避开气象条件的光伏故障检测决策支持系统

Roberto G. Aragón, M. E. Cornejo, Jesús Medina, Juan Moreno García, Eloísa Ramírez-Poussa
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引用次数: 1

摘要

光伏太阳能电站安装的一个基本问题是优化发电和故障检测,为此已经开发了不同的技术和方法,考虑到气象条件。这一事实意味着使用不稳定和难以预测的变量,这可能会对所提议的技术和方法在特定条件下的合理性产生问题。在这条线上,我们的目标是为光伏故障检测提供一个避开气象条件的决策支持系统。本文开发了一种基于模糊集的数学机制,以优化光伏发电设施的能源生产,检测设施产生的能源随时间的异常行为。具体而言,通过使用不同的成员映射,对光伏设施的错误和正确行为进行了建模。从这些映射中,一个基于有序加权平均算子的决策支持系统通过使用自然语言通知设施每天的性能。此外,还设计了一个状态机来根据阶段和前几天的性能确定每个设施的阶段。所设计系统的主要优点是解决了“产能不断损失”的问题,无需考虑气象条件,能够获得更高的利润。此外,该系统还具有可扩展性和便携性,并补充了以前在能源生产优化方面的工作。最后,用Grupo energymactico de Puerto real S.A.提供的真实数据对所提出的机制进行了测试,Grupo energymactico de Puerto real S.A.是一家负责管理西班牙Cádiz real港六个光伏设施的企业,在断层检测方面取得了良好的效果。
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Decision Support System for Photovoltaic Fault Detection Avoiding Meteorological Conditions
A fundamental issue about installation of photovoltaic solar power stations is the optimization of the energy generation and the fault detection, for which different techniques and methodologies have already been developed considering meteorological conditions. This fact implies the use of unstable and difficult predictable variables which may give rise to a possible problem for the plausibility of the proposed techniques and methodologies in particular conditions. In this line, our goal is to provide a decision support system for photovoltaic fault detection avoiding meteorological conditions. This paper has developed a mathematical mechanism based on fuzzy sets in order to optimize the energy production in the photovoltaic facilities, detecting anomalous behaviors in the energy generated by the facilities over time. Specifically, the incorrect and correct behaviors of the photovoltaic facilities have been modeled through the use of different membership mappings. From these mappings, a decision support system based on ordered weighted averaging operators informs of the performances of the facilities per day, by using natural language. Moreover, a state machine is also designed to determine the stage of each facility based on the stages and the performances from previous days. The main advantage of the designed system is that it solves the problem of “constant loss of energy production”, without the consideration of meteorological conditions and being able to be more profitable. Moreover, the system is also scalable and portable, and complements previous works in energy production optimization. Finally, the proposed mechanism has been tested with real data, provided by Grupo Energético de Puerto Real S.A. which is an enterprise in charge of the management of six photovoltaic facilities in Puerto Real, Cádiz, Spain, and good results have been obtained for faulting detection.
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