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Hour-ahead solar PV power forecasting using SVR based approach

机译:使用基于SVR的方法预测每小时的太阳能光伏电源预测

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The use of solar photovoltaic (PV) in power generation has grown in the last decade. Unlike the traditional power generation methods (i.e. oil and gas), the solar output power is fluctuating and uncertain, mainly due to clouds movement and other weather factors. Therefore, in order to have a stable power grid, the electricity utilities need to forecast the solar output power, so they can prepare ahead adequately. In this work, hour-ahead solar PV power forecasting is performed using Support Vector Regression (SVR), Polynomial Regression and Lasso. The implemented regression models were tested under different feature selection schemes. These features include weather conditions (i.e. sky condition, temperature, etc.), power generated in the last few hours, day and time information. Based on the comparative results obtained, the SVR forecasting model outperforms the other two models in terms of accuracy.
机译:在过去十年中,使用太阳能光伏(PV)在发电中生长。与传统发电方法(即油气)不同,太阳能输出功率波动和不确定,主要是由于云运动和其他天气因素。因此,为了具有稳定的电网,电力公用设施需要预测太阳能输出功率,因此它们可以充分准备。在这项工作中,使用支持向量回归(SVR),多项式回归和套索来执行每小时的太阳能光伏电源预测。在不同的特征选择方案下测试了实现的回归模型。这些功能包括天气状况(即天空条件,温度等),在过去几个小时,日期和时间信息中产生的电力。基于获得的比较结果,SVR预测模型在准确性方面优于其他两个模型。

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