论文标题
级联的深层混合模型,用于多步家庭能源消耗预测
Cascaded Deep Hybrid Models for Multistep Household Energy Consumption Forecasting
论文作者
论文摘要
可持续性需要提高能源效率,而最小的废物则需要提高能源效率。因此,未来的电力系统应提供高水平的灵活性IIN控制能源消耗。对于能源行业的决策者和专业人员而言,总体和各个站点水平的未来能源需求/负载的精确预测非常重要。预测能源负载对于能源提供者和客户变得更有优势,使他们能够建立有效的生产策略以满足需求。这项研究介绍了两个混合级联模型,以预测不同分辨率中的多步户家庭功耗。第一个模型将固定小波变换(SWT)集成为有效的信号预处理技术,卷积神经网络和长期记忆(LSTM)。第二种混合模型将SWT与基于自发的神经网络结构结合在一起,名为Transformer。使用时频分析方法(例如多步预测问题中的SWT)的主要限制是它们需要顺序信号,在多步骤预测应用中有问题的信号重建问题。级联模型可以通过使用回收输出有效地解决此问题。实验结果表明,与现有的多步电消耗预测方法相比,提出的混合模型实现了出色的预测性能。结果将为更准确和可靠的家庭用电量预测铺平道路。
Sustainability requires increased energy efficiency with minimal waste. The future power systems should thus provide high levels of flexibility iin controling energy consumption. Precise projections of future energy demand/load at the aggregate and on the individual site levels are of great importance for decision makers and professionals in the energy industry. Forecasting energy loads has become more advantageous for energy providers and customers, allowing them to establish an efficient production strategy to satisfy demand. This study introduces two hybrid cascaded models for forecasting multistep household power consumption in different resolutions. The first model integrates Stationary Wavelet Transform (SWT), as an efficient signal preprocessing technique, with Convolutional Neural Networks and Long Short Term Memory (LSTM). The second hybrid model combines SWT with a self-attention based neural network architecture named transformer. The major constraint of using time-frequency analysis methods such as SWT in multistep energy forecasting problems is that they require sequential signals, making signal reconstruction problematic in multistep forecasting applications.The cascaded models can efficiently address this problem through using the recursive outputs. Experimental results show that the proposed hybrid models achieve superior prediction performance compared to the existing multistep power consumption prediction methods. The results will pave the way for more accurate and reliable forecasting of household power consumption.