Shi Zhigang, Bai Yuting, Jin Xuebo, Wang Xiaoyi, Su Tingli, Kong Jianlei
School of Artificial Intelligence, Beijing Technology and Business University, Beijing 100048, China.
Beijing Laboratory for Intelligent Environmental Protection, Beijing Technology and Business University, Beijing 100048, China.
Entropy (Basel). 2022 Mar 2;24(3):360. doi: 10.3390/e24030360.
The prediction of time series is of great significance for rational planning and risk prevention. However, time series data in various natural and artificial systems are nonstationary and complex, which makes them difficult to predict. An improved deep prediction method is proposed herein based on the dual variational mode decomposition of a nonstationary time series. First, criteria were determined based on information entropy and frequency statistics to determine the quantity of components in the variational mode decomposition, including the number of subsequences and the conditions for dual decomposition. Second, a deep prediction model was built for the subsequences obtained after the dual decomposition. Third, a general framework was proposed to integrate the data decomposition and deep prediction models. The method was verified on practical time series data with some contrast methods. The results show that it performed better than single deep network and traditional decomposition methods. The proposed method can effectively extract the characteristics of a nonstationary time series and obtain reliable prediction results.
时间序列预测对于合理规划和风险预防具有重要意义。然而,各种自然和人工系统中的时间序列数据是非平稳且复杂的,这使得它们难以预测。本文提出了一种基于非平稳时间序列双变分模态分解的改进深度预测方法。首先,基于信息熵和频率统计确定准则,以确定变分模态分解中的分量数量,包括子序列数量和双分解条件。其次,为双分解后得到的子序列构建深度预测模型。第三,提出了一个通用框架来整合数据分解和深度预测模型。该方法通过一些对比方法在实际时间序列数据上进行了验证。结果表明,它的性能优于单深度网络和传统分解方法。所提出的方法能够有效提取非平稳时间序列的特征并获得可靠的预测结果。