A comparison of deep learning methods for wind speed forecasting

被引:3
|
作者
Pena-Gallardo, Rafael [1 ]
Medina-Rios, Aurelio [2 ]
机构
[1] Univ Autonoma San Luis Potosi, Fac Ingn, San Luis Potosi, San Luis Potosi, Mexico
[2] Univ Michoacana, Fac Ingn Elect, Morelia, Michoacan, Mexico
关键词
ARIMA; convolutional neural network; wind speed forecasting; LSTM; time series; TERM-MEMORY NETWORK; NEURAL-NETWORK; MODEL; CONSUMPTION; POWER;
D O I
10.1109/ropec50909.2020.9258673
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Currently, deep learning methods are being used and proposed to deal with the problem of wind speed time series forecasting. This is since they have good forecast accuracy; however, they also have greater complexity and there is an increase in the computational effort used in comparison with the conventional forecasting methods. This paper reviews the deep learning methods most widely used in time series forecasting, such as convolutional neural networks, long short-term memory networks, and hybrid methods. The results are compared against the autoregressive integrated moving average (ARIMA) method, which is typically used, due to its simplicity and high precision. A benchmark was generated based on a wind speed time series obtained from a meteorological station, obtaining hourly forecasts one step ahead and subsequently obtaining forecasts of several steps ahead. The results show the improvement in the accuracy in the forecast obtained when using the methods based on deep learning, as compared with the ARIMA method.
引用
收藏
页数:6
相关论文
共 50 条
  • [31] Temperature forecasting by deep learning methods
    Gong, Bing
    Langguth, Michael
    Ji, Yan
    Mozaffari, Amirpasha
    Stadtler, Scarlet
    Mache, Karim
    Schultz, Martin G.
    GEOSCIENTIFIC MODEL DEVELOPMENT, 2022, 15 (23) : 8931 - 8956
  • [32] A novel hybrid algorithm based on Empirical Fourier decomposition and deep learning for wind speed forecasting
    Kumar, Bhupendra
    Yadav, Neha
    Sunil
    ENERGY CONVERSION AND MANAGEMENT, 2024, 300
  • [33] A Novel Approach for Wind Speed Forecasting Using LSTM-ARIMA Deep Learning Models
    Bali, Vikram
    Kumar, Ajay
    Gangwar, Satyam
    INTERNATIONAL JOURNAL OF AGRICULTURAL AND ENVIRONMENTAL INFORMATION SYSTEMS, 2020, 11 (03) : 13 - 30
  • [34] Multiperiod-Ahead Wind Speed Forecasting Using Deep Neural Architecture and Ensemble Learning
    Chen, Lei
    Li, Zhijun
    Zhang, Yi
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2019, 2019
  • [35] A new hybrid ensemble deep reinforcement learning model for wind speed short term forecasting
    Liu, Hui
    Yu, Chengqing
    Wu, Haiping
    Duan, Zhu
    Yan, Guangxi
    ENERGY, 2020, 202
  • [36] Wind Speed Ensemble Forecasting Based on Deep Learning Using Adaptive Dynamic Optimization Algorithm
    Ibrahim, Abdelhameed
    Mirjalili, Seyedali
    El-Said, M.
    Ghoneim, Sherif S. M.
    Al-Harthi, Mosleh M.
    Ibrahim, Tarek F.
    El-Kenawy, El-Sayed M.
    IEEE ACCESS, 2021, 9 : 125787 - 125804
  • [37] A Comparison Wind Power Forecasting with Different Methods
    Yan, Jian
    INTEGRATED FERROELECTRICS, 2022, 227 (01) : 191 - 201
  • [38] Improvements in Wind Speed Forecasting Using an Online learning
    Cheggaga, Nawal
    2014 5TH INTERNATIONAL RENEWABLE ENERGY CONGRESS (IREC), 2014,
  • [39] Soft Computing Methods with Phase Space Reconstruction for Wind Speed Forecasting-A Performance Comparison
    Flores, Juan. J.
    Cedeno Gonzalez, Jose R.
    Rodriguez, Hector
    Graff, Mario
    Lopez-Farias, Rodrigo
    Calderon, Felix
    ENERGIES, 2019, 12 (18)
  • [40] Retail Demand Forecasting: A Multivariate Approach and Comparison of Boosting and Deep Learning Methods
    Theodoridis, Georgios
    Tsadiras, Athanasios
    INTERNATIONAL JOURNAL ON ARTIFICIAL INTELLIGENCE TOOLS, 2024, 33 (04)