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A hybrid model for forecasting wind speed and wind power generation

机译:预测风速和风力发电的混合模型

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Forecasting of wind speed and wind power generation is indispensable for the effective operation of a wind farm and the optimal management of revenue and risks. Hybrid forecasting of time series data is considered to be a potentially effective alternative compared with the conventional single forecasting modeling approaches such as autoregressive integrated moving average (ARIMA) and artificial neural network (ANN). Hybrid forecasting typically consists of a classic prediction model for the linear component of a time series and a nonlinear forecast model for the nonlinear component. This paper presents a hybrid approach combining ARIMA and radial basis function neural network for forecasting wind speed and wind power. Results obtained by a case study show that the proposed method is suitable for short-term forecasting applications.
机译:风速和风力发电的预测对于风电场的有效运行和收入和风险的最佳管理是必不可少的。与传统的单一预测建模方法(如自回归综合移动普通(ARIMA)和人工神经网络(ANN))相比,时间序列数据的混合预测被认为是潜在有效的替代方案。混合预测通常由时间序列的线性分量和非线性分量的非线性预测模型组成的经典预测模型。本文介绍了ARIMA和径向基函数神经网络的混合方法,用于预测风速和风力。通过案例研究获得的结果表明,该方法适用于短期预测应用。

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