A Multivariate Time Series Prediction Method Based on Convolution-Residual Gated Recurrent Neural Network and Double-Layer Attention

Chuxin Cao, Jianhong Huang, Man Wu, Zhizhe Lin, Yan Sun
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Abstract

In multivariate and multistep time series prediction research, we often face the problems of insufficient spatial feature extraction and insufficient time-dependent mining of historical series data, which also brings great challenges to multivariate time series analysis and prediction. Inspired by the attention mechanism and residual module, this study proposes a multivariate time series prediction method based on a convolutional-residual gated recurrent hybrid model (CNN-DA-RGRU) with a two-layer attention mechanism to solve the multivariate time series prediction problem in these two stages. Specifically, the convolution module of the proposed model is used to extract the relational features among the sequences, and the two-layer attention mechanism can pay more attention to the relevant variables and give them higher weights to eliminate the irrelevant features, while the residual gated loop module is used to extract the time-varying features of the sequences, in which the residual block is used to achieve the direct connectivity to enhance the expressive power of the model, to solve the gradient explosion and vanishing scenarios, and to facilitate gradient propagation. Experiments were conducted on two public datasets using the proposed model to determine the model hyperparameters, and ablation experiments were conducted to verify the effectiveness of the model; by comparing it with several models, the proposed model was found to achieve good results in multivariate time series-forecasting tasks.
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基于卷积-残差门控递归神经网络和双层注意力的多变量时间序列预测方法
在多变量、多步骤时间序列预测研究中,我们经常面临空间特征提取不足、历史序列数据的时间依赖性挖掘不足等问题,这也给多变量时间序列分析和预测带来了巨大挑战。受注意力机制和残差模块的启发,本研究提出了一种基于卷积-残差门控递归混合模型(CNN-DA-RGRU)的多变量时间序列预测方法,并采用双层注意力机制来解决这两个阶段的多变量时间序列预测问题。具体来说,所提模型的卷积模块用于提取序列间的关系特征,双层关注机制可以更多地关注相关变量,并赋予其更高的权重,以消除不相关的特征;残差门控循环模块用于提取序列的时变特征,其中残差块用于实现直接连接,以增强模型的表现力,解决梯度爆炸和消失的情况,并促进梯度传播。利用所提出的模型在两个公共数据集上进行了实验,以确定模型超参数,并进行了消融实验以验证模型的有效性;通过与多个模型的比较,发现所提出的模型在多变量时间序列预测任务中取得了良好的效果。
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