Comparative Analysis of Multivariable Deep Learning Models for Forecasting in Smart Grids

被引:0
|
作者
Escobar Avalos, E. [1 ]
Rodriguez Licea, M. A. [2 ]
Rostro Gonzalez, H. [3 ]
Espinoza Calderon, A. [4 ]
Barranco Gutierrez, A., I [2 ]
Perez Pinal, F. J. [1 ]
机构
[1] Inst Tecnol Celaya, Dept Elect, Guanajuato, Mexico
[2] CONACYT Inst Tecnol Celaya, Dept Elect, Guanajuato, Mexico
[3] Univ Guanajuato, Dept Elect, Guanajuato, Mexico
[4] Ctr Reg Optimizac & Desarrollo Equipo, Dept Invest & Desarrollo, Guanajuato, Mexico
关键词
D O I
10.1109/ropec50909.2020.9258732
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Clean-energy generation in smart grids is limited by the availability of the energy to be transformed and advanced energy management strategies requires solid and anticipated information about its dynamic behavior. This includes multi-variable prediction of meteorological and user consumption data simultaneously in time series. The selection of a predicting model, from long short-term memory (LSTM), convolutional neural networks (CNN), gated recurrent units (GRU), or their hybrid models merging CNN with LSTM and GRU, is a very complex task. In this paper, a mean absolute error, absolute percentage error (MAPE), and root mean square error (RMSE) comparative analysis, for prediction of energy consumption, and solar and onshore wind generation, is presented. A three-day prediction-horizon is used, with four-year hourly training data from Madrid. The combination of the best GRU and CNN models found, subject to the given hyperparameters grid, has a better prediction performance, including if they predict separated. Relevant information about training and coding appreciations is also presented.
引用
收藏
页数:6
相关论文
共 50 条
  • [21] Comparative Analysis of different Machine learning Models for Load Forecasting
    Bareth, Rashmi
    Kochar, Matushree
    Yadav, Anamika
    2023 IEEE IAS GLOBAL CONFERENCE ON RENEWABLE ENERGY AND HYDROGEN TECHNOLOGIES, GLOBCONHT, 2023,
  • [22] Comparative Analysis of Machine Learning, Hybrid, and Deep Learning Forecasting Models: Evidence from European Financial Markets and Bitcoins
    Ampountolas, Apostolos
    FORECASTING, 2023, 5 (02): : 472 - 486
  • [23] Cryptocurrency price forecasting - A comparative analysis of ensemble learning and deep learning methods
    Bouteska, Ahmed
    Abedin, Mohammad Zoynul
    Hajek, Petr
    Yuan, Kunpeng
    INTERNATIONAL REVIEW OF FINANCIAL ANALYSIS, 2024, 92
  • [24] Machine Learning and Deep Learning Techniques for Residential Load Forecasting: A Comparative Analysis
    Shabbir, Noman
    Kutt, Lauri
    Raja, Hadi A.
    Ahmadiahangar, Roya
    Rosin, Argo
    Husev, Oleksandr
    2021 IEEE 62ND INTERNATIONAL SCIENTIFIC CONFERENCE ON POWER AND ELECTRICAL ENGINEERING OF RIGA TECHNICAL UNIVERSITY (RTUCON), 2021,
  • [25] Deep learning models for inflation forecasting
    Theoharidis, Alexandre Fernandes
    Guillen, Diogo Abry
    Lopes, Hedibert
    APPLIED STOCHASTIC MODELS IN BUSINESS AND INDUSTRY, 2023, 39 (03) : 447 - 470
  • [26] Review on the Research and Practice of Deep Learning and Reinforcement Learning in Smart Grids
    Zhang, Dongxia
    Han, Xiaoqing
    Deng, Chunyu
    CSEE JOURNAL OF POWER AND ENERGY SYSTEMS, 2018, 4 (03): : 362 - 370
  • [27] Machine Learning for Short-Term Load Forecasting in Smart Grids
    Ibrahim, Bibi
    Rabelo, Luis
    Gutierrez-Franco, Edgar
    Clavijo-Buritica, Nicolas
    ENERGIES, 2022, 15 (21)
  • [28] Deep Learning Models for Inventory Decisions: A Comparative Analysis
    Moraes, Thais de Castro
    Yuan, Xue-Ming
    Chew, Ek Peng
    INTELLIGENT SYSTEMS AND APPLICATIONS, VOL 2, INTELLISYS 2023, 2024, 823 : 132 - 150
  • [29] Performance Evaluation of Distributed Machine Learning for Load Forecasting in Smart Grids
    Syed, Dabeeruddin
    Refaat, Shady S.
    Abu-Rub, Haitham
    PROCEEDINGS OF THE 2020 30TH INTERNATIONAL CONFERENCE CYBERNETICS & INFORMATICS (K&I '20), 2020,
  • [30] Energy load forecasting model based on deep neural networks for smart grids
    Mohammad, Faisal
    Kim, Young-Chon
    INTERNATIONAL JOURNAL OF SYSTEM ASSURANCE ENGINEERING AND MANAGEMENT, 2020, 11 (04) : 824 - 834