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首页> 外文期刊>Advances in Mathematical Physics >Developing a Local Neurofuzzy Model for Short-Term Wind Power Forecasting
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Developing a Local Neurofuzzy Model for Short-Term Wind Power Forecasting

机译:开发用于短期风能预测的局部神经模糊模型

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摘要

Large scale integration of wind generation capacity into power systems introduces operational challenges due to wind power uncertainty and variability. Therefore, accurate wind power forecast is important for reliable and economic operation of the power systems. Complexities and nonlinearities exhibited by wind power time series necessitate use of elaborative and sophisticated approaches for wind power forecasting. In this paper, a local neurofuzzy (LNF) approach, trained by the polynomial model tree (POLYMOT) learning algorithm, is proposed for short-term wind power forecasting. The LNF approach is constructed based on the contribution of local polynomial models which can efficiently model wind power generation. Data from Sotavento wind farm in Spain was used to validate the proposed LNF approach. Comparison between performance of the proposed approach and several recently published approaches illustrates capability of the LNF model for accurate wind power forecasting.
机译:由于风力不确定性和可变性,将风力发电能力大规模集成到电力系统中给运营带来了挑战。因此,准确的风力发电预测对于电力系统的可靠和经济运行非常重要。风电时间序列表现出的复杂性和非线性要求对风电预测使用详尽而复杂的方法。本文提出了一种基于多项式模型树(POLYMOT)学习算法训练的局部神经模糊(LNF)方法,用于短期风电功率预测。 LNF方法是基于局部多项式模型的贡献而构建的,该模型可以有效地模拟风力发电。来自西班牙Sotavento风电场的数据被用来验证所提出的LNF方法。所提出的方法与最近发布的几种方法的性能之间的比较说明了LNF模型进行准确的风电功率预测的能力。

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