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基于ASD-KDE算法的超短期风电出力区间预测
引用本文:张坤,马培华,崔志强,田星,齐彩娟,郭宁.基于ASD-KDE算法的超短期风电出力区间预测[J].防灾减灾工程学报,2018(4):14-20.
作者姓名:张坤  马培华  崔志强  田星  齐彩娟  郭宁
作者单位:国网宁夏电力有限公司经济技术研究院宁夏银川 750004;河北省仪器仪表工程技术研究中心 河北承德 067000
摘    要:为提高含风电场电网经济调度能力并降低电力系统规划决策的保守性,提出了基于原子稀疏分解-核密度( atom sparse decomposition-kernel density estimation, ASD-KDE)算法的超短期风电出力区间预测模型。该模型应用ASD计算出较为精确的点预测值,并采用粒子群优化正交匹配追踪算法提高原子分解过程的预测实时性。同时针对风电序列不同区域所具有的线性及非平稳特性,构建了衰减线性原子库及Gabor原子库,以期达到自适应分解的效果。再通过对原子分量和残余分量分别进行自预测和BP( back propagation) 神经网络预测,获得点预测值。在此基础上,通过对历史风电数据不同区间的划分,构建一维核密度估计模型,逐步滚动获取预测值的置信区间,从而降低了环境变化对预测结果的影响。实际风电场算例验证了所提方法的自适应性、快速性及有效性。

关 键 词:风电预测  原子稀疏分解  BP神经网络  一维核密度估计  置信区间

Ultra - short term wind power output interval forecast modelbased on ASD - KDE algorithm
ZHANG Kun,Ma Peihu,CUI Zhiqiang,TIAN Xing,QI Caijuan,GUO Ning.Ultra - short term wind power output interval forecast modelbased on ASD - KDE algorithm[J].Journal of Disaster Prevent and Mitigation Eng,2018(4):14-20.
Authors:ZHANG Kun  Ma Peihu  CUI Zhiqiang  TIAN Xing  QI Caijuan  GUO Ning
Institution:Economic & Technology Research Institute of State Grid Ningxia Power Co , Ltd , Yinchuan Ningxia 750004 , China;Hebei Instrumentation Engineering Technology Research Center, Chengde Hebei 067000 , China
Abstract:In order to improve the economic operation ability of windpower system and reduce theconservatism of planning and decision making for power system, the ultra-short term wind power out-put interval forecast model is proposed based on atomic sparse decomposition and kernel density esti-mation ( ASD-KDE ) algorithm. ASD is applied to calculate the more accurate point prediction values ,and particle swarm optimization algorithm and orthogonal matching pursuit algorithm are combined toimprove the real-time performance of atomic sparse decomposition process. Considering the linearand non-stationary characteristics of wind power sequence in different regions , the damped liner dic-tionary and Gabor dictionary are constructed to reach the self adaptive decomposition, The atomiccomponent and the residual component are separately made self prediction and back propagation( BP)neural network prediction, then the point prediction values can be obtained. And based on that, one- dimensional kernel density estimation model is constructed according to the division of different in-tervals of wind power data, then the confidence interval for the predicted value can be gained step bystep, thus the impact of environmental changes on the prediction results can be reduced. The algo-rithm example verifies the adaptivity, rapidity and effectiveness of this method for the actual windpower farm.
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