基于模糊聚类与Copula的场景特征自适应风速预测模型OA
A Scenario-adaptive Wind Speed Prediction Model Based on Fuzzy Clustering and Copula Functions
针对多变量风速预测中存在的特征选择复杂、计算效率低及模型泛化能力不足等问题,提出一种融合场景划分与最优Copula选择的自适应风速预测模型.构建了"场景聚类-动态变量选择-滚动预测"的三阶段协同机制:首先,采用模糊C均值聚类算法将多维气象数据划分为具有相似特征的天气场景;其次,运用Copula函数构建多变量相关性模型,依欧氏距离筛选最优Copula函数,结合综合相关系数,实现场景自适应的动态变量选择;最终,设计分场景LSTM预测模型与实时数据滚动更新策略,通过动态匹配场景特征与预测模型提升预测精度.以欧洲某地区公开的天气数据进行验证表明,所提出的方法模型在风速预测准确性上优于单一场景预测模型.具体表现为,均方根误差降低3.6%,标准化误差降低5.2%,平均绝对百分比误差降低4.2%,决定系数提高4.5%.
Aiming at the problems of complex feature selection,low computational efficiency,and insufficient model generalization ability in multivariate wind speed forecasting,this paper proposes an adaptive wind speed forecasting model integrating scenario division and optimal Copula selection.A three-stage collaborative mechanism of"scenario clustering-dynamic variable selection-rolling forecasting"is constructed.First,the multidimensional meteorological data are divided into weather scenarios with similar characteristics using the fuzzy C-means clustering algorithm.Second,a multivariate correlation model is constructed using the Copula function,and the optimal Copula function is selected based on the Euclidean distance.Combined with the comprehensive correlation coefficient,scenario-adaptive dynamic variable selection is realized.Finally,a scenario-based LSTM forecasting model and a real-time data rolling update strategy are designed.The prediction accuracy is improved by dynamically matching the scenario characteristics with the forecasting model.Verification using publicly available weather data from a region in Europe shows that the proposed method outperforms single-scenario forecasting models in terms of wind speed forecasting accuracy.Specifically,the root mean square error is reduced by 3.6%,the normalized error is reduced by 5.2%,the mean absolute percentage error is reduced by 4.2%,and the coefficient of determination is increased by 4.5%.
王永真;唐豪;韩特;李嘉宇;韩恺;冶兆年
北京理工大学 能源与动力工程系,北京市 海淀区 100081||北京理工大学 重庆创新中心,重庆市 渝北区 401120北京理工大学 能源与动力工程系,北京市 海淀区 100081北京理工大学 管理学院,北京市 海淀区 100081清华大学能源互联网创新研究院,北京市 海淀区 100084北京理工大学 能源与动力工程系,北京市 海淀区 100081||北京理工大学 重庆创新中心,重庆市 渝北区 401120北京理工大学 能源与动力工程系,北京市 海淀区 100081
信息技术与安全科学
风速预测长短期记忆网络(LSTM)Copula函数场景自适应模糊C均值聚类
wind speed forecastinglong short-term memory(LSTM)networkCopula function-based scenario adaptationfuzzy C-Means clustering
《全球能源互联网》 2026 (1)
24-35,12
国家自然科学基金项目(52006114). National Natural Science Foundation of China(52006114).
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