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Day-ahead electricity price forecasting using optimized multiple-regression of relevance vector machines

机译:使用相关向量机的优化多元回归进行日间电价预测

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In deregulated, auction-based, electricity markets price forecasting is an essential participant tool for developing bidding strategies. In this paper, a day-ahead intelligent forecasting method for electricity prices is presented. The proposed approach is comprised of two steps. In the first step, a set of two relevance vector machines (RVM) is employed where each one provides next day predictions for the price evolution. In the second step, a multiple regression model comprised of the two relevance vector machines is built and the regression coefficients are computed using genetic based optimization. The performance of the proposed approach is tested on a set of electricity price hourly data from four different seasons and compared to those obtained by each of the relevance vector machines. The results clearly demonstrate, in terms of mean square error, the superiority of the proposed method over each individual RVM.
机译:在放松管制的拍卖基础上,电力市场价格预测是制定投标策略的重要参与者工具。本文提出了一种电价超前智能预测方法。提议的方法包括两个步骤。第一步,使用两个相关向量机(RVM)的集合,其中每个提供向量的第二天价格预测。第二步,建立由两个相关向量机组成的多元回归模型,并使用基于遗传的优化方法计算回归系数。在一组来自四个不同季节的电价每小时数据上测试了所提出方法的性能,并将其与每个相关性向量机获得的数据进行了比较。结果均方误差清楚地表明了所提出方法相对于每个单独RVM的优越性。

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