A review of recent advances in metaheuristic maximum power point tracking algorithms for solar photovoltaic systems under the partial-shading conditions

Q1 Earth and Planetary Sciences
T. Sutikno, A. Pamungkas, G. Pau, A. Yudhana, M. Facta
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引用次数: 2

Abstract

Several maximum power point (MPP) tracking algorithms for solar power or photovoltaic (PV) systems concerning partial-shading conditions have been studied and reviewed using conventional or advanced methods. The standard MPPT algorithms for partial-shading conditions are: (i) conventional; (ii) mathematics-based; (iii) artificial intelligence; (iv) metaheuristic. The main problems of the conventional methods are poor power harvesting and low efficiency due to many local maximum appearances and difficulty in determining the global maximum tracking. This paper presents MPPT algorithms for partial-shading conditions, mainly metaheuristics algorithms. Firstly, the four classification algorithms will be reviewed. Secondly, an in-depth review of the metaheuristic algorithms is presented. Remarkably, 40 metaheuristic algorithms are classified into four classes for a more detailed discussion; physics-based, biology-based, sociology-based, and human behavior-based are presented and evaluated comprehensively. Furthermore, the performance comparison of the 40 metaheuristic algorithms in terms of complexity level, converter type, sensor requirement, steady-state oscillation, tracking capability, cost, and grid connection are synthesized. Generally, readers can choose the most appropriate algorithms according to application necessities and system conditions. This study can be considered a valuable reference for in-depth works on current related issues.
部分遮阳条件下太阳能光伏系统最大功率点跟踪的元启发式算法研究进展综述
针对部分遮阳条件下的太阳能或光伏系统的几种最大功率点(MPP)跟踪算法,采用传统或先进的方法进行了研究和综述。部分遮阳条件下的标准MPPT算法是:(i)常规;(2)数学为基础的;(iii)人工智能;(四)metaheuristic。传统方法存在的主要问题是由于局部极大值出现过多而导致能量收集差、效率低以及难以确定全局极大值跟踪。本文介绍了局部遮阳条件下的MPPT算法,主要是元启发式算法。首先,对四种分类算法进行了综述。其次,对元启发式算法进行了深入的回顾。值得注意的是,40种元启发式算法被分为四类进行更详细的讨论;以物理为基础,以生物学为基础,以社会学为基础,以人类行为为基础,全面介绍和评估。最后,从复杂程度、变换器类型、传感器要求、稳态振荡、跟踪能力、成本和并网情况等方面对40种元启发式算法进行了性能比较。一般情况下,读者可以根据应用需要和系统条件选择最合适的算法。本研究为当前相关问题的深入研究提供了有价值的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Indonesian Journal of Science and Technology
Indonesian Journal of Science and Technology Engineering-Engineering (all)
CiteScore
11.20
自引率
0.00%
发文量
10
审稿时长
16 weeks
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