利用GK2A图像的有效云分数对韩国发电厂的6小时光伏发电进行预测

IF 6 2区 工程技术 Q2 ENERGY & FUELS
JungHae Heur , Yong-Sang Choi , Hwayon Choi , Yoon-Kyoung Lee , Jin Hur , Hyunsu Kim , Jae In Song
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引用次数: 0

摘要

为了应对气候变化和对可再生能源日益增长的需求,光伏发电的准确预测变得越来越重要。本研究引入了一种混合模型,通过整合基于卫星的云运动向量(CMV)和多元线性回归(MLR)技术,改善了韩国分布式光伏电站的短期光伏发电预测。为了量化云的影响,采用有效云分数(ECF)来提高与光伏功率的相关性。使用为光流估计而设计的卷积神经网络(CNN)预测未来6小时的云运动。根据韩国10个地区31个光伏电站的实际数据进行验证,结果表明,在包括白天和夜间在内的所有交货时间内,5分钟标准化平均绝对误差(nMAE)保持在2%以下。虽然这项研究的重点是韩国,但结合CMV和ecf的方法提供了一个可应用于不同地理和气象条件的通用框架。通过利用卫星数据来评估云的光学特性,这种方法显示了提高短期光伏发电预测准确性的巨大潜力,特别是在地面观测基础设施有限的地区。这种方法可以实现光伏电站所在的所有地点的电力预测,从而有助于全球电网的稳定,并促进可再生能源的整合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
6-hour prediction of photovoltaic power using effective cloud fraction from GK2A imagery over South Korean power plants
Accurate prediction of photovoltaic (PV) power generation is becoming increasingly critical in response to climate change and the growing demand for renewable energy. This study introduces a hybrid model that improves short-term PV power prediction for distributed PV plants across South Korea by integrating satellite-based cloud motion vectors (CMV) with multiple linear regression (MLR) techniques. To quantify the impact of cloud, the effective cloud fraction (ECF) is applied to improve the correlation with PV power. Cloud movements up to six hours ahead are predicted using a convolutional neural network (CNN) designed for optical flow estimation. Validation against actual data from 31 PV plants across 10 regions in South Korea shows that the 5-minute normalized mean absolute error (nMAE) remains below 2% across all lead times, including both daytime and nighttime periods. Although this study focuses on South Korea, the methodology —combining CMV and ECF—provides a generalizable framework that can be applied to diverse geographical and meteorological conditions. This approach demonstrates significant potential to enhance the accuracy of short-term PV power predictions, particularly in regions with limited ground-based observational infrastructure, by leveraging satellite data to assess the optical properties of clouds. This methodology enables power prediction across all locations where PV power plants are situated, thereby contributing to global grid stability and facilitating the integration of renewable energy sources.
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来源期刊
Solar Energy
Solar Energy 工程技术-能源与燃料
CiteScore
13.90
自引率
9.00%
发文量
0
审稿时长
47 days
期刊介绍: Solar Energy welcomes manuscripts presenting information not previously published in journals on any aspect of solar energy research, development, application, measurement or policy. The term "solar energy" in this context includes the indirect uses such as wind energy and biomass
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