Enhancing microgrid energy management through solar power uncertainty mitigation using supervised machine learning

Q2 Energy
Rasha Elazab, Ahmed Abo Dahab, Maged Abo Adma, Hany Abdo Hassan
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引用次数: 0

Abstract

This study addresses the inherent challenges associated with the limited flexibility of power systems, specifically emphasizing uncertainties in solar power due to dynamic regional and seasonal fluctuations in photovoltaic (PV) potential. The research introduces a novel supervised machine learning model that focuses on regression methods specifically tailored for advanced microgrid energy management within a 100% PV microgrid, i.e. a microgrid system that is powered entirely by solar energy, with no reliance on other energy sources such as fossil fuels or grid electricity. In this context, “PV” specifically denotes photovoltaic solar panels that convert sunlight into electricity. A distinctive feature of the model is its exclusive reliance on current solar radiation as an input parameter to minimize prediction errors, justified by the unique advantages of supervised learning. The performance of four well-established supervised machine learning models—Neural Networks (NN), Gaussian Process Regression (GPR), Support Vector Machines (SVM), and Linear Regression (LR)—known for effectively addressing short-term uncertainty in solar radiation, is thoroughly evaluated. Results underscore the superiority of the NN approach in accurately predicting solar irradiance across diverse geographical sites, including Cairo, Egypt; Riyadh, Saudi Arabia; Yuseong-gu, Daejeon, South Korea; and Berlin, Germany. The comprehensive analysis covers both Global Horizontal Irradiance (GHI) and Direct Normal Irradiance (DNI), demonstrating the model’s efficacy in various solar environments. Additionally, the study emphasizes the practical implementation of the model within an Energy Management System (EMS) using Hybrid Optimization of Multiple Electric Renewables (HOMER) software, showcasing high accuracy in microgrid energy management. This validation attests to the economic efficiency and reliability of the proposed model. The calculated range of error, as the median error for cost analysis, varies from 2 to 6%, affirming the high accuracy of the proposed model.

利用监督机器学习缓解太阳能发电的不确定性,加强微电网能源管理
本研究探讨了与电力系统有限灵活性相关的固有挑战,特别强调了由于光伏(PV)潜力的动态区域和季节性波动而导致的太阳能发电的不确定性。该研究引入了一种新型监督机器学习模型,该模型侧重于回归方法,专门为 100% 光伏微电网内的先进微电网能源管理量身定制,即完全由太阳能供电的微电网系统,不依赖化石燃料或电网电力等其他能源。在这里,"PV "特指将太阳光转化为电能的光伏太阳能电池板。该模型的一个显著特点是完全依赖当前的太阳辐射作为输入参数,以最大限度地减少预测误差,这也是有监督学习的独特优势所证明的。对四种成熟的监督机器学习模型--神经网络(NN)、高斯过程回归(GPR)、支持向量机(SVM)和线性回归(LR)--的性能进行了全面评估。结果表明,在准确预测埃及开罗、沙特阿拉伯利雅得、韩国大田市儒城区和德国柏林等不同地理位置的太阳辐照度方面,NN 方法具有优势。综合分析涵盖了全球水平辐照度(GHI)和直接法线辐照度(DNI),证明了该模型在各种太阳环境中的有效性。此外,研究还强调了该模型在能源管理系统(EMS)中的实际应用,该系统采用了多种电力可再生能源混合优化(HOMER)软件,展示了微电网能源管理的高精确度。这一验证证明了所提模型的经济效益和可靠性。作为成本分析的中位误差,计算误差范围从 2% 到 6% 不等,证明了所提模型的高准确性。
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
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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