A Machine Learning Approach to Forecasting Hydropower Generation

被引:0
|
作者
Di Grande, Sarah [1 ]
Berlotti, Mariaelena [1 ]
Cavalieri, Salvatore [1 ]
Gueli, Roberto [2 ]
机构
[1] Univ Catania, Dept Elect Elect & Comp Engn, Viale A Doria 6, I-95125 Catania, Italy
[2] Etna Hitech SCpA, Viale Africa 31, I-95129 Catania, Italy
关键词
renewable energy; hydropower; machine learning; forecasting; sustainability; water distribution system;
D O I
10.3390/en17205163
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
In light of challenges like climate change, pollution, and depletion of fossil fuel reserves, governments and businesses prioritize renewable energy sources such as solar, wind, and hydroelectric power. Renewable energy forecasting models play a crucial role for energy market operators and prosumers, aiding in planning, decision-making, optimization of energy sales, and evaluation of investments. This study aimed to develop machine learning models for hydropower forecasting in plants integrated into Water Distribution Systems, where energy is generated from water flow used for municipal water supply. The study involved developing and comparing monthly and two-week forecasting models, utilizing both one-step-ahead and two-step-ahead forecasting methodologies, along with different missing data imputation techniques. The tested algorithms-Seasonal Autoregressive Integrated Moving Average, Random Forest, Temporal Convolutional Network, and Neural Basis Expansion Analysis for Time Series-produced varying levels of performance. The Random Forest model proved to be the most effective for monthly forecasting, while the Temporal Convolutional Network delivered the best results for two-week forecasting. Across all scenarios, the seasonal-trend decomposition using the LOESS technique emerged as the most successful for missing data imputation. The accurate predictions obtained demonstrate the effectiveness of using these models for energy planning and decision-making.
引用
收藏
页数:22
相关论文
共 50 条
  • [1] Machine Learning Based PV Power Generation Forecasting in Alice Springs
    Mahmud, Khizir
    Azam, Sami
    Karim, Asif
    Zobaed, S. M.
    Shanmugam, Bharanidharan
    Mathur, Deepika
    IEEE ACCESS, 2021, 9 : 46117 - 46128
  • [2] Forecasting Electricity Prices: A Machine Learning Approach
    Castelli, Mauro
    Groznik, Ales
    Popovic, Ales
    ALGORITHMS, 2020, 13 (05)
  • [3] Machine Learning Algorithms in Forecasting of Photovoltaic Power Generation
    Su, Di
    Batzelis, Efstratios
    Pal, Bikash
    2019 2ND INTERNATIONAL CONFERENCE ON SMART ENERGY SYSTEMS AND TECHNOLOGIES (SEST 2019), 2019,
  • [4] Forecasting the Evolution of Hydropower Generation
    Zhou, Fan
    Li, Liang
    Zhang, Kunpeng
    Trajcevski, Goce
    Yao, Fuming
    Huang, Ying
    Zhong, Ting
    Wang, Jiahao
    Liu, Qiao
    KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, : 2861 - 2870
  • [5] Implied volatility directional forecasting: a machine learning approach
    Vrontos, Spyridon D.
    Galakis, John
    Vrontos, Ioannis D.
    QUANTITATIVE FINANCE, 2021, 21 (10) : 1687 - 1706
  • [6] A Machine Learning approach for shared bicycle demand forecasting
    Mergulhao, Margarida
    Palma, Myke
    Costa, Carlos J.
    2022 17TH IBERIAN CONFERENCE ON INFORMATION SYSTEMS AND TECHNOLOGIES (CISTI), 2022,
  • [7] Energy generation forecasting: elevating performance with machine and deep learning
    Aristeidis Mystakidis
    Evangelia Ntozi
    Konstantinos Afentoulis
    Paraskevas Koukaras
    Paschalis Gkaidatzis
    Dimosthenis Ioannidis
    Christos Tjortjis
    Dimitrios Tzovaras
    Computing, 2023, 105 : 1623 - 1645
  • [8] Hybrid Machine Learning Approach For Electric Load Forecasting
    Kao, Jui-Chieh
    Lo, Chun-Chih
    Shieh, Chin-Shiuh
    Liao, Yu-Cheng
    Liu, Jun-Wei
    Horng, Mong-Fong
    IEEE 17TH INT CONF ON DEPENDABLE, AUTONOM AND SECURE COMP / IEEE 17TH INT CONF ON PERVAS INTELLIGENCE AND COMP / IEEE 5TH INT CONF ON CLOUD AND BIG DATA COMP / IEEE 4TH CYBER SCIENCE AND TECHNOLOGY CONGRESS (DASC/PICOM/CBDCOM/CYBERSCITECH), 2019, : 1031 - 1037
  • [9] A Machine Learning Approach to Volatility Forecasting*
    Christensen, Kim
    Siggaard, Mathias
    Veliyev, Bezirgen
    JOURNAL OF FINANCIAL ECONOMETRICS, 2023, 21 (05) : 1680 - 1727
  • [10] Energy generation forecasting: elevating performance with machine and deep learning
    Mystakidis, Aristeidis
    Ntozi, Evangelia
    Afentoulis, Konstantinos
    Koukaras, Paraskevas
    Gkaidatzis, Paschalis
    Ioannidis, Dimosthenis
    Tjortjis, Christos
    Tzovaras, Dimitrios
    COMPUTING, 2023, 105 (08) : 1623 - 1645