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用于控制高浓度光伏跟踪器的基于知识的传感器。

Knowledge-Based Sensors for Controlling A High-Concentration Photovoltaic Tracker.

作者信息

Canada-Bago Joaquin, Fernandez-Prieto Jose-Angel, Gadeo-Martos Manuel-Angel, Perez-Higueras Pedro

机构信息

Telematic Engineering System Research Group, CEATIC Center of Advanced Studies in Information and Communication Technologies, University of Jaén, Campus Las Lagunillas, C.P. 23071 Jaén, Spain.

CEAEMA Center for Advanced Studies in Energy and Environment, Electronic and Automation Department, University of Jaén, Campus Las Lagunillas, C.P. 23071 Jaén, Spain.

出版信息

Sensors (Basel). 2020 Feb 28;20(5):1315. doi: 10.3390/s20051315.

Abstract

To reduce the cost of generated electrical energy, high-concentration photovoltaic systems have been proposed to reduce the amount of semiconductor material needed by concentrating sunlight using lenses and mirrors. Due to the concentration of energy, the use of tracker or pointing systems is necessary in order to obtain the desired amount of electrical energy. However, a high degree of inaccuracy and imprecision is observed in the real installation of concentration photovoltaic systems. The main objective of this work is to design a knowledge-based controller for a high-concentration photovoltaic system (HCPV) tracker. The methodology proposed consists of using fuzzy rule-based systems (FRBS) and to implement the controller in a real system by means of Internet of Things (IoT) technologies. FRBS have demonstrated correct adaptation to problems having a high degree of inaccuracy and uncertainty, and IoT technology allows use of constrained resource devices, cloud computer architecture, and a platform to store and monitor the data obtained. As a result, two knowledge-based controllers are presented in this paper: the first based on a pointing device and the second based on the measure of the electrical current generated, which showed the best performance in the experiments carried out. New factors that increase imprecision and uncertainty in HCPV solar tracker installations are presented in the experiments carried out in the real installation.

摘要

为了降低发电成本,人们提出了高浓度光伏系统,通过使用透镜和镜子聚光来减少所需的半导体材料量。由于能量的集中,为了获得所需的电量,必须使用跟踪器或指向系统。然而,在高浓度光伏系统的实际安装中观察到高度的不准确和不精确。这项工作的主要目标是为高浓度光伏系统(HCPV)跟踪器设计一个基于知识的控制器。所提出的方法包括使用基于模糊规则的系统(FRBS),并通过物联网(IoT)技术在实际系统中实现该控制器。FRBS已证明能正确适应具有高度不准确和不确定性的问题,而物联网技术允许使用受限资源设备、云计算机架构以及一个存储和监控所获数据的平台。结果,本文提出了两种基于知识的控制器:第一种基于指向设备,第二种基于所产生电流的测量,在进行的实验中后者表现出最佳性能。在实际安装中进行的实验展示了增加HCPV太阳能跟踪器安装中不精确性和不确定性的新因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cc17/7085689/29cba448edc4/sensors-20-01315-g001.jpg

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