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首页> 外文期刊>Journal of Cleaner Production >Efficient maximum power point tracking for a photovoltaic using hybrid shuffled frog-leaping and pattern search algorithm under changing environmental conditions
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Efficient maximum power point tracking for a photovoltaic using hybrid shuffled frog-leaping and pattern search algorithm under changing environmental conditions

机译:在改变环境条件下使用混合混合青蛙跳跃和模式搜索算法的光伏电力高功率点跟踪

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During recent decades, the power system has experienced the ever-increasing penetration level of renewable energy sources (RESs), both in a centralized and a distributed manner. Solar energy in the form of solar photovoltaic (PV) panels has captured attention in power systems, particularly at the distribution level and it is being used all around the world with acceptable solar irradiance. However, such technology is associated with severe technical shortfall in harnessing the maximum power. Accordingly, several techniques have been introduced for the maximum power point tracking (MPPT) of PV systems. In this respect, an MPPT technique, augmented by the incremental conductance (INC) and hybrid shuffled frog-leaping and pattern search algorithm (HSFLA-PS) based adaptive neuro-fuzzy inference system (ANFIS) has been presented in this paper for the solar PV systems applications. The proposed framework is comprised of two stages. The optimal values of the voltages for different values of temperatures and solar irradiances are derived in the first stage by utilizing the SFLA-PS method. After implementing the training process, the ANFIS would give an optimal voltage, taking into account different values of solar irradiance. The INC method will be initialized from this point to search for the maximum power point known as "MPP". The merit of the combinatorial ANFIS and INC method is that it would need a lower number of samples for the training process. The results, obtained from simulating the proposed framework indicate that the combinatorial HSFLA-PS-ANFIS-INC technique would result in the global maxima in various climate conditions at a higher convergence rate and efficiency. (C) 2021 Elsevier Ltd. All rights reserved.
机译:在近几十年来,电力系统经历了可再生能源(RESS)的不断增长的渗透水平,无论是集中的和分布式方式。太阳能光伏(PV)面板形式的太阳能已经捕获了电力系统的关注,特别是在分配水平,它正在全球范围内使用可接受的太阳辐照度。然而,这种技术与利用最大功率的严重技术短缺相关。因此,已经引入了用于PV系统的最大功率点跟踪(MPPT)的几种技术。在这方面,通过基于增量电导(INC)和混合混合的青蛙跳跃和模式搜索算法(HSFLA-PS)的自适应神经模糊推理系统(ANFIS)的MPPT技术已经在本文中为太阳能提出PV系统应用。所提出的框架由两个阶段组成。通过利用SFLA-PS方法,在第一阶段导出不同温度和太阳能辐射值的电压的最佳值。在实施培训过程之后,ANFIS将提供最佳电压,考虑到太阳辐照度的不同值。将从该点初始化Inc方法以搜索已称为“MPP”的最大功率点。组合ANFIS和INC方法的优点是它需要较少数量的培训过程。从模拟所提出的框架获得的结果表明,组合HSFLA-PS-ANFIS-INC技术将导致全球最大值在各种气候条件下以更高的收敛速度和效率。 (c)2021 elestvier有限公司保留所有权利。

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