Deep Learning for Time Series Forecasting: A Survey

被引:335
作者
Torres, Jose F. [1 ]
Hadjout, Dalil [2 ]
Sebaa, Abderrazak [3 ,4 ]
Martinez-Alvarez, Francisco [1 ]
Troncoso, Alicia [1 ]
机构
[1] Pablo de Olavide Univ, Data Sci & Big Data Lab, ES-41013 Seville, Spain
[2] SADEG Co, Dept Commerce, Sonelgaz Grp, Bejaia, Algeria
[3] Univ Bejaia, Fac Exact Sci, LIMED Lab, Bejaia, Algeria
[4] Higher Sch Sci & Technol Comp & Digital, Bejaia, Algeria
关键词
big data; deep learning; time series forecasting; ELMAN NEURAL-NETWORK; SHORT-TERM-MEMORY; RECURRENT UNIT NETWORK; USEFUL LIFE PREDICTION; HYBRID MODEL; STOCK-PRICE; LOAD; LSTM; DECOMPOSITION; OPTIMIZATION;
D O I
10.1089/big.2020.0159
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Time series forecasting has become a very intensive field of research, which is even increasing in recent years. Deep neural networks have proved to be powerful and are achieving high accuracy in many application fields. For these reasons, they are one of the most widely used methods of machine learning to solve problems dealing with big data nowadays. In this work, the time series forecasting problem is initially formulated along with its mathematical fundamentals. Then, the most common deep learning architectures that are currently being successfully applied to predict time series are described, highlighting their advantages and limitations. Particular attention is given to feed forward networks, recurrent neural networks (including Elman, long-short term memory, gated recurrent units, and bidirectional networks), and convolutional neural networks. Practical aspects, such as the setting of values for hyper-parameters and the choice of the most suitable frameworks, for the successful application of deep learning to time series are also provided and discussed. Several fruitful research fields in which the architectures analyzed have obtained a good performance are reviewed. As a result, research gaps have been identified in the literature for several domains of application, thus expecting to inspire new and better forms of knowledge.
引用
收藏
页码:3 / 21
页数:19
相关论文
共 203 条
  • [1] Abadi Martin, 2015, TensorFlow: Large-scale machine learning on heterogeneous systems
  • [2] Accurate photovoltaic power forecasting models using deep LSTM-RNN
    Abdel-Nasser, Mohamed
    Mahmoud, Karar
    [J]. NEURAL COMPUTING & APPLICATIONS, 2019, 31 (07) : 2727 - 2740
  • [3] Efficient Machine Learning for Big Data: A Review
    Al-Jarrah, Omar Y.
    Yoo, Paul D.
    Muhaidat, Sami
    Karagiannidis, George K.
    Taha, Kamal
    [J]. BIG DATA RESEARCH, 2015, 2 (03) : 87 - 93
  • [4] Estimating Soot Emission in Diesel Engines Using Gated Recurrent Unit Networks
    Alcan, Gokhan
    Yilmaz, Emre
    Unel, Mustafa
    Aran, Volkan
    Yilmaz, Metin
    Gurel, Cetin
    Koprubasi, Kerem
    [J]. IFAC PAPERSONLINE, 2019, 52 (05): : 544 - 549
  • [5] Solar power generation forecasting using ensemble approach based on deep learning and statistical methods
    AlKandari, Mariam
    Ahmad, Imtiaz
    [J]. APPLIED COMPUTING AND INFORMATICS, 2024, 20 (3/4) : 231 - 250
  • [6] Alla S., 2019, Beginning Anomaly Detection Using Python-Based Deep Learning,Apress, DOI [10.1007/978-1-4842-5177-5, DOI 10.1007/978-1-4842-5177-5]
  • [7] [Anonymous], 2019, SONN
  • [8] [Anonymous], NEON DEEP LEARN FRAM
  • [9] Timed-image based deep learning for action recognition in video sequences
    Atto, Abdourrahmane Mahamane
    Benoit, Alexandre
    Lambert, Patrick
    [J]. PATTERN RECOGNITION, 2020, 104
  • [10] Autonomio, 2019, TAL