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Wind Farm Power Prediction Based on Wind Speed and Power Curve Models

机译:基于风速和功率曲线模型的风电场功率预测

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Accurate prediction of wind farm power is essential for increasing wind penetration in the electricity grid. It also aids the power system operators in planning unit commitment, economic scheduling, and dispatch. In this paper, combined wind farm power prediction models have been built based on wind speed prediction models and power curve models. The wind speed prediction models have been built using nonlinear autoregressive models with and without external variables. The wind turbine power curve has been modeled using parametric and nonparametric models. Parametric models are built using four- and five-parameter logistic expression, whose parameters are solved using particle swarm optimization (PSO) and differential evolution (DE). Nonparametric models were built based on data mining algorithms. Multistep prediction model for wind power forecasting has been developed for very short-term forecasting of wind power. Real-time data obtained from Sotavento Galicia Plc. has been used for testing the proposed model.
机译:对风电场功率的准确预测对于增加电网中的风渗透至关重要。它还可帮助电力系统运营商计划单位承诺,经济调度和调度。本文基于风速预测模型和功率曲线模型,建立了组合的风电场功率预测模型。风速预测模型是使用带有或不带有外部变量的非线性自回归模型构建的。风力涡轮机功率曲线已使用参数模型和非参数模型建模。参数模型使用四参数和五参数逻辑表达式构建,其参数使用粒子群优化(PSO)和差分进化(DE)求解。基于数据挖掘算法建立了非参数模型。针对风电的短期预测,已经开发了用于风电预测的多步预测模型。从Sotavento Galicia Plc获得的实时数据。已用于测试建议的模型。

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