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Parameters identification of PV solar cells and modules using flexible particle swarm optimization algorithm

机译:柔性粒子群算法在光伏太阳能电池组件参数识别中的应用

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摘要

The use of solar energy as a source of clean energy is increasing throughout the world. Therefore, designing higher-quality photovoltaic cells has attracted researches. Several equivalent circuits have been proposed for the photovoltaic cell, but it is necessary to note that in order to achieve maximum power point (MPP), finding appropriate circuit model parameters is required. Many methods for finding the optimal parameters have been proposed. In this paper, flexible particle swarm optimization (FPSO) algorithm is proposed to estimate the parameters of PV cell model. In this algorithm, an elimination phase is added to classic PSO. At the beginning of each phase, a certain number of worst particles are deleted and some new particles are replaced in the new search space. Also, the search space of the parameters in each particle is changed based on the value of these parameters. These modifications have enhanced the proposed algorithm performance by adding the ability of global search and also searching in a reasonable space. To highlight the superiority of the FPSO algorithm, this method is used to estimate the parameters of the single diode model, double diode model, and the photovoltaic module. In order to illustrate the proficiency of the proposed approach, it is compared to other well-known optimization methods. Furthermore, to ensure the practical use of the FPSO algorithm, it is validated by three different solar modules such as monocrystalline (SM55) and multi-crystalline (KC200GT) and polycrystalline (SW255). The simulation results show that the proposed algorithm has high performance in terms of accuracy and robustness. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在世界范围内,越来越多的人将太阳能用作清洁能源。因此,设计更高质量的光伏电池引起了研究。已经针对光伏电池提出了几种等效电路,但是必须注意,为了实现最大功率点(MPP),需要找到合适的电路模型参数。已经提出了许多寻找最佳参数的方法。本文提出了柔性粒子群算法(FPSO)来估计光伏电池模型的参数。在此算法中,消除阶段被添加到经典PSO中。在每个阶段的开始,都会删除一定数量的最差粒子,并在新的搜索空间中替换一些新的粒子。而且,基于这些参数的值来改变每个粒子中的参数的搜索空间。这些修改通过添加全局搜索功能以及在合理的空间内搜索,增强了所提出的算法性能。为了突出FPSO算法的优越性,该方法用于估计单二极管模型,双二极管模型和光伏模块的参数。为了说明所提出方法的熟练程度,将其与其他众所周知的优化方法进行了比较。此外,为了确保FPSO算法的实际使用,它已通过三种不同的太阳能模块(例如单晶硅(SM55)和多晶硅(KC200GT)和多晶硅(SW255))进行了验证。仿真结果表明,该算法具有较高的精度和鲁棒性。 (C)2019 Elsevier Ltd.保留所有权利。

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