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Day-ahead building-level load forecasts using deep learning vs. traditional time-series techniques

机译:使用深度学习与传统时间序列技术进行的超前建筑级别负荷预测

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摘要

Load forecasting problems have traditionally been addressed using various statistical methods, among which autoregressive integrated moving average with exogenous inputs (ARIMAX) has gained the most attention as a classical time-series modeling method. Recently, the booming development of deep learning techniques make them promising alternatives to conventional data-driven approaches. While deep learning offers exceptional capability in handling complex non-linear relationships, model complexity and computation efficiency are of concern. A few papers have explored the possibility of applying deep neural networks to forecast time-series load data but only limited to system-level or single-step building-level forecasting. This study, however, aims at filling in the knowledge gap of deep learning-based techniques for day-ahead multi-step load forecasting in commercial buildings. Two classical deep neural network models, namely recurrent neural network (RNN) and convolutional neural network (CNN), have been proposed and formulated under both recursive and direct multi-step manners. Their performances are compared with the Seasonal ARIMAX model with regard to accuracy, computational efficiency, generalizability and robustness. Among all of the investigated deep learning techniques, the gated 24h CNN model, performed in a direct multi-step manner, proves itself to have the best performance, improving the forecasting accuracy by 22.6% compared to that of the seasonal ARIMAX.
机译:传统上,已经使用各种统计方法解决了负荷预测问题,其中,作为经典时间序列建模方法,带有外部输入的自回归综合移动平均线(ARIMAX)受到了最多的关注。最近,深度学习技术的蓬勃发展使它们成为传统数据驱动方法的有希望的替代方法。尽管深度学习在处理复杂的非线性关系方面提供了卓越的功能,但模型的复杂性和计算效率却令人担忧。一些论文探索了将深度神经网络应用于时间序列负荷数据预测的可能性,但仅限于系统级或单步建筑物级预测。但是,本研究的目的是填补基于深度学习的技术在商业建筑中日前多步负荷预测中的知识空白。提出了两种经典的深度神经网络模型,即递归神经网络(RNN)和卷积神经网络(CNN),并以递归和直接多步方式进行了阐述。在准确性,计算效率,可概括性和鲁棒性方面,将它们的性能与Seasonal ARIMAX模型进行了比较。在所有研究的深度学习技术中,以直接多步方式执行的门控24h CNN模型证明了自己的最佳性能,与季节性ARIMAX相比,预测准确性提高了22.6%。

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