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Intra-hour Forecasting for a 50 MW Photovoltaic System in Uruguay: Baseline Approach

机译:乌拉圭50 MW光伏系统的小时内预测:基线方法

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The increased penetration of photovoltaic (PV) generation introduces new challenges for the stability of electricity grids. In this work, machine learning (ML) techniques were implemented to forecast PV power production up to 1-hour ahead with a 10-minute granularity. Three different input combinations were utilised: Model 1 (M1) using the AC power only, Model 2 (M2) using the elevation angle (α), azimuth angle (Φ) and AC power and Model 3 (M3) using α, Φ, the AC power and satellite observations (SAT) aiming to improve the forecasting performance. Historical PV operational data were used for the training and validation stages of intra-hour PV forecasting models for time t + 10 to 60 minutes ahead. The results obtained over the test set period (15% of the data, i.e. ≈ 110 days) have shown that M2 exhibits the best-performance with a normalised root mean square error (nRMSE) in the range of 7.6% to 14.2%, whereas the skill score (SS) ranged between 6.5% and 30.9% for the 10- to 60-minute ahead, respectively.
机译:光伏发电(PV)的不断普及为电网的稳定性提出了新的挑战。在这项工作中,实施了机器学习(ML)技术,以10分钟的粒度预测了多达1个小时的光伏发电量。使用了三种不同的输入组合:仅使用交流电源的模型1(M1),使用仰角(α),方位角(Φ)和交流电源的模型2(M2),以及使用α,Φ,交流电源和卫星观测(SAT)旨在提高预测性能。 PV历史数据用于小时内PV预测模型的训练和验证阶段,时间为t + 10到60分钟。在测试设置期间(数据的15%,即≈110天)获得的结果表明,M2表现出最佳性能,归一化均方根误差(nRMSE)在7.6%至14.2%的范围内,而前10分钟到60分钟的技能得分(SS)分别在6.5%和30.9%之间。

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