引用本文:马欣,吴涵,苗安康,袁越,李振杰,郝思鹏.基于DCC-GARCH的海上风电场出力空间相关性分析及预测[J].电力自动化设备,2023,43(6):
MA Xin,WU Han,MIAO Ankang,YUAN Yue,LI Zhenjie,HAO Sipeng.Spatial correlation analysis and prediction of offshore wind farm output based on DCC-GARCH[J].Electric Power Automation Equipment,2023,43(6):
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基于DCC-GARCH的海上风电场出力空间相关性分析及预测
马欣1, 吴涵2, 苗安康1, 袁越1, 李振杰3, 郝思鹏4
1.河海大学 能源与电气学院,江苏 南京 211100;2.南京工程学院 智能电网产业技术研究院,江苏 南京 211167;3.电力规划设计总院,北京 100120;4.南京工程学院 电力工程学院,江苏 南京 211167
摘要:
多座海上风电场出力之间存在一定的空间相关性,构建合适的风电出力相关性模型有助于提高风电出力的预测精度。针对空间相关性具有时变特性以及难以描述和衡量,提出基于动态条件相关广义自回归条件异方差(DCC-GARCH)模型的海上风电场出力相关性模型。利用多维正态分布和DCC-GARCH模型拟合多风电场的皮尔森相关系数,求解随时间变化的风电场出力空间相关系数,在准确表征空间相关性大小的同时体现空间相关性的时序变化特征。基于DCC-GARCH模型建立多座风电场出力动态空间相关性短期预测模型。基于江苏省盐城市海上风电场数据进行算例分析,结果验证了所提方法的合理性和有效性。
关键词:  空间相关性  时序特征  DCC-GARCH  空间相关性影响因素  空间相关性预测
DOI:10.16081/j.epae.202211029
分类号:TM614
基金项目:江苏省高等学校基础科学(自然科学)研究项目(22KJD470003)
Spatial correlation analysis and prediction of offshore wind farm output based on DCC-GARCH
MA Xin1, WU Han2, MIAO Ankang1, YUAN Yue1, LI Zhenjie3, HAO Sipeng4
1.College of Energy and Electrical Engineering, Hohai University, Nanjing 211100, China;2.Smart Grid Industry Technology Research Institute, Nanjing Institute of Technology, Nanjing 211167, China;3.China Electric Power Planning & Engineering Institute, Beijing 100120, China;4.School of Electric Power Engineering, Nanjing Institute of Technology, Nanjing 211167, China
Abstract:
There exists certain spatial correlation between the outputs of multiple offshore wind farms, it is helpful for improving the prediction accuracy of wind power output to construct suitable wind power output correlation model. Aiming at that the spatial correlation has time-varying characteristic and is difficult to describe and measure, an output correlation model of offshore wind farm is proposed based on dynamic conditional correlation generalized auto regressive conditional heteroskedasticity(DCC-GARCH) model. The multi-dimensional normal distribution and DCC-GARCH model are used to fit Pearson correlation coefficient of multiple wind farms, the spatial correlation coefficient of wind farm output which varies with the time is solved, which accurately represents the size of spatial correlation while reflects the time-varying characteristic of spatial correlation. A short-term prediction model of output dynamic spatial correlation for multiple wind farms is built based on DCC-GARCH model. Case analysis is carried out based on the data of offshore wind farms in Yancheng City, Jiangsu Province, and results verify the rationality and effectiveness of the proposed method.
Key words:  spatial correlation  temporal characteristics  DCC-GARCH  influencing factors of spatial correlation  spatial correlation prediction

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