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Pattern similarity-based methods for short-term load forecasting - Part 2: Models

机译:基于模式相似度的短期负荷预测方法-第2部分:模型

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摘要

Models for the short-term load forecasting based on the similarity of patterns of seasonal cycles are presented. They include: kernel estimation-based model, nearest neighbor estimation-based models and pattern clustering-based models such as classical clustering methods and new artificial immune systems. The problem of construction of the pattern similarity-based forecasting models and the elements and procedures of the model space are characterized. Details of the model learning and optimization using deterministic and stochastic methods such as evolutionary algorithms and tournament searching are described. Sensitivities of the models to changes in parameter values and their robustness to noisy and missing data are examined. The comparative studies with other popular forecasting methods such as ARIMA, exponential smoothing and neural networks are performed. The advantages of the proposed models are their simplicity and a small number of parameters to be estimated, which implies simple optimization procedures. The models can successfully deal with missing data. The increased number of the model outputs does not complicate their structure. The local nature of the models leads to their simplification and accuracy improvement. The proposed models are strong competitors for other popular univariate methods, which was confirmed in the simulation studies. (C) 2015 Elsevier B.V. All rights reserved.
机译:提出了基于季节性周期模式相似性的短期负荷预测模型。它们包括:基于核估计的模型,基于最近邻估计的模型和基于模式聚类的模型,例如经典聚类方法和新的人工免疫系统。描述了基于模式相似度的预测模型的构建问题以及模型空间的要素和过程。描述了使用确定性和随机方法(例如进化算法和锦标赛搜索)进行模型学习和优化的细节。研究了模型对参数值变化的敏感性及其对嘈杂数据和丢失数据的鲁棒性。与其他流行的预测方法(如ARIMA,指数平滑和神经网络)进行了比较研究。所提出的模型的优点是它们的简单性和估计的少量参数,这意味着简单的优化程序。该模型可以成功处理丢失的数据。模型输出数量的增加不会使其结构复杂化。模型的局部性导致了它们的简化和准确性的提高。拟议的模型是其他流行的单变量方法的有力竞争者,这在仿真研究中得到了证实。 (C)2015 Elsevier B.V.保留所有权利。

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