基于长短期记忆集合方法的短期风电预测

G. Marulanda, J. Cifuentes, Antonio Bello, J. Reneses
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引用次数: 0

摘要

在过去的几十年里,风力发电厂因其环境和经济效益而受到越来越多的关注。然而,风力资源本身具有不可预测性,给电网的稳定安全运行带来了重大挑战。在此背景下,文献中已经报道了各种计算和统计方法来进行风力发电的短期预测,并且仍然需要更有效的策略。在本文中,提出了一个混合框架,包括统计预处理阶段和基于增强深度学习(DL)的策略,以解决现有预测方法在预测多季节风电时间序列方面的局限性。综合方法采用适当的变换,得到数据的正态分布,并消除风电时间序列中的多重季节性。随后,它补充了一组堆叠的长短期记忆(LSTM)递归神经网络(RNN)模型,用于一年中的每个月。该方法使用2008-2019年西班牙电力市场的实际每小时风电数据进行验证。通过与已建立的基于dl的模型的对比分析,表明了该预测方法的优越性。实验评估在风力预测前1-3小时进行。关键词:长短期记忆;深度学习;风电预测;递归神经网络;时间序列分解
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-Term Wind Power Forecasting by a Long Short Term Memory Ensemble Approach
Wind power plants have attracted increasing attention during the last decades due to their environmental and economic benefits. However, the wind resource is inherently unpredictable, bringing important challenges to the stable and safe operation of the power grid. In this context, various computational and statistical approaches have been reported in the literature to perform short-term forecasting of wind power generation, and more efficient strategies are still demanded. In this paper, a hybrid framework that includes a statistical pre-processing stage with an enhanced deep learning (DL)-based strategy is proposed to address the limitations of reported forecasting methodologies to predict multi-seasonal wind power time series. The integrated approach applies a suitable transformation to obtain a normal distribution of data and removes multiple seasonalities in wind power time series. Subsequently, it supplements a set of stacked Long Short Term Memory (LSTM) Recurrent Neural Network (RNN) models for each month of the year. The proposed approach is validated using real hourly wind power data from the Spanish electricity market for the period 2008-2019. A comparative analysis with a well-established DL-based model shows the superior performance of the proposed forecasting method. The experimental evaluation is conducted for 1-3 hours ahead of wind power predictions. Keywords—Long Short Term Memory; Deep Learning; Wind Power Forecasting; Recurrent Neural Networks; Time Series Decomposition
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