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考虑风功率密度和风向特征的风能资源MCP评估方法
引用本文:叶林,陈小雨,靳晶新,李镓辰,滕景竹.考虑风功率密度和风向特征的风能资源MCP评估方法[J].电力系统自动化,2019,43(3):24-32.
作者姓名:叶林  陈小雨  靳晶新  李镓辰  滕景竹
作者单位:中国农业大学信息与电气工程学院;国网北京市电力公司电力科学研究院
基金项目:国家自然科学基金资助项目(51677188)
摘    要:在区域风电场风能资源评估方法中,传统的测量—关联—预测(MCP)方法未充分使用参考站的观测数据建立参考站和目标站之间风功率密度的映射关系,导致目标站长期风能资源的预测精度不高。在传统MCP组合方法的基础上,综合考虑参考站风功率密度和风向的特征组合,利用支持向量回归机(SVR)理论,建立2种不同的MCP模型,并将传统的考虑参考站风速、风向特征组合的MCP模型作为对比模型来验证所提出模型的有效性和准确性。实例研究表明,考虑参考站的风功率密度和风向特征输入的MCP模型对目标站风功率密度预测决定系数高于0.9,预测精度和适用性要明显优于传统的MCP模型,因而,该模型可用于评估区域风电场风能资源分布状况。

关 键 词:风电场    区域风能资源评估    风力发电    测量-关联-预测    支持向量回归机    风功率密度
收稿时间:2018/7/10 0:00:00
修稿时间:2018/12/24 0:00:00

Measure-Correlate-Predict Assessment Method of Wind Energy Resource Considering Wind Power Density and Wind Direction
YE Lin,CHEN Xiaoyu,JIN Jingxin,LI Jiachen and TENG Jingzhu.Measure-Correlate-Predict Assessment Method of Wind Energy Resource Considering Wind Power Density and Wind Direction[J].Automation of Electric Power Systems,2019,43(3):24-32.
Authors:YE Lin  CHEN Xiaoyu  JIN Jingxin  LI Jiachen and TENG Jingzhu
Affiliation:College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China,College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China,College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China,College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China and Electric Power Research Institute of State Grid Beijing Electric Power Company, Beijing 100075, China
Abstract:In the wind resources assessment methods of regional wind farms, the observation data of reference stations is not sufficiently utilized by traditional measure-correlate-predict (MCP) methods to establish the mapping relationship between the wind power density of reference stations and the target station. Therefore, the forecasting accuracy of the long-term wind energy resources at the target station is not high. Based on the traditional MCP combination theory, two different MCP models are established with support vector regression (SVR). In addition, the traditional MCP models considering the characteristics of wind speed and direction are taken as the benchmarks to verify the effectiveness and accuracy of the proposed models. Results show that the determination coefficient of the proposed MCP method for wind power density prediction of the target station is higher than 0.9, and the forecasting accuracy and feasibility are significantly improved in comparison with those of traditional MCP models. Therefore, the proposed model can be applied to assess the wind energy resources of regional wind farms.
Keywords:wind farm  regional wind energy resource assessment  wind power generation  measure-correlate-predict (MCP)  support vector regression (SVR)  wind power density
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