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One-day ahead PV power forecasts using 3D Wavelet Decomposition

机译:使用3D小波分解提前一天进行光伏发电预测

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The paper presents a spatio-temporal forecasting for the photovoltaic (PV) power generation by combining the three-dimensional wavelet transform (3D-DWT) and the Least Square Support Vector Machines (LS-SVM) to deal with historical time series data of distributed PV plants in both spatial and temporal domain. The proposed forecasting method applies the wavelet decomposition to the PV power data collected from several PV installations in a three-dimensional space taking into account the spatial distribution of the PV locations and the related PV output power in a defined time framework. The wavelet decomposition output is then used as input for a forecasting model based on the LS-SVM to predict the solar PV power of each plant. A case study is presented using hourly time series of 9 PV installations located in the Greek island of Rhodes in order to predict the power generation of each individual PV plant at 24 hours-ahead time horizon. The forecast performance of the proposed approach is investigated by error metrics and compared with a prediction model based on simple LS-SVM to quantify the improvements achieved by the proposed method.
机译:通过结合三维小波变换(3D-DWT)和最小二乘支持向量机(LS-SVM)处理分布式的历史时间序列数据,提出了光伏发电的时空预测时空领域的光伏电站。所提出的预测方法将小波分解应用于在三维空间中从多个光伏装置收集的光伏功率数据,其中考虑了光伏位置的空间分布以及在定义的时间框架内的相关光伏输出功率。然后,将小波分解输出用作基于LS-SVM的预测模型的输入,以预测每个电厂的太阳能PV功率。案例研究使用位于希腊罗得岛的9个光伏装置的每小时时间序列进行了介绍,以预测每个24小时前的每个光伏电站的发电量。通过误差度量研究该方法的预测性能,并将其与基于简单LS-SVM的预测模型进行比较,以量化该方法所实现的改进。

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