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Analysis and enhanced prediction of the Spanish Electricity Network through Big Data and Machine Learning techniques

机译:通过大数据和机器学习技术分析和增强西班牙电网预测

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Electricity demand is shown to steadily increase in the last few years, and it is one of the key aspects of living standards and quantifying welfare effects. However, the irregularity of electricity demand is one of the main problems in this field. Therefore, it is important to accurately anticipate future expenditures in order to optimize energy generation and to avoid unexpected wastes. As a result, we developed Machine Learning models to predict electricity demand. In particular, our study has been performed using data of the Spanish Electricity Network from 2007 to 2019. To this end, we propose the implementation of a set of Machine Learning techniques using various frameworks. In particular, we implemented six different prediction models: Linear Regression, Regression Trees, Gradient Boosting Regression, Random Forests, Multi-layer Perceptron, and three types of recurrent neural networks. Our experimentation shows promising results in all cases, since our models provides better prediction than the one estimated by the Spanish Electricity Network with an improvement of 12% in the worst case and up to 37% for the best predictor, which turned out to be the Gated Recurrent Unit neural network. (C) 2021 Elsevier Inc. All rights reserved.
机译:在过去几年中,电力需求表明稳步增加,它是生活标准和量化福利效应的关键方面之一。然而,电力需求的不规则是该领域的主要问题之一。因此,重要的是准确地预测未来的支出,以优化能量产生并避免意外废物。因此,我们开发了机器学习模型以预测电力需求。特别是,我们的研究已经使用2007年至2019年的西班牙电网数据进行了执行。为此,我们建议使用各种框架实现一组机器学习技术。特别是,我们实施了六种不同的预测模型:线性回归,回归树,渐变升压回归,随机林,多层的射击和三种类型的经常性神经网络。我们的实验表明,所有情况下都有希望的结果,因为我们的模型提供了比西班牙电网估计的更好的预测,在最坏的情况下提高12%,最佳预测因子高达37%,这结果已成为门控复发单位神经网络。 (c)2021 Elsevier Inc.保留所有权利。

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