TY - GEN
T1 - DWT Denoising for Multi-variate Time Series Forecasting
AU - Wan, Zhifeng
AU - Gong, Peng
AU - Li, Xin
AU - Zhang, Zhen
AU - Yang, Fuhao
AU - Pang, Wei
N1 - Publisher Copyright:
© 2022 SPIE.
PY - 2022
Y1 - 2022
N2 - Multivariate time series data is ubiquitous in the real world, and the study of its modeling and analysis is a popular research topic in meteorology, transportation, finance and other fields. In these studies, classical statistical methods are primarily aimed at single time series analysis, while deep learning demonstrates the power to mine patterns from massive amounts of data. A major application of these studies is to analyze collected historical sequence information to predict what will happen over time in the future. Currently, recurrent neural network-based models and time-convolution-based models realize the predictive power of multivariate time series, but these deep models perform mediocrely at predicting long-sequence tasks. On the one hand, due to the accumulation of errors, on the other hand, the fact that the collected sequence contains a large amount of high-frequency noise. In order to improve the prediction accuracy of the model and mine more valuable features from the series, we propose a novel multivariate time series prediction framework ADWT for time series modeling. By designing an adaptive filtering module in the characteristics of the signal frequency domain, our model removes noise from some of the time series and builds an end-to-end framework by fusing it with the prediction module of deep learning. Experimental results show that our model can effectively improve the prediction accuracy of multivariate time series, and its performance in the three benchmark data sets is competitive with the latest spatial-temporal series prediction model, and has good interpretability.
AB - Multivariate time series data is ubiquitous in the real world, and the study of its modeling and analysis is a popular research topic in meteorology, transportation, finance and other fields. In these studies, classical statistical methods are primarily aimed at single time series analysis, while deep learning demonstrates the power to mine patterns from massive amounts of data. A major application of these studies is to analyze collected historical sequence information to predict what will happen over time in the future. Currently, recurrent neural network-based models and time-convolution-based models realize the predictive power of multivariate time series, but these deep models perform mediocrely at predicting long-sequence tasks. On the one hand, due to the accumulation of errors, on the other hand, the fact that the collected sequence contains a large amount of high-frequency noise. In order to improve the prediction accuracy of the model and mine more valuable features from the series, we propose a novel multivariate time series prediction framework ADWT for time series modeling. By designing an adaptive filtering module in the characteristics of the signal frequency domain, our model removes noise from some of the time series and builds an end-to-end framework by fusing it with the prediction module of deep learning. Experimental results show that our model can effectively improve the prediction accuracy of multivariate time series, and its performance in the three benchmark data sets is competitive with the latest spatial-temporal series prediction model, and has good interpretability.
KW - Data Mining
KW - Deep Learning
KW - Discrete Wavelet Transform
KW - Multi-variate time series forecasting
UR - http://www.scopus.com/inward/record.url?scp=85141824634&partnerID=8YFLogxK
U2 - 10.1117/12.2644384
DO - 10.1117/12.2644384
M3 - Conference contribution
AN - SCOPUS:85141824634
T3 - Proceedings of SPIE - The International Society for Optical Engineering
BT - Fourteenth International Conference on Digital Image Processing, ICDIP 2022
A2 - Jiang, Xudong
A2 - Tao, Wenbing
A2 - Zeng, Deze
A2 - Xie, Yi
PB - SPIE
T2 - 14th International Conference on Digital Image Processing, ICDIP 2022
Y2 - 20 May 2022 through 23 May 2022
ER -