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A Survey of Computational Intelligence Techniques for Wind Power Uncertainty Quantification in Smart Grids

机译:智能电网风电不确定性量化计算智能技术调查

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摘要

The high penetration level of renewable energy is thought to be one of the basic characteristics of future smart grids. Wind power, as one of the most increasing renewable energy, has brought a large number of uncertainties into the power systems. These uncertainties would require system operators to change their traditional ways of decision-making. This article provides a comprehensive survey of computational intelligence techniques for wind power uncertainty quantification in smart grids. First, prediction intervals (PIs) are introduced as a means to quantify the uncertainties in wind power forecasts. Various PI evaluation indices, including the latest trends in comprehensive evaluation techniques, are compared. Furthermore, computational intelligence-based PI construction methods are summarized and classified into traditional methods (parametric) and direct PI construction methods (nonparametric). In the second part of this article, methods of incorporating wind power forecast uncertainties into power system decision-making processes are investigated. Three techniques, namely, stochastic models, fuzzy logic models, and robust optimization, and different power system applications using these techniques are reviewed. Finally, future research directions, such as spatiotemporal and hierarchical forecasting, deep learning-based methods, and integration of predictive uncertainty estimates into the decision-making process, are discussed. This survey can benefit the readers by providing a complete technical summary of wind power uncertainty quantification and decision-making in smart grids.
机译:可再生能源的高渗透水平被认为是未来智能电网的基本特征之一。风力电力是最大的可再生能源最大的之一,使大量的不确定性成为电力系统。这些不确定性将要求系统运营商改变其传统的决策方式。本文对智能电网中的风电不确定性量化提供了全面的计算智能技术。首先,引入预测间隔(PI)作为量化风力预测中的不确定性的方法。比较各种PI评估指标,包括综合评估技术的最新趋势。此外,基于计算智能的PI施工方法总结和分类为传统方法(参数)和直接PI施工方法(非参数)。在本文的第二部分,研究了将风力预测不确定性纳入电力系统决策过程的方法。综述了三种技术,即随机模型,模糊逻辑模型以及使用这些技术的不同电力系统应用。最后,未来的研究方向,例如时空和分层预测,基于深入的基于学习的方法以及预测不确定性估计的整合到决策过程中。通过提供智能电网的风电不确定性量化和决策的完整技术摘要,该调查可以使读者受益。

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