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Forecasting Building Energy Consumption with Deep Learning: A Sequence to Sequence Approach

机译:深入学习的预测建筑能源消耗:序列方法的序列

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Energy Consumption has been continuously increasing due to the rapid expansion of high-density cities, and growth in the industrial and commercial sectors. To reduce the negative impact on the environment and improve sustainability, it is crucial to efficiently manage energy consumption. Internet of Things (IoT) devices, including widely used smart meters, have created possibilities for energy monitoring as well as for sensor based energy forecasting. Machine learning algorithms commonly used for energy forecasting such as feedforward neural networks are not well-suited for interpreting the time dimensionality of a signal. Consequently, this paper uses Recurrent Neural Networks (RNN) to capture time dependencies and proposes a novel energy load forecasting methodology based on sample generation and Sequence-to-Sequence (S2S) deep learning algorithm. The S2S architecture that is commonly used for language translation was adapted for energy load forecasting. Experiments focus on Gated Recurrent Unit (GRU) based S2S models and Long Short-Term Memory (LSTM) based S2S models. All models were trained and tested on one building-level electrical consumption dataset, with five-minute incremental data. Results showed that, on average, the GRU S2S models outperformed LSTM S2S, RNN S2S, and Deep Neural Network models, for short, medium, and long-term forecasting lengths.
机译:由于高密度城市的快速扩张,能源消耗一直不断增加,以及工商界的增长。为了减少对环境的负面影响,提高可持续性,有效地管理能源消耗至关重要。物联网(物联网)设备(包括广泛使用的智能电表)为能量监测的可能性以及基于传感器的能量预测产生了创造的可能性。通常用于诸如前馈神经网络的能量预测的机器学习算法不受很好地解释信号的时间维度。因此,本文使用经常性神经网络(RNN)来捕获时间依赖性,并提出基于样本生成和序列到序列(S2S)深学习算法的新型能量负荷预测方法。通常用于语言翻译的S2S架构适用于能量负荷预测。实验专注于基于门控复发单元(GRU)的S2S模型和基于长短期存储器(LSTM)的S2S模型。所有型号均受到培训并在一个建筑级电气消耗数据集上进行测试,具有五分钟的增量数据。结果表明,平均而言,GRU S2S型号优于LSTM S2S,RNN S2和深神经网络模型,用于短,介质和长期预测长度。

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