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基于自适应神经模糊推理系统的光伏系统故障跟踪、检测、清除及重排方法

Proposed ANFIS Based Approach for Fault Tracking, Detection, Clearing and Rearrangement for Photovoltaic System.

作者信息

Bendary Ahmed F, Abdelaziz Almoataz Y, Ismail Mohamed M, Mahmoud Karar, Lehtonen Matti, Darwish Mohamed M F

机构信息

Department of Electrical Power and Machines Engineering, Faculty of Engineering, Helwan University, Cairo 11795, Egypt.

Faculty of Engineering and Technology, Future University in Egypt, Cairo 11835, Egypt.

出版信息

Sensors (Basel). 2021 Mar 24;21(7):2269. doi: 10.3390/s21072269.

Abstract

In the last few decades, photovoltaics have contributed deeply to electric power networks due to their economic and technical benefits. Typically, photovoltaic systems are widely used and implemented in many fields like electric vehicles, homes, and satellites. One of the biggest problems that face the relatability and stability of the electrical power system is the loss of one of the photovoltaic modules. In other words, fault detection methods designed for photovoltaic systems are required to not only diagnose but also clear such undesirable faults to improve the reliability and efficiency of solar farms. Accordingly, the loss of any module leads to a decrease in the efficiency of the overall system. To avoid this issue, this paper proposes an optimum solution for fault finding, tracking, and clearing in an effective manner. Specifically, this proposed approach is done by developing one of the most promising techniques of artificial intelligence called the adaptive neuro-fuzzy inference system. The proposed fault detection approach is based on associating the actual measured values of current and voltage with respect to the trained historical values for this parameter while considering the ambient changes in conditions including irradiation and temperature. Two adaptive neuro-fuzzy inference system-based controllers are proposed: (1) the first one is utilized to detect the faulted string and (2) the other one is utilized for detecting the exact faulted group in the photovoltaic array. The utilized model was installed using a configuration of 4 × 4 photovoltaic arrays that are connected through several switches, besides four ammeters and four voltmeters. This study is implemented using MATLAB/Simulink and the simulation results are presented to show the validity of the proposed technique. The simulation results demonstrate the innovation of this study while proving the effective and high performance of the proposed adaptive neuro-fuzzy inference system-based approach in fault tracking, detection, clearing, and rearrangement for practical photovoltaic systems.

摘要

在过去几十年中,光伏发电因其经济和技术优势,对电网做出了重大贡献。通常,光伏系统广泛应用于电动汽车、家庭和卫星等许多领域。电力系统的关联性和稳定性面临的最大问题之一是光伏模块的损坏。换句话说,为光伏系统设计的故障检测方法不仅需要诊断,还需要清除此类不良故障,以提高太阳能电站的可靠性和效率。因此,任何一个模块的损坏都会导致整个系统效率的下降。为避免这个问题,本文提出了一种有效的故障查找、跟踪和清除的优化解决方案。具体而言,该方案是通过开发一种最具前景的人工智能技术——自适应神经模糊推理系统来实现的。所提出的故障检测方法基于将电流和电压的实际测量值与该参数的训练历史值相关联,同时考虑包括辐照度和温度在内的环境条件变化。提出了两种基于自适应神经模糊推理系统的控制器:(1)第一种用于检测故障串;(2)另一种用于检测光伏阵列中确切的故障组。所使用的模型是通过4×4光伏阵列的配置安装的,这些阵列通过几个开关连接,此外还有四个电流表和四个电压表。本研究使用MATLAB/Simulink进行实现,并给出了仿真结果以证明所提技术的有效性。仿真结果展示了本研究的创新性,同时证明了所提出的基于自适应神经模糊推理系统的方法在实际光伏系统的故障跟踪、检测、清除和重新排列方面的有效性和高性能。

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