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Forecasting power output of photovoltaic system based on weather classification and support vector machine

机译:基于天气分类和支持向量机的光伏发电系统功率预测

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摘要

Due to the growing demand on renewable energy, photovoltaic (PV) generation systems have increased considerably in recent years. However, the power output of PV systems is affected by different weather conditions. Accurate forecasting of PV power output is important for the system reliability and promoting large scale PV deployment. This paper proposes algorithms to forecast power output of PV systems based upon weather classification and support vector machine. In the process, the weather conditions are firstly divided into four types which are clear sky, cloudy day, foggy and rainy day. One-day-ahead PV power output forecasting model for single station is derived based on the weather forecasting data and historically actual power output data as well as the principle of Support Vector Machine (SVM). After applying it into a PV station in China (the capability is 20 kW), results show the proposed forecasting model for grid-connected photovoltaic systems is effective and promising.
机译:由于对可再生能源的需求不断增长,近年来光伏(PV)发电系统已大大增加。但是,光伏系统的输出功率会受到不同天气条件的影响。准确预测光伏发电量对于系统可靠性和促进大规模光伏部署至关重要。提出了一种基于天气分类和支持向量机的光伏发电系统功率预测算法。在此过程中,首先将天气状况分为晴天,阴天,大雾天和雨天四种类型。基于天气预报数据和历史实际功率输出数据以及支持向量机(SVM)的原理,得出了单站的提前一天光伏发电量预测模型。将其应用到中国的光伏电站(容量为20 kW)中后,结果表明所提出的并网光伏发电系统预测模型是有效且有前途的。

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