光伏系统的自主智能监测:深入的多学科综述

IF 8 2区 材料科学 Q1 ENERGY & FUELS
M. Aghaei, M. Kolahi, A. Nedaei, N. S. Venkatesh, S. M. Esmailifar, A. M. Moradi Sizkouhi, A. Aghamohammadi, A. K. V. Oliveira, A. Eskandari, P. Parvin, J. Milimonfared, V. Sugumaran, R. Rüther
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引用次数: 0

摘要

本研究对大型光伏(PV)发电厂的自主监测和分析进行了全面的多学科回顾,利用使能技术,即人工智能(AI)、机器学习(ML)、深度学习(DL)、物联网(IoT)、无人机(UAV)和大数据分析(BDA),旨在自动化光伏系统的整个状态监测过程。自主监测与分析是集成各种技术、设备、系统和平台,进一步提高光伏监测精度,从而提高光伏系统性能、可靠性和使用寿命的新概念。本文综述了光伏电站自主监测与分析的发展趋势、最新研究进展和未来展望。此外,本研究确定了光伏系统自主和智能状态监测的主要障碍和研究路线,以解决当前和未来实现光伏太瓦(TW)转型的挑战。综合文献综述表明,光伏电站自主监测与分析领域发展迅速,能够显著提高光伏系统的效率和可靠性。它还可以为光伏电站操作员和维护人员带来显着的好处,例如减少停机时间和维护任务中对人工操作员的需求,以及增加产生的能量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Autonomous Intelligent Monitoring of Photovoltaic Systems: An In-Depth Multidisciplinary Review

Autonomous Intelligent Monitoring of Photovoltaic Systems: An In-Depth Multidisciplinary Review

This study presents a comprehensive multidisciplinary review of autonomous monitoring and analysis of large-scale photovoltaic (PV) power plants using enabling technologies, namely artificial intelligence (AI), machine learning (ML), deep learning (DL), internet of things (IoT), unmanned aerial vehicle (UAV), and big data analytics (BDA), aiming to automate the entire condition monitoring procedures of PV systems. Autonomous monitoring and analysis is a novel concept for integrating various techniques, devices, systems, and platforms to further enhance the accuracy of PV monitoring, thereby improving the performance, reliability, and service life of PV systems. This review article covers current trends, recent research paths and developments, and future perspectives of autonomous monitoring and analysis for PV power plants. Additionally, this study identifies the main barriers and research routes for the autonomous and smart condition monitoring of PV systems, to address the current and future challenges of enabling the PV terawatt (TW) transition. The holistic review of the literature shows that the field of autonomous monitoring and analysis of PV plants is rapidly growing and is capable to significantly improve the efficiency and reliability of PV systems. It can also have significant benefits for PV plant operators and maintenance staff, such as reducing the downtime and the need for human operators in maintenance tasks, as well as increasing the generated energy.

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来源期刊
Progress in Photovoltaics
Progress in Photovoltaics 工程技术-能源与燃料
CiteScore
18.10
自引率
7.50%
发文量
130
审稿时长
5.4 months
期刊介绍: Progress in Photovoltaics offers a prestigious forum for reporting advances in this rapidly developing technology, aiming to reach all interested professionals, researchers and energy policy-makers. The key criterion is that all papers submitted should report substantial “progress” in photovoltaics. Papers are encouraged that report substantial “progress” such as gains in independently certified solar cell efficiency, eligible for a new entry in the journal''s widely referenced Solar Cell Efficiency Tables. Examples of papers that will not be considered for publication are those that report development in materials without relation to data on cell performance, routine analysis, characterisation or modelling of cells or processing sequences, routine reports of system performance, improvements in electronic hardware design, or country programs, although invited papers may occasionally be solicited in these areas to capture accumulated “progress”.
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