PV power forecasting based on data-driven models: a review

IF 3.6 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
Priya Gupta, Rhythm Singh
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引用次数: 37

Abstract

ABSTRACT Accurate PV power forecasting techniques are a prerequisite for the optimal management of the grid and its stability. This paper presents a review of the recent developments in the field of PV power forecasting, mainly focusing on the literature which uses ML techniques. The ML techniques (sub-branch of artificial intelligence) are extensively used due to their ability to solve nonlinear and complex data structures. PV power forecasting can either be direct, or indirect, which involves solar irradiance forecast model, plane of array irradiance estimation model, and PV performance model. This paper presents a review of both of these pathways of PV power forecasting based on the proposed methodology, forecast horizons and the considered input parameters. In case of unavailability of historical PV power for a new PV plant and in case of failure of real-time data acquisition, indirect PV power forecasting can be a viable alternative. Although the performance ranking of various ML models is complicated and no model is universal, recent studies suggest that methodologies like deep neural networks and ensemble or hybrid models outperform conventional methods for short-term PV forecasting. Recent articles also present the various intelligent optimisation and data-preparation techniques to improve performance accuracy.
基于数据驱动模型的光伏功率预测研究综述
摘要准确的光伏功率预测技术是电网优化管理及其稳定性的先决条件。本文综述了光伏功率预测领域的最新发展,主要关注使用ML技术的文献。ML技术(人工智能的分支)由于其解决非线性和复杂数据结构的能力而被广泛使用。光伏功率预测可以是直接的,也可以是间接的,包括太阳辐照度预测模型、阵列平面辐照度估计模型和光伏性能模型。本文基于所提出的方法、预测范围和所考虑的输入参数,对这两种光伏功率预测途径进行了综述。如果新光伏电站的历史光伏功率不可用,并且实时数据采集失败,间接光伏功率预测可能是一种可行的替代方案。尽管各种ML模型的性能排名很复杂,也没有一个模型是通用的,但最近的研究表明,深度神经网络和集成或混合模型等方法在短期光伏预测方面优于传统方法。最近的文章还介绍了各种智能优化和数据准备技术,以提高性能准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Sustainable Engineering
International Journal of Sustainable Engineering GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
7.70
自引率
0.00%
发文量
19
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