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Ensemble Forecasting of Monthly Electricity Demand Using Pattern Similarity-Based Methods

机译:使用基于模式相似性的方法进行每月电力需求的集合预测

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This work presents ensemble forecasting of monthly electricity demand using pattern similarity-based forecasting methods (PSFMs). PSFMs applied in this study include k-nearest neighbor model, fuzzy neighborhood model, kernel regression model, and general regression neural network. An integral part of PSFMs is a time series representation using patterns of time series sequences. Pattern representation ensures the input and output data unification through filtering a trend and equalizing variance. Two types of ensembles are created: heterogeneous and homogeneous. The former consists of different type base models, while the latter consists of a single-type base model. Five strategies are used for controlling a diversity of members in a homogeneous approach. The diversity is generated using different subsets of training data, different subsets of features, randomly disrupted input and output variables, and randomly disrupted model parameters. An empirical illustration applies the ensemble models as well as individual PSFMs for comparison to the monthly electricity demand forecasting for 35 European countries.
机译:本工作介绍了使用基于模式相似性的预测方法(PSFMS)的月度电力需求的集合预测。本研究中应用的PSFM包括k最近邻模型,模糊邻域模型,内核回归模型和一般回归神经网络。 PSFMS的组成部分是使用时间序列序列模式的时间序列表示。模式表示通过过滤趋势和均衡方差来确保输入和输出数据统一。创建了两种类型的合奏:异质和均匀。前者由不同类型的基础模型组成,而后者由单型基础模型组成。五种策略用于控制各种方法的多样性。使用不同的训练数据子集,不同的特征子集,随机中断的输入和输出变量以及随机中断的模型参数来生成多样性。实证例证适用于集合模型以及单独的PSFMS,以便与35个欧洲国家的每月电力需求相比进行比较。

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