A Review of Solar Forecasting Techniques and the Role of Artificial Intelligence

Solar Pub Date : 2024-02-22 DOI:10.3390/solar4010005
Khadija Barhmi, Chris Heynen, S. Golroodbari, W. V. van Sark
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Abstract

Solar energy forecasting is essential for the effective integration of solar power into electricity grids and the optimal management of renewable energy resources. Distinguishing itself from the existing literature, this review study provides a nuanced contribution by centering on advancements in forecasting techniques. While preceding reviews have examined factors such as meteorological input parameters, time horizons, the preprocessing methodology, optimization, and sample size, our study uniquely delves into a diverse spectrum of time horizons, spanning ultrashort intervals (1 min to 1 h) to more extended durations (up to 24 h). This temporal diversity equips decision makers in the renewable energy sector with tools for enhanced resource allocation and refined operational planning. Our investigation highlights the prominence of Artificial Intelligence (AI) techniques, specifically focusing on Neural Networks in solar energy forecasting, and we review supervised learning, regression, ensembles, and physics-based methods. This showcases a multifaceted approach to address the intricate challenges associated with solar energy predictions. The integration of Satellite Imagery, weather predictions, and historical data further augments precision in forecasting. In assessing forecasting models, our study describes various error metrics. While the existing literature discusses the importance of metrics, our emphasis lies on the significance of standardized datasets and benchmark methods to ensure accurate evaluations and facilitate meaningful comparisons with naive forecasts. This study stands as a significant advancement in the field, fostering the development of accurate models crucial for effective renewable energy planning and emphasizing the imperative for standardization, thus addressing key gaps in the existing research landscape.
太阳能预测技术和人工智能作用综述
太阳能预测对于太阳能有效并入电网和优化可再生能源管理至关重要。有别于现有文献,本综述研究以预测技术的进步为中心,做出了细致入微的贡献。前面的综述研究了气象输入参数、时间跨度、预处理方法、优化和样本大小等因素,而我们的研究则独特地深入探讨了时间跨度的多样性,从超短间隔(1 分钟到 1 小时)到更长的持续时间(长达 24 小时)。这种时间多样性为可再生能源领域的决策者提供了加强资源分配和完善运营规划的工具。我们的研究强调了人工智能(AI)技术的重要性,特别是在太阳能预测方面的神经网络,并回顾了监督学习、回归、集合和基于物理的方法。这展示了一种多方面的方法来应对与太阳能预测相关的复杂挑战。卫星图像、天气预测和历史数据的整合进一步提高了预测的精确度。在评估预测模型时,我们的研究描述了各种误差指标。虽然现有文献讨论了指标的重要性,但我们的重点在于标准化数据集和基准方法的重要性,以确保准确评估,并促进与天真预测进行有意义的比较。这项研究是该领域的一项重大进展,它促进了对有效的可再生能源规划至关重要的精确模型的开发,并强调了标准化的必要性,从而弥补了现有研究领域的关键差距。
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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