A STL decomposition-based deep neural networks for offshore wind speed forecasting

IF 1.5 Q4 ENERGY & FUELS
Yanxia Ou, Li Xu, J. Wang, Yang Fu, Yuan Chai
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引用次数: 1

Abstract

Accurate prediction of offshore wind speed is of great significance for optimizing operation strategies of offshore wind power. Here, a novel hybrid algorithm based on seasonal-trend decomposition with loess (STL) and auto-regressive integrated moving average (ARIMA)- long short-term memory neural network (LSTM) is proposed to eliminate seasonal factors in wind speed and fully exert the advantages of ARIMA processing linear series and LSTM processing nonlinear series. Moreover, wind speed are comprehensively preprocessed and statistically analyzed. Then, we handle information leakage problem. Finally, STL-ARIMA-LSTM model is applied to wind speed forecasting on 3 time-scales. The proposed model has the highest accuracy and resolution for the trend and periodicity of wind speed, and the lag problem of very shortterm wind speed prediction can be solved. This study also shows that when predicting offshore wind speed, we can handle the strong intermittence, volatility and outliers in wind speed by gradually adjusting time scale.
基于STL分解的深度神经网络海上风速预报
准确预测海上风速对优化海上风电运行策略具有重要意义。本文提出了一种基于黄土季节趋势分解(STL)和自回归综合移动平均(ARIMA)-长短期记忆神经网络(LSTM)的混合算法,以消除风速中的季节因素,充分发挥ARIMA处理线性序列和LSTM处理非线性序列的优势。并对风速进行了综合预处理和统计分析。然后,我们处理信息泄露问题。最后,将STL-ARIMA-LSTM模式应用于3个时间尺度的风速预报。该模型对风速的趋势和周期性具有最高的精度和分辨率,解决了极短期风速预测的滞后问题。研究还表明,在预测海上风速时,可以通过逐步调整时间尺度来处理风速的强间断性、波动性和异常值。
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来源期刊
Wind Engineering
Wind Engineering ENERGY & FUELS-
CiteScore
4.00
自引率
13.30%
发文量
81
期刊介绍: Having been in continuous publication since 1977, Wind Engineering is the oldest and most authoritative English language journal devoted entirely to the technology of wind energy. Under the direction of a distinguished editor and editorial board, Wind Engineering appears bimonthly with fully refereed contributions from active figures in the field, book notices, and summaries of the more interesting papers from other sources. Papers are published in Wind Engineering on: the aerodynamics of rotors and blades; machine subsystems and components; design; test programmes; power generation and transmission; measuring and recording techniques; installations and applications; and economic, environmental and legal aspects.
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