|
|
Short-term Wind Speed Forecasting Based on EMD-RBFNN |
Yin Dongyang, Sheng Yifa, Li Yongsheng, Xie Qutian |
College of Electrical Engineering, University of South China, Hengyang, Hu’nan 421001 |
|
|
Abstract Aiming at the nonlinear and nonstationary of wind speed sequences, a novel method based on empirical mode decomposition (EMD) and radial basis function neural network (RBFNN) is proposed to improve the precision of short-term wind speed forecasting. The wind speed data is decomposed into a series of intrinsic mode function (IMF) components with similar time-frequency characteristics and stationary by using EMD to achieve the stationary of the wind speed data. The IMF components are predicted by RBFNN based on the time-frequency characteristics of different IMF components. The orthogonal least squares (OLS) is adopted to minimize the error rate. Finally, the each prediction results of IMF-RBFNN are restructured to obtain the last prediction result. The short-term wind speed forecasting system based on interactive GUI is designed and implemented. Forecasting results show that the EMD-RBFNN combined model can improve the forecasting accuracy of short term wind speed and is of a certain practical value.
|
Published: 11 June 2014
|
|
|
|
[1] 国家电力监管标准化委员会.GB/T 19963-2011 风电场接入电力系统技术规定[S].北京:中华人民共和国质量监督检验检疫总局,2011. [2] 南晓强,李群湛,邱大强.基于符号时间序列法的风电功率波动分析与预测[J]. 中国电力, 2013,46(6):75-79. [3] LOUKA P,GALANIS G,SIEBERT N, KARINIOTAKIS G, KATSAFADOS P, PYTHAROULIS I, KALLOS G. Improvements in wind speed forecasts for wind power prediction purposes using Kalman filtering[J]. Journal of Wind Engineering and Industrial Aerodynamics, 2008,96(12):2348-2362. [4] 栗然,王粤,肖进永.基于经验模式分解的风电场短期风速预测模型[J].中国电力, 2009,42(9):77-80. [5] 鲍永胜,吴振升.基于SVM 的时间序列短期风速预测[J].中国电力, 2011,44(9)61-64. [6] GUO ZH H, ZHAO W G, LU H Y, WANG J ZH. Multi-step forecasting for wind speed using a modied EMD-based artificial fineural network model [J].Renewable Energy, 2012,37:241-249. [7] BARTHELMIE R, GIEBEL G, BADGER J. Short-term forecasting of wind speeds in the offshore environment[C]: Copenhagen Offshore Wind Conference. Copenhagen: University of Copehagen, 24-35,2005. [8] 蔡凯,谭伦农,李春林,等.时间序列与神经网络法相结合的短期风速预测[J].电网技术, 2008,32(8):82-90. [9] 赵辉,李斌,李彪,等.基于小波变换的ARMA- LSSVM短期风速预测[J].中国电力, 2012,45(4):78-81. [10] 杨琦,张建华,王向峰,等. 基于小波-神经网络的风速及风力发电量预测[J].电网技术, 2009,33(17):44-48. [11] 叶林,刘鹏.基于经验模态分解和支持向量机的短期风电功率组合预测模型[J].中国电机工程学报, 2011,31(31):102-108. [12] 王孔森,盛戈皞,孙旭日,等. 基于径向基神经网络的输电线路动态容量在线预测[J].电网技术, 2013,37(6):1719-1725. |
|
|
|