Deep belief improved bidirectional LSTM for multivariate time series forecasting

被引:3
|
作者
Jiang, Keruo [1 ,2 ]
Huang, Zhen [1 ,2 ]
Zhou, Xinyan [2 ]
Tong, Chudong [2 ]
Zhu, Minjie [3 ]
Wang, Heshan [3 ]
机构
[1] State Grid Ningbo Elect Power Supply Co, Ningbo 315000, Peoples R China
[2] Ningbo Univ, Fac Elect Engn & Comp Sci, Ningbo 315211, Peoples R China
[3] Zhengzhou Univ, Sch Elect & Informat Engn, Zhengzhou 450001, Peoples R China
基金
中国国家自然科学基金;
关键词
deep long short-term memory; time series forecasting; feature extraction; deep belief network; ALGORITHM; MODELS; REGRESSION; NETWORK;
D O I
10.3934/mbe.2023739
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Multivariate time series (MTS) play essential roles in daily life because most real-world time series datasets are multivariate and rich in time-dependent information. Traditional forecasting methods for MTS are time-consuming and filled with complicated limitations. One efficient method being explored within the dynamical systems is the extended short-term memory networks (LSTMs). However, existing MTS models only partially use the hidden spatial relationship as effectively as LSTMs. Shallow LSTMs are inadequate in extracting features from high-dimensional MTS; however, the multilayer bidirectional LSTM (BiLSTM) can learn more MTS features in both directions. This study tries to generate a novel and improved BiLSTM network (DBI-BiLSTM) based on a deep belief network (DBN), bidirectional propagation technique, and a chained structure. The deep structures are constructed by a DBN layer and multiple stacked BiLSTM layers, which increase the feature representation of DBI-BiLSTM and allow for the model to further learn the extended features in two directions. First, the input is processed by DBN to obtain comprehensive features. Then, the known features, divided into clusters based on a global sensitivity analysis method, are used as the inputs of every BiLSTM layer. Meanwhile, the previous outputs of the shallow layer are combined with the clustered features to reconstitute new input signals for the next deep layer. Four experimental real-world time series datasets illustrate our one-step-ahead prediction performance. The simulating results confirm that the DBI-BiLSTM not only outperforms the traditional shallow artificial neural networks (ANNs), deep LSTMs, and some recently improved LSTMs, but also learns more features of the MTS data. As compared with conventional LSTM, the percentage improvement of DBI-BiLSTM on the four MTS datasets is 85.41, 75.47, 61.66 and 30.72%, respectively.
引用
收藏
页码:16596 / 16627
页数:32
相关论文
共 50 条
  • [31] TCLN: A Transformer-based Conv-LSTM network for multivariate time series forecasting
    Shusen Ma
    Tianhao Zhang
    Yun-Bo Zhao
    Yu Kang
    Peng Bai
    Applied Intelligence, 2023, 53 : 28401 - 28417
  • [32] Forecasting time series with multivariate copulas
    Simard, Clarence
    Remillard, Bruno
    DEPENDENCE MODELING, 2015, 3 (01): : 59 - 82
  • [33] Multivariate Time Series Forecasting: A Review
    Mendis, Kasun
    Wickramasinghe, Manjusri
    Marasinghe, Pasindu
    2024 2ND ASIA CONFERENCE ON COMPUTER VISION, IMAGE PROCESSING AND PATTERN RECOGNITION, CVIPPR 2024, 2024,
  • [34] A Comparison of ARIMA and LSTM in Forecasting Time Series
    Siami-Namini, Sima
    Tavakoli, Neda
    Namin, Akbar Siami
    2018 17TH IEEE INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA), 2018, : 1394 - 1401
  • [35] Time Series Forecasting using LSTM and ARIMA
    Albeladi, Khulood
    Zafar, Bassam
    Mueen, Ahmed
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2023, 14 (01) : 313 - 320
  • [36] The Performance of LSTM and BiLSTM in Forecasting Time Series
    Siami-Namini, Sima
    Tavakoli, Neda
    Namin, Akbar Siami
    2019 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2019, : 3285 - 3292
  • [37] AutoMixer for Improved Multivariate Time-Series Forecasting on Business and IT Observability Data
    Palaskar, Santosh
    Ekambaram, Vijay
    Jati, Arindam
    Gantayat, Neelamadhav
    Saha, Avirup
    Nagar, Seema
    Nguyen, Nam H.
    Dayama, Pankaj
    Sindhgatta, Renuka
    Mohapatra, Prateeti
    Kumar, Harshit
    Kalagnanam, Jayant
    Hemachandra, Nandyala
    Rangaraj, Narayan
    THIRTY-EIGTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, VOL 38 NO 21, 2024, : 22962 - 22968
  • [38] Combining LSTM Network Ensemble via Adaptive Weighting for Improved Time Series Forecasting
    Choi, Jae Young
    Lee, Bumshik
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2018, 2018
  • [39] MvTS-library: An open library for deep multivariate time series forecasting
    Ye, Junchen
    Li, Weimiao
    Zhang, Zhixin
    Zhu, Tongyu
    Sun, Leilei
    Du, Bowen
    KNOWLEDGE-BASED SYSTEMS, 2024, 283
  • [40] Forecasting Video QoE With Deep Learning From Multivariate Time-Series
    Dinaki, Hossein Ebrahimi
    Shirmohammadi, Shervin
    Janulewicz, Emil
    Cote, David
    IEEE OPEN JOURNAL OF SIGNAL PROCESSING, 2021, 2 : 512 - 521