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Evolutionary algorithms for the design of grid-connected PV-systems

机译:并网光伏系统设计的进化算法

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摘要

The sale of electric energy generated by photovoltaic (PV) plants has attracted much attention in recent years. The installation of PV plants aims to obtain the maximum benefit of captured solar energy. The cur rent methodologies for planning the design of the different components of a PV plant are not completely efficient. This paper addresses the optimization of the design of PV plants with solar tracking, which con sists of the optimization of the variables that make up the PV plant to obtain the minimum electric (Joule) losses possible. These variables are the size and distribution of solar modules in the solar tracker, the dis tribution of the solar trackers in the field and the choice of inverter. Evolutionary algorithms (EAs) are adaptive methods based on natural evolution that may be used for searching and optimization. Four dif ferent EAs have been used for optimizing the design of PV plants: steady-state genetic algorithm, gener ational genetic algorithm, CHC algorithm and DE algorithm. In order to test the performance of these algorithms we have used different proposed fields to mount PV plants. The results obtained show that EAs, and specifically DE with rand mutation schemes, are promising techniques to optimize design of PV plants. Furthermore, the results are contrasted with nonparametric statistical tests to support our conclusions.
机译:近年来,光伏(PV)工厂产生的电能的销售已引起了广泛关注。光伏电站的安装旨在最大程度地利用捕获的太阳能。目前用于规划光伏电站不同组件设计的方法并不完全有效。本文介绍了采用太阳能跟踪的光伏电站设计的优化,包括优化构成光伏电站的变量以获得可能的最小电(焦耳)损耗。这些变量包括太阳能跟踪器中太阳能模块的大小和分布,太阳能跟踪器在现场的分布以及逆变器的选择。进化算法(EA)是基于自然进化的自适应方法,可用于搜索和优化。四种不同的EA用于优化光伏电站的设计:稳态遗传算法,通用遗传算法,CHC算法和DE算法。为了测试这些算法的性能,我们使用了建议的不同领域来安装光伏电站。获得的结果表明,EA,特别是具有rand突变方案的DE,是优化光伏电站设计的有前途的技术。此外,将结果与非参数统计检验进行对比以支持我们的结论。

著录项

  • 来源
    《Expert systems with applications》 |2012年第9期|p.8086-8094|共9页
  • 作者单位

    Dept. of Civil Engineering, Electrical Engineering Section, ETSICCP, University of Granada, Campus Fuentenueva, Granada 18071, Spain;

    Dept. of Computer Science and Artificial Intelligence, CITIC-UGR (Research Center on Information and Communications Technology), University of Granada, 18071 Granada, Spain;

    Dept. of Computer Arquitecture and Electronics, CITE 111, University of Almeria, La Canada de San Urbano s, Almeria 04120, Spain;

    Dept. of Civil Engineering, Electrical Engineering Section, ETSICCP, University of Granada, Campus Fuentenueva, Granada 18071, Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    photovoltaic plants; numerical optimization; evolutionary algorithms; differential evolution;

    机译:光伏电站;数值优化;进化算法;差异进化;

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