水准点(测量)
计算机科学
期限(时间)
人工智能
聚类分析
模糊逻辑
深度学习
师(数学)
风力发电
序列(生物学)
机器学习
工程类
数学
物理
算术
大地测量学
量子力学
生物
电气工程
遗传学
地理
作者
Lin Ye,Hua Dai,Ming Pei,Peng Lu,Jinlong Zhao,Mei Chen,Bo Wang
标识
DOI:10.1109/tia.2022.3146224
摘要
The accuracy of short-term wind power forecasting (WPF) can be improved by effective mining of numerical weather prediction data. In this article, a novel short-term WPF approach is proposed by combining wave division (WD), improved grey wolf optimizer based on fuzzy C-means clusters (IGFCM), and Seq2Seq model with attention mechanism based on long short-term memory model (LSTMS), named the WD-IGFCM-LSTMS model. Based on the fluctuation trend, the wind speed sequences of NWP are divided into a series of waves. Six fluctuation features that reflect the shape characteristics are extracted to quantify the partitioned waves. A new strategy is proposed to improve the global searching ability of the GWO to select the initial clustering center of FCM more effectively. The Seq2Seq deep learning model based on LSTM, named LSTMS, is applied for wave-oriented forecasting. The proposed approach outperforms the traditional point-to-point forecasting and realizes continuous sequence forecasting. The simulation results demonstrate that the WD-IGFCM-LSTMS model can perform better than other benchmark forecasting models.
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