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Random forest ensemble of support vector regression models for solar power forecasting

机译:支持向量回归模型的随机森林集成用于太阳能发电预测

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To mitigate the uncertainty of variable renewable resources, two off-the-shelf machine learning tools are deployed to forecast the solar power output of a solar photovoltaic system. The support vector machines generate the forecasts and the random forest acts as an ensemble learning method to combine the forecasts. The common ensemble technique in wind and solar power forecasting is the blending of meteorological data from several sources. In this study though, the present and the past solar power forecasts from several models, as well as the associated meteorological data, are incorporated into the random forest to combine and improve the accuracy of the day-ahead solar power forecasts. The performance of the combined model is evaluated over the entire year and compared with other combining techniques.
机译:为了减轻可变可再生资源的不确定性,已部署了两个现成的机器学习工具来预测太阳能光伏系统的太阳能输出。支持向量机生成预测,而随机森林充当组合预测的整体学习方法。风能和太阳能发电预测中的通用集成技术是混合来自多个来源的气象数据。但是,在本研究中,将来自几种模型的当前和过去的太阳能预测以及相关的气象数据纳入随机森林中,以合并和提高日前太阳能预测的准确性。对合并模型的性能进行了全年评估,并与其他合并技术进行了比较。

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