基于sd - lssvr的分解集成方法在水电用电量预测中的应用

Shuai Wang, L. Tang, Lean Yu
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引用次数: 10

摘要

由于水电具有明显的季节性特征,本研究尝试提出一种基于季节分解(SD)的最小二乘支持向量回归(LSSVR)集成学习模型用于水电消纳预测。在基于sd - lssvr的分解集成模型中,首先将原始水电消纳序列分解为趋势周期、季节因子和不规则分量。然后利用LSSVR对三个分量进行独立预测。最后,将这三个分量的预测结果与另一个LSSVR相结合,形成一个集合结果作为最终预测。实验结果表明,该方法在具有季节性和非线性的时间序列预测中具有较好的应用前景,在水平精度和方向精度上都优于我们研究中列出的所有其他基准方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SD-LSSVR-Based Decomposition-and-Ensemble Methodology with Application to Hydropower Consumption Forecasting
Due to the distinct seasonal characteristics of hydropower, this study tries to propose a seasonal decomposition (SD) based least squares support vector regression (LSSVR) ensemble learning model for hydropower consumption forecasting. In the SD-LSSVR-based decomposition and ensemble model, the original hydropower consumption series are first decomposed into trend cycle, seasonal factor and irregular component. Then the LSSVR is used to predict the three different components independently. Finally, these prediction results of the three components are combined with another LSSVR to formulate an ensemble result as the final prediction. Experimental results reveal that the proposed novel method is very promising for time series forecasting with seasonality and nonlinearity for that it outperforms all the other benchmark methods listed in our study in both level accuracy and directional accuracy.
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