基于时间关注的TCN-BIGRU模型能源时间序列预测

Liang Li, Min Hu, Fuji Ren, Haijun Xu
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引用次数: 3

摘要

多年来,能源时间序列预测得到了广泛的研究,并在电能预测、太阳能预测等各个领域发挥了重要作用。在能源时间序列预测中,为了获得准确的预测结果,建立长时间序列的预测模型至关重要。由于使用长序列会导致模型的精度降低。在本文中,我们提出了一种基于双向门控循环单元(BiGRU)的深度学习模型(TCNTA-BiGRU),该模型具有时间注意机制,以解决长序列任务中的精度下降问题。首先,为了捕获长期依赖关系,本文将数据集进行分割并输入到时序卷积网络(temporal convolutional network, TCN)中,将长序列转化为多个短序列,既解决了处理长序列时造成梯度爆炸或消失的问题,又降低了空间复杂度。然后,使用BiGRU来学习历史和未来信息,并捕获更多的短期依赖关系。此外,为了增强模型对数据周期性的关注能力,引入了时间关注机制。此外,采用自回归模型提高了模型的线性拟合能力。将本文提出的模型应用于电力和太阳能数据集,结果表明与现有的深度学习模型相比,该模型具有更好的性能。
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Temporal Attention Based TCN-BIGRU Model for Energy Time Series Forecasting
Over the years, energy time series forecasting has been widely studied and has played an important role in various fields, such as electric energy forecasting, solar energy forecasting, etc. In energy time series forecasting, it is crucial to building forecasting models for long series in order to obtain accurate forecasting results. Since the use of long series can cause the accuracy of the model to decrease. In this paper, we propose a deep learning model (TCNTA-BiGRU) based on a bi-directional gated cyclic unit (BiGRU) with a temporal attention mechanism to address the problem of accuracy degradation in long sequence tasks. First, in order to capture long-term dependencies, this paper divide the dataset and input it into a temporal convolutional network (TCN) to transform long sequences into multiple short sequences, which not only solves the problem that to cause gradient explosion or disappearance when processing long sequences, but also reduces the spatial complexity. Then, BiGRU is used to learn historical and future information and capture more short-term dependencies. Moreover, in order to enhance the model's ability to focus on data periodicity, a temporal attention mechanism is introduced. Additionally the autoregressive module is used to increase the linear fitting ability of the model. The model proposed in this paper is applied to the Electricity and Solar Energy datasets and the results show a better performance relate to existing deep learning models.
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