Short- and long-term energy flux prediction using Multi-Task Evolutionary Artificial Neural Networks

被引:13
作者
Guijo-Rubio, David [1 ]
Gomez-Orellana, Antonio M. [1 ]
Gutierrez, Pedro A. [1 ]
Hervas-Martinez, Cesar [1 ]
机构
[1] Univ Cordoba, Dept Comp Sci & Numer Anal, Cordoba, Spain
关键词
Wave energy flux prediction; Marine energy; Multi-task machine learning; Evolutionary artificial neural networks; Reanalysis data; SIGNIFICANT WAVE HEIGHT; POWER RAMP EVENTS; FUTURE-PROSPECTS; MACHINE; WIND; CLASSIFICATION; REGULARIZATION; INFORMATION; ALGORITHMS; REANALYSIS;
D O I
10.1016/j.oceaneng.2020.108089
中图分类号
U6 [水路运输]; P75 [海洋工程];
学科分类号
0814 ; 081505 ; 0824 ; 082401 ;
摘要
This paper presents a novel approach to tackle simultaneously short- and long-term energy flux prediction (specifically, at 6h, 12h, 24h and 48h time horizons). The methodology proposed is based on the Multi-Task Learning paradigm in order to solve the four problems with a single model. We consider Mull-Task Evolutionary Artificial Neural Networks (MTEANN) with four outputs, one for each time prediction horizon. For this purpose, three buoys located at the Gulf of Alaska are considered. Measurements collected by these buoys are used to obtain the target values of energy flux, whereas, only reanalysis data are used as input values, allowing the applicability to other locations. The performance of three different basis functions (Sigmoidal Unit, Radial Basis Function and Product Unit) are compared against some popular state-of-the-art approaches such as Extreme Learning Machines and Support Vector Regressors. The results show that MTEANN methodology using Sigmoidal Units in the hidden layer and a linear output achieves the best performance. In this way, the multi-task methodology is an excellent and lower-complexity approach for energy flux prediction at both short- and long-term prediction time horizons. Furthermore, the results also confirm that reanalysis data is enough for describing well the problem tackled.
引用
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页数:14
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共 60 条
  • [11] Multitask learning
    Caruana, R
    [J]. MACHINE LEARNING, 1997, 28 (01) : 41 - 75
  • [12] Performance of artificial neural networks in nearshore wave power prediction
    Castro, A.
    Carballo, R.
    Iglesias, G.
    Rabunal, J. R.
    [J]. APPLIED SOFT COMPUTING, 2014, 23 : 194 - 201
  • [13] Real-time significant wave height estimation from raw ocean images based on 2D and 3D deep neural networks
    Choi, Heejeong
    Park, Minsik
    Son, Gyubin
    Jeong, Jaeyun
    Park, Jaesun
    Mo, Kyounghyun
    Kang, Pilsung
    [J]. OCEAN ENGINEERING, 2020, 201
  • [14] GPS sensing of precipitable water vapour during the March 2010 Melbourne storm
    Choy, S.
    Wang, C.
    Zhang, K.
    Kuleshov, Y.
    [J]. ADVANCES IN SPACE RESEARCH, 2013, 52 (09) : 1688 - 1699
  • [15] Significant wave height and energy flux estimation with a Genetic Fuzzy System for regression
    Cornejo-Bueno, L.
    Rodriguez-Mier, P.
    Mucientes, M.
    Nieto-Borge, J. C.
    Salcedo-Sanz, S.
    [J]. OCEAN ENGINEERING, 2018, 160 : 33 - 44
  • [16] Significant wave height and energy flux prediction for marine energy applications: A grouping genetic algorithm - Extreme Learning Machine approach
    Cornejo-Bueno, L.
    Nieto-Borge, J. C.
    Garcia-Diaz, P.
    Rodriguez, G.
    Salcedo-Sanz, S.
    [J]. RENEWABLE ENERGY, 2016, 97 : 380 - 389
  • [17] Accurate estimation of significant wave height with Support Vector Regression algorithms and marine radar images
    Cornejo-Bueno, L.
    Nieto Borge, J. C.
    Alexandre, E.
    Hessner, K.
    Salcedo-Sanz, S.
    [J]. COASTAL ENGINEERING, 2016, 114 : 233 - 243
  • [18] Council N.R., 2012, Climate Change: Evidence, Impacts, and Choices: Set of 2 Booklets
  • [19] Computational intelligence in wave energy: Comprehensive review and case study
    Cuadra, L.
    Salcedo-Sanz, S.
    Nieto-Borge, J. C.
    Alexandre, E.
    Rodriguez, G.
    [J]. RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2016, 58 : 1223 - 1246
  • [20] de Smith M.J., 2009, GEOSPATIAL ANAL COMP, Vthird, P516