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A wind speed interval forecasting system based on constrained lower upper bound estimation and parallel feature selection

机译:基于约束下上限估计和并行特征选择的风速间隔预测系统

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Wind speed interval forecasting is being considered increasingly because it can provide more comprehensive information to address uncertainties in wind power generation. It helps ensure power quality, optimize power dispatching, and bring more economic and social benefits. Currently, the lower upper bound estimation (LUBE) approach is believed to provide outstanding performance in interval forecasting. However, considering the significant noise and irregular characteristics of wind speed, most existing LUBE models can either ineffectively learn the wind speed variation patterns behind the data or behave in a very unstable manner, leading to unsatisfactory results. Thus, this paper proposes a novel LUBE-based wind speed interval forecasting system based on an innovative parallel feature selection module for extracting the underlying vital historical variation patterns and a unique constrained LUBE training algorithm characterized by an amnesia operator to further guarantee the efficiency and stability of the LUBE training. The system effectiveness was demonstrated by performing experiments using two real datasets. The results show that the proposed system performs better than the naive, bootstrap, error analysis, and other LUBE models. It at least enhances the coverage width criterion by 1.8% and 6.8% for the two datasets, respectively. (C) 2021 Elsevier B.V. All rights reserved.
机译:风速间隔预测被认为是越来越多的,因为它可以提供更全面的信息来解决风力发电中的不确定性。它有助于确保电能质量,优化电力调度,并带来更经济和社会效益。目前,据信下限估计(润滑油)方法在间隔预测中提供出色的性能。然而,考虑到风速的显着噪声和不规则特性,大多数现有的润滑油模型可以无效地学习数据背后的风速变化模式或以非常不稳定的方式行事,导致结果不令人满意。因此,本文提出了一种基于创新的并行特征选择模块的新型润滑油的风速间隔预测系统,用于提取底层的重要历史变化模式和一个独特的受限润滑油训练算法,其特征是由Annesia运算符来进一步保证效率和稳定性润滑油训练。通过使用两个真实数据集进行实验来证明系统有效性。结果表明,该系统的表现优于天真,自动启动,误差分析和其他润滑油模型。对于两个数据集,至少增强了覆盖宽度标准1.8%和6.8%。 (c)2021 elestvier b.v.保留所有权利。

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