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Prediction Algorithm Learner Selection for European Day-Ahead Electricity Prices

机译:欧洲日前电价的预测算法和学习者选择

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The prediction of day-ahead electricity prices with higher accuracy is always helpful for the market players of the power exchange. This study was intended in the first place to find out the best time series prediction method for the selected 14 European countries. The test results of four time-series methods show that the next day prices were more in line with the previous day prices in 87% of the selected countries; Later, a classification approach is followed by 33 different features of each country to answer the question of which method would be the best for the other countries, that were not studied in this paper, would be? As a result, the support vector machine algorithm results in 57% accuracy in classifying an unknown European country to determine the best prediction method. Therefore, this paper focuses now on two correlated studies to find out the best time series prediction methods and a classification approach for selected countries.
机译:对日间电价的准确预测始终对电力交易所的市场参与者很有帮助。这项研究首先旨在为所选的14个欧洲国家找出最佳的时间序列预测方法。四种时间序列方法的测试结果表明,在选定的87%的国家中,第二天的价格与前一天的价格更加一致;后来,每个国家的33种不同特征遵循一种分类方法,以回答哪种方法最适合其他国家(本文未研究)的问题?结果,在对一个未知的欧洲国家进行分类以确定最佳预测方法时,支持向量机算法的准确性为57%。因此,本文现在将重点放在两项相关研究上,以找出针对所选国家/地区的最佳时间序列预测方法和分类方法。

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