Deep neural networks for energy load forecasting

Kasun Amarasinghe, Daniel L. Marino, M. Manic
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引用次数: 237

Abstract

Smartgrids of the future promise unprecedented flexibility in energy management. Therefore, accurate predictions/forecasts of energy demands (loads) at individual site and aggregate level of the grid is crucial. Despite extensive research, load forecasting remains to be a difficult problem. This paper presents a load forecasting methodology based on deep learning. Specifically, the work presented in this paper investigates the effectiveness of using Convolutional Neural Networks (CNN) for performing energy load forecasting at individual building level. The presented methodology uses convolutions on historical loads. The output from the convolutional operation is fed to fully connected layers together with other pertinent information. The presented methodology was implemented on a benchmark data set of electricity consumption for a single residential customer. Results obtained from the CNN were compared against results obtained by Long Short Term Memories LSTM sequence-to-sequence (LSTM S2S), Factored Restricted Boltzmann Machines (FCRBM), “shallow” Artificial Neural Networks (ANN) and Support Vector Machines (SVM) for the same dataset. Experimental results showed that the CNN outperformed SVR while producing comparable results to the ANN and deep learning methodologies. Further testing is required to compare the performances of different deep learning architectures in load forecasting.
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基于深度神经网络的能源负荷预测
未来的智能电网在能源管理方面具有前所未有的灵活性。因此,准确预测每个站点和整个电网的能源需求(负荷)是至关重要的。尽管进行了广泛的研究,但负荷预测仍然是一个难题。提出了一种基于深度学习的负荷预测方法。具体而言,本文提出的工作研究了使用卷积神经网络(CNN)在单个建筑层面进行能源负荷预测的有效性。所提出的方法在历史负载上使用卷积。卷积操作的输出与其他相关信息一起馈送到完全连接的层。所提出的方法是在单个住宅客户的电力消耗基准数据集上实施的。将CNN获得的结果与长短期记忆LSTM序列到序列(LSTM S2S)、因子受限玻尔兹曼机(FCRBM)、“浅”人工神经网络(ANN)和支持向量机(SVM)在同一数据集上获得的结果进行比较。实验结果表明,CNN优于SVR,同时产生与人工神经网络和深度学习方法相当的结果。需要进一步的测试来比较不同深度学习架构在负载预测中的性能。
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