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Short-term Photovoltaic Output Forecasting Model for Economic Dispatch of Power System Incorporating Large-scale Photovoltaic Plant

机译:采用大型光伏厂的电力系统经济调度短期光伏输出预测模型

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A combined prediction method based on ensemble empirical mode decomposition (EEMD) and support vector machine (SVM) is proposed to tackle with the problem of the short-term forecast of photovoltaic system (PVs) hourly output a day ahead. Weather types are divided into abnormal day (weather changed suddenly) and normal day. By the proposed method, firstly, the history data for hourly output of PVs is decomposed into a series of components by using EEMD method. Considering different factors for different type of weather, different models are built and different kernel functions and parameters are chosen to deal with each component of the decomposed data by using SVM. Simulation results show that the proposed classification modeling ideas and EEMD-SVM combination forecasting method enable that the mean absolute percentage error results for the abnormal days is decreased by 5%, and for normal day is decreased by 3% comparing with the traditional SVM method and Back Propagation (BP) neural network method respectively.
机译:提出了一种基于集合经验模式分解(EEMD)和支持向量机(SVM)的组合预测方法,以解决一天前一天的光伏系统(PVS)小时输出的短期预测问题。天气类型分为异常日(突然发生变化)和正常的一天。通过所提出的方法,首先,通过使用EEMD方法将PVS的每小时输出的历史数据分解成一系列分量。考虑到不同类型天气的不同因素,建立不同的模型,选择不同的内核功能和参数来使用SVM处理分解数据的每个组件。仿真结果表明,拟议的分类建模思路和EEMD-SVM组合预测方法使得异常天数的平均绝对百分比误差率下降5%,与传统的SVM方法相比,正常日降低3%回到传播(BP)神经网络方法。

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