首页> 外文期刊>Applied Energy >Optimization of V-Trough photovoltaic concentrators through genetic algorithms with heuristics based on Weibull distributions
【24h】

Optimization of V-Trough photovoltaic concentrators through genetic algorithms with heuristics based on Weibull distributions

机译:基于韦布尔分布的启发式遗传算法优化V型槽光伏聚光器

获取原文
获取原文并翻译 | 示例
           

摘要

Photovoltaic V-Troughs use simple and low-cost non-imaging optics, namely flat mirrors, to increase the solar harvesting area by concentrating the sunlight towards regular solar cells. The geometrical dispositions of the V-Troughs elements, and the way in which they are dynamically adjusted to track the sun, condition the optical performance. In order to improve their harvesting capacity, their geometrical set-up can be tailored to specific conditions and performance priorities. Given the large number of possible configurations and the interdependence of the multiple parameters involved, this work studies genetic algorithms as a heuristic approach for navigating the space of possible solutions. Among the algorithms studied, a new genetic algorithm named GA-WA (Genetic Algorithm-Weibull Arias) is proposed. GA-WA uses new heuristic processes based on Weibull distributions. Several V-Trough performance indicators are proposed as objective functions that can be optimized with genetic algorithms: (i) (C-e) over bar (average effective concentration); (ii) Cost (cost of materials) and (iii) T-SP (space required). Moreover, from the integration of these indicators, three multi-objective indices are proposed: (a) I-COE ((C-e) over bar versus Cost); (b) ((C-e) over bar versus Cost and (C-e) over bar versus T-SP combined) and (c) MDICOE (similar to MDICOE but with discretization considerations). The heuristic parameters of the studied genetic algorithms are optimized and their capacities are explored in a case study. The results are compared against reported V-Trough set-ups designed with the interactive software VTDesign for the same case study. It was found that genetic algorithms, such as the ones developed in this work, are effective in the performance indicators improvement, as well as efficient and flexible tools in the problem of defining the set-up of solar V-Troughs in personalized scenarios. The intuition and the more holistic exploration of a trained engineer with an interactive software can be complemented with the broader and less biased evolutionary optimization of a tool like GA-WA.
机译:光伏V型槽使用简单且低成本的非成像光学器件(即平面镜),通过将太阳光集中到常规太阳能电池上来增加太阳光收集面积。 V型槽元件的几何布置以及动态调整它们以跟踪太阳的方式都会影响光学性能。为了提高它们的收获能力,可以根据特定条件和性能优先级对其几何形状进行调整。考虑到大量可能的配置以及涉及的多个参数的相互依赖性,这项工作研究了遗传算法,作为一种探索可能解决方案空间的启发式方法。在研究的算法中,提出了一种新的遗传算法GA-WA(Genetic Algorithm-Weibull Arias)。 GA-WA使用基于Weibull分布的新启发式流程。提出了几个V-Trough性能指标作为目标函数,可以使用遗传算法对其进行优化:(i)(C-e)超过bar(平均有效浓度); (ii)成本(材料成本)和(iii)T-SP(所需空间)。此外,从这些指标的综合来看,提出了三个多目标指标:(a)I-COE((条形图与成本之比(C-e)); (b)((C-e)超过条形与成本之比,(C-e)超过条形与T-SP的总和)和(c)MDICOE(类似于MDICOE,但考虑了离散化)。在一个案例研究中,对所研究遗传算法的启发式参数进行了优化,并探索了它们的能力。将结果与针对同一案例研究使用交互式软件VTDesign设计的报告的V型槽设置进行比较。人们发现,遗传算法(例如在本工作中开发的算法)可以有效地改善性能指标,并且可以有效地解决个性化方案中定义太阳能V型槽设置的问题。借助交互式软件,对经过培训的工程师的直觉和更全面的探索可以与诸如GA-WA之类的工具的更广泛,更少偏见的进化优化相辅相成。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号