On Hybrid Health Monitoring of Photovoltaics

Amir Baniamerian, A. Bostani, Ashraf A. Zaher
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引用次数: 1

Abstract

During the past few years, adaptation to renewable energy and utilizing solar power have attracted an exponentially increasing interest in interdisciplinary research domains as well as large-scale economies. However and due to many environmental factors, providing a reliable and fault tolerant control solution that can accomplish the main objectives of the power generation, even in the presence of faults, is an inevitable requirement. The main objective of this paper is to review the challenges of fault diagnosis of solar power systems and to present a hybrid and cloud-enabled architecture for a health monitoring system for photovoltaic (PV) farms, where both model-based and data-driven methods are utilized in a unified framework. The main focus of our proposed architecture is to explain the main components of a practical solution such that it can be easily integrated into currently available cloud technologies. This solution can significantly improve reliability of the new generations of power supply networks. The key enabler of our proposed solution is its modular structure; particularly, it can be augmented with any available or future control systems such as automated PV cleaning systems in order to provide a fully autonomous fault tolerant control solution that can (i) detect, (ii) localize, and (iii) rectify various types of faults in PV systems (such as shade faults). Furthermore, we discuss data privacy concerns and how our architecture addresses this issue.
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光伏系统混合健康监测研究
在过去的几年里,适应可再生能源和利用太阳能已经吸引了跨学科研究领域和大型经济体指数增长的兴趣。然而,由于许多环境因素,提供一个可靠的、容错的控制解决方案,即使在存在故障的情况下,也能实现发电的主要目标,是一个不可避免的要求。本文的主要目的是回顾太阳能发电系统故障诊断的挑战,并为光伏(PV)农场的健康监测系统提供一个混合和云支持的架构,其中基于模型和数据驱动的方法在统一的框架中使用。我们提出的体系结构的主要重点是解释实际解决方案的主要组件,以便它可以轻松地集成到当前可用的云技术中。该方案可显著提高新一代供电网络的可靠性。我们提出的解决方案的关键促成因素是其模块化结构;特别是,它可以与任何可用的或未来的控制系统(如自动化PV清洁系统)进行扩展,以提供完全自主的容错控制解决方案,可以(i)检测,(ii)定位,(iii)纠正PV系统中的各种类型的故障(如阴影故障)。此外,我们还讨论了数据隐私问题以及我们的架构如何解决这个问题。
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