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首页> 外文期刊>IEEE Transactions on Power Systems >Load forecasting using support vector Machines: a study on EUNITE competition 2001
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Load forecasting using support vector Machines: a study on EUNITE competition 2001

机译:使用支持向量机的负荷预测:EUNITE竞赛研究2001

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摘要

Load forecasting is usually made by constructing models on relative information, such as climate and previous load demand data. In 2001, EUNITE network organized a competition aiming at mid-term load forecasting (predicting daily maximum load of the next 31 days). During the competition we proposed a support vector machine (SVM) model, which was the winning entry, to solve the problem. In this paper, we discuss in detail how SVM, a new learning technique, is successfully applied to load forecasting. In addition, motivated by the competition results and the approaches by other participants, more experiments and deeper analyses are conducted and presented here. Some important conclusions from the results are that temperature (or other types of climate information) might not be useful in such a mid-term load forecasting problem and that the introduction of time-series concept may improve the forecasting.
机译:通常通过根据相对信息(例如气候和以前的负荷需求数据)构建模型来进行负荷预测。在2001年,EUNITE网络组织了一项旨在中期负荷预测(预测未来31天的每日最大负荷)的竞赛。在竞赛中,我们提出了一种支持向量机(SVM)模型来解决该问题,该模型是获奖作品。在本文中,我们将详细讨论如何将SVM(一种新的学习技术)成功应用于负荷预测。此外,受比赛结果和其他参赛者的影响,在此进行了更多的实验和更深入的分析。结果的一些重要结论是,温度(或其他类型的气候信息)可能对此类中期负荷预测问题没有帮助,并且引入时间序列概念可能会改善预测。

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