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Solar power forecasting with sparse vector autoregression structures

机译:稀疏矢量自回归结构的太阳能发电预测

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The strong growth that is felt at the level of photovoltaic (PV) power generation craves for more sophisticated and accurate forecasting methods that could be able to support its proper integration into the energy distribution network. Through the combination of the vector autoregression model (VAR) with the least absolute shrinkage and selection operator (LASSO) framework, a set of sparse VAR structures can be obtained in order to capture the dynamic of the underlying system. The robust and efficient alternating direction method of multipliers (ADMM), well known for its great ability dealing with high-dimensional data (scalability and fast convergence), is applied to fit the resulting LASSO-VAR variants. This spatial-temporal forecasting methodology has been tested, using 1-hour and 15-minutes resolution, for 44 microgeneration units time-series located in a city in Portugal. A comparison with the conventional autoregressive (AR) model is performed leading to an improvement up to 11%.
机译:在光伏(PV)发电水平上感到强劲的增长渴望寻求更复杂,更准确的预测方法,这些方法可以支持将其正确集成到能量分配网络中。通过将向量自回归模型(VAR)与最小绝对收缩和选择算子(LASSO)框架相结合,可以获得一组稀疏VAR结构,以捕获底层系统的动态。鲁棒且高效的乘法器交替方向方法(ADMM)以其处理高维数据(可伸缩性和快速收敛)的强大能力而闻名,适用于生成的LASSO-VAR变体。对于位于葡萄牙某城市的44个微型发电机组,已使用1小时15分钟的分辨率对这种时空预测方法进行了测试。与传统的自回归(AR)模型进行了比较,从而提高了11%。

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