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Binding data mining and expert knowledge for one-day-ahead prediction of hourly global solar radiation

机译:绑定数据挖掘和专家知识,用于一天前预测每小时全球太阳辐射

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A new methodology to predict one-day-ahead hourly solar global radiation is proposed in this paper. This information is very useful to address many real problems; for instance, energy-market decision making is one of the contexts where that information is essential to ensure the correct integration of grid-connected photovoltaic solar systems. The developed methodology is based on the contribution of different experts to obtain improved data-driven models when included in the data mining process. The modelling phase, when models are induced and new patterns can be identified, is the one that most benefits from that expert knowledge. In this case, it is achieved by combining clustering, regression and classification methods that exploit meteorological data (directly measured or predicted by weather services). The developed models have been embedded in a prediction system that offers reliable forecasts on next-day hourly global solar radiation. As a result of the automatic learning process including the knowledge of different experts, 14 different types of day were identified based on the shape of hourly solar radiation throughout a day. The conventional definitions of types of days, that usually consider 4 options, are updated with this new proposal. The next-day prediction of hourly global radiation is obtained in two phases: in the first one, the next-day type is obtained from among the 14 possible types of day; in the second one, values of hourly global radiation are obtained using the centroid of the predicted type of day and extraterrestrial solar radiation. The relative root mean square error of the prediction model is less than 20%, meaning a significant reduction compared to previous models. Moreover, the proposed models can be recognized in the context of eXplainable Artificial Intelligence.
机译:在本文提出了一种预测一天前一天的每小时太阳能辐射的新方法。这些信息对于解决许多真正的问题非常有用;例如,能源市场决策是该信息对于确保电网连接的光伏太阳能系统的正确集成至关重要的情况之一。开发的方法基于不同专家在数据挖掘过程中获取改进的数据驱动模型的贡献。建模阶段,当诱导模型时,可以识别新图案,是来自该专家知识中大多数好处的效益。在这种情况下,通过组合利用气象数据的聚类,回归和分类方法(直接测量或通过天气服务预测)来实现。开发的模型已嵌入在预测系统中,在一天的每小时全球太阳辐射提供可靠的预测。由于自动学习过程包括不同专家的知识,基于整天的每小时太阳辐射的形状识别了14种不同类型的一天。通常考虑4个选项的日期类型的传统定义是通过这一新提案更新的。在两个阶段获得每小时全球辐射的下一天预测:在第一个阶段中,从14种可能的一天中获得下一天的类型;在第二个中,使用预测类型的一天和外星太阳辐射的质心来获得每小时全局辐射的值。预测模型的相对根均方误差小于20%,这意味着与之前的模型相比显着减少。此外,所提出的模型可以在可解释的人工智能中识别。

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