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A Hybrid Probabilistic Wind Power Prediction Based on An Improved Decomposition Technique and Kernel Density Estimation

机译:基于改进分解技术和核密度估计的混合概率风电功率预测

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The high uncertainty of non-stationary wind power time series is a challenging issue in optimal operation and planning of power systems. An efficient way to show wind power uncertainty is to use high-quality prediction intervals (PIs). This paper proposes a hybrid probabilistic wind power prediction model based on improved complete ensemble empirical mode decomposition with adaptive noise (ICEEMDAN) technique, extreme learning machine (ELM) and kernel density estimation (KDE). First, using ICEEMDAN, the original wind power time series is decomposed to components with different frequency ranges. Then, sample entropy (SampEn) technique is employed to group components to three main time series trend, cycle, and noise with diverse complexity levels. The first two components are deterministically predicted while the noise component is probabilistically predicted using the combination of KDE technique and direct plug-in as a well-known bandwidth selection technique. The lower and upper bounds of final PI are found using the summation of lower and upper bounds of noise component with trend and cycle predicted points. The efficacy of the proposed prediction model is depicted by generating reliable and sharp PIs for real wind power datasets in Canada and comparing with other conventional PI construction approaches.
机译:非静止风电时间序列的高不确定性是电力系统最佳运行和规划中的具有挑战性的问题。显示风能不确定性的有效方法是使用高质量的预测间隔(PIS)。本文提出了一种基于改进的完整集合经验分解,具有自适应噪声(ICEEMDAN)技术,极端学习机(ELM)和内核密度估计(KDE)的混合概率风电预测模型。首先,使用Iceemdan,原始风电时间序列被分解为具有不同频率范围的组件。然后,采用样品熵(X幅)技术将组件分组到三个主要时间序列趋势,周期和具有不同复杂程度的噪声。第一两个组件在概率地预测的同时使用KDE技术的组合和直插式作为众所周知的带宽选择技术来预测噪声分量。使用具有趋势和循环预测点的噪声分量的下限和上限的总和,找到最终PI的下限和上限。所提出的预测模型的功效是通过在加拿大的真实风电数据集产生可靠和尖锐的PIS并与其他传统的PI施工方法进行比较来描述。

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