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Deep learning versus traditional machine learning methods for aggregated energy demand prediction

机译:深度学习与传统机器学习方法相结合的能源需求预测

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In this paper the more advanced, in comparison with traditional machine learning approaches, deep learning methods are explored with the purpose of accurately predicting the aggregated energy consumption. Despite the fact that a wide range of machine learning methods have been applied to probabilistic energy prediction, the deep learning ones certainly represent the state-of-the-art artificial intelligence methods with remarkable success in a spectrum of practical applications. In particular, the use of Multi Layer Perceptrons, recently enhanced with deep learning capabilities, is proposed. Furthermore, its performance is compared with the most commonly used machine learning methods, such as Support Vector Machines, Gaussian Processes, Regression Trees, Ensemble Boosting and Linear Regression. The analysis of the day-ahead energy prediction demonstrates that different prediction methods present significantly different levels of accuracy in the case of a challenging dataset that comprises an interesting mix of consumers, wind and solar generation. The results show that Multi Layer Perceptrons outperform all the eight methods used as a benchmark in this study.
机译:在本文中,与传统的机器学习方法相比,更高级的方法是探索深度学习方法,目的是准确预测总能耗。尽管已经将广泛的机器学习方法应用于概率能量预测,但深度学习方法肯定代表了最先进的人工智能方法,在一系列实际应用中取得了显著成功。特别地,提出了使用最近通过深度学习功能增强的多层感知器的使用。此外,将其性能与最常用的机器学习方法(例如支持向量机,高斯过程,回归树,集成提升和线性回归)进行了比较。对日前能源预测的分析表明,在具有挑战性的数据集(包括消费者,风能和太阳能的有趣组合)的情况下,不同的预测方法呈现出明显不同的准确性水平。结果表明,多层感知器的性能优于本研究中用作基准的所有八种方法。

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