algorithm applied in a boost converter for maximum power point tracking. The traditional Perturb and Observe and Incremental Conductance are also available for comparisons. The explanation of this model can be found on the chapter "ALGORITMO DE OTIMIZAÇÃO SHUFFLED FROG LEAPING APLICADO EM SISTEMAS FOTOVOLTAICOS COM SOMBREAMENTO PARCIAL (SFLA-MPPT)" on page 213 of the book DOI: 10.24824/978652515703.0 by the authors F. J. Rodrigues, F. M. de Oliveira and O. H. Ando Junior, included in the book F. M. de Oliveira, J. J. G. Ledesma, O. H. Ando Junior. Title: Rastreamento do ponto de máxima potência (MPPT) para sistemas de energia solar fotovoltaica: Técnicas, Implementação e Desempenho sob sombreamento parcial. Editora CRV. F. M. de Oliveira, J. J. G. Ledesma, O. H. Ando Junior. Title: Maximum Power Point Tracking (MPPT) for Solar Photovoltaic Systems: Techniques, Implementation and Performance under Partial Shading. CRV Editor.

本PSIM模型(PSIM)展示了应用于升压变换器(boost converter)以实现最大功率点跟踪(maximum power point tracking, MPPT)的混洗蛙跳算法(Shuffled Frog Leaping Algorithm, SFLA)。传统的扰动观察法(Perturb and Observe, P&O)与增量电导法(Incremental Conductance, IncCond)也可用于对照实验。本模型的详细说明可参阅DOI编号为10.24824/978652515703.0的图书第213页,对应章节标题为《部分遮荫光伏系统中的混洗蛙跳优化算法(SFLA-MPPT)》,作者为F. J. Rodrigues、F. M. de Oliveira与O. H. Ando Junior。该章节收录于两部同名图书:1. 葡萄牙语版:《太阳能光伏系统的最大功率点跟踪(MPPT):部分遮荫条件下的技术、实现与性能》,编者为F. M. de Oliveira、J. J. G. Ledesma及O. H. Ando Junior,由CRV出版社出版;2. 英语版:"Maximum Power Point Tracking (MPPT) for Solar Photovoltaic Systems: Techniques, Implementation and Performance under Partial Shading",编者同上,由CRV出版社出版。
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IEEE DataPort
创建时间:
2024-07-23
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