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Short-term probabilistic forecasting of wind energy resources using the enhanced ensemble method

机译:利用增强集成法的风能资源短期概率预测

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Unlike other traditional energy resources, wind power outputs depend on natural wind resources that vary over space and time. Accurate wind power forecasting can reduce the burden of balancing energy equilibrium in electrical power systems. In this paper, we propose the short-term probabilistic forecasting of wind energy resources using the enhanced ensemble method. The enhanced ensemble forecasting methods are grouped into two main categories: temporal ensemble and spatial ensemble forecasting. The temporal ensemble forecasting is implemented by autoregressive integrated moving average with explanatory variable model, polynomial regression with time-series data, and analog ensemble for a probabilistic approach. The spatial ensemble forecasting is implemented by geostatistical model and interpolation with geographical property data. In addition, the stochastic approach, analog ensemble is applied to reduce the uncertainty in wind power forecasting and use of Numerical Weather Prediction models for accurate wind power forecasting is considered. We conduct stochastic wind power forecasting using practical data of Jeju power system and evaluate the system reliability on wind power generation variations. As a result, the proposed model shows better performances than single models, while at the same time providing probabilistic forecasts. Based on these forecasts, the grid operators can identify critical operating time points to prepare for problems that can occur in the system due to wind power variations in advance.
机译:与其他传统能源不同,风能输出取决于随时间和空间变化的自然风能。准确的风能预测可以减轻电力系统中平衡能量平衡的负担。在本文中,我们提出使用增强的集成方法对风能资源进行短期概率预测。增强的集成预测方法分为两大类:时间集成和空间集成预测。通过具有解释性变量模型的自回归综合移动平均值,具有时间序列数据的多项式回归以及概率方法的模拟集合,可以实现时间集合预报。空间集合预报是通过地统计学模型和地理属性数据的插值实现的。此外,采用随机方法,模拟集成以减少风电预测中的不确定性,并考虑使用数值天气预报模型进行准确的风电预测。我们使用济州电力系统的实际数据进行随机风力发电预测,并评估系统在风力发电变化方面的可靠性。结果,所提出的模型表现出比单个模型更好的性能,同时提供了概率预测。基于这些预测,电网运营商可以提前确定关键的运行时间点,以应对因风能变化而可能在系统中发生的问题。

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