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Bayesian Optimized Echo State Network Applied to Short-Term Load Forecasting

Author

Listed:
  • Gabriel Trierweiler Ribeiro

    (Department of Electrical Engineering, Federal University of Parana (UFPR), Av. Coronal Francisco Heráclito dos Santos, 100, Curitiba (PR) 80060-000, Brazil)

  • João Guilherme Sauer

    (Department of Electrical Engineering, Federal University of Parana (UFPR), Av. Coronal Francisco Heráclito dos Santos, 100, Curitiba (PR) 80060-000, Brazil)

  • Naylene Fraccanabbia

    (Department of Mechanical Engineering, Pontifical Catholic University of Parana (PUCPR), Rua Imaculada Conceição, 1155, Curitiba (PR) 80215-901, Brazil)

  • Viviana Cocco Mariani

    (Department of Electrical Engineering, Federal University of Parana (UFPR), Av. Coronal Francisco Heráclito dos Santos, 100, Curitiba (PR) 80060-000, Brazil
    Department of Mechanical Engineering, Pontifical Catholic University of Parana (PUCPR), Rua Imaculada Conceição, 1155, Curitiba (PR) 80215-901, Brazil)

  • Leandro dos Santos Coelho

    (Department of Electrical Engineering, Federal University of Parana (UFPR), Av. Coronal Francisco Heráclito dos Santos, 100, Curitiba (PR) 80060-000, Brazil
    Industrial and Systems Engineering Graduate Program (PPGEPS), Pontifical Catholic University of Parana (PUCPR), Rua Imaculada Conceição, 1155, Curitiba (PR) 80215-901, Brazil)

Abstract

Load forecasting impacts directly financial returns and information in electrical systems planning. A promising approach to load forecasting is the Echo State Network (ESN), a recurrent neural network for the processing of temporal dependencies. The low computational cost and powerful performance of ESN make it widely used in a range of applications including forecasting tasks and nonlinear modeling. This paper presents a Bayesian optimization algorithm (BOA) of ESN hyperparameters in load forecasting with its main contributions including helping the selection of optimization algorithms for tuning ESN to solve real-world forecasting problems, as well as the evaluation of the performance of Bayesian optimization with different acquisition function settings. For this purpose, the ESN hyperparameters were set as variables to be optimized. Then, the adopted BOA employs a probabilist model using Gaussian process to find the best set of ESN hyperparameters using three different options of acquisition function and a surrogate utility function. Finally, the optimized hyperparameters are used by the ESN for predictions. Two datasets have been used to test the effectiveness of the proposed forecasting ESN model using BOA approaches, one from Poland and another from Brazil. The results of optimization statistics, convergence curves, execution time profile, and the hyperparameters’ best solution frequencies indicate that each problem requires a different setting for the BOA. Simulation results are promising in terms of short-term load forecasting quality and low error predictions may be achieved, given the correct options settings are used. Furthermore, since there is not an optimal global optimization solution known for real-world problems, correlations among certain values of hyperparameters are useful to guide the selection of such a solution.

Suggested Citation

  • Gabriel Trierweiler Ribeiro & João Guilherme Sauer & Naylene Fraccanabbia & Viviana Cocco Mariani & Leandro dos Santos Coelho, 2020. "Bayesian Optimized Echo State Network Applied to Short-Term Load Forecasting," Energies, MDPI, vol. 13(9), pages 1-19, May.
  • Handle: RePEc:gam:jeners:v:13:y:2020:i:9:p:2390-:d:356418
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    References listed on IDEAS

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    Cited by:

    1. Matheus Henrique Dal Molin Ribeiro & Stéfano Frizzo Stefenon & José Donizetti de Lima & Ademir Nied & Viviana Cocco Mariani & Leandro dos Santos Coelho, 2020. "Electricity Price Forecasting Based on Self-Adaptive Decomposition and Heterogeneous Ensemble Learning," Energies, MDPI, vol. 13(19), pages 1-22, October.
    2. Ribeiro, Matheus Henrique Dal Molin & da Silva, Ramon Gomes & Ribeiro, Gabriel Trierweiler & Mariani, Viviana Cocco & Coelho, Leandro dos Santos, 2023. "Cooperative ensemble learning model improves electric short-term load forecasting," Chaos, Solitons & Fractals, Elsevier, vol. 166(C).
    3. Mohamed Massaoudi & Shady S. Refaat & Haitham Abu-Rub & Ines Chihi & Fakhreddine S. Oueslati, 2020. "PLS-CNN-BiLSTM: An End-to-End Algorithm-Based Savitzky–Golay Smoothing and Evolution Strategy for Load Forecasting," Energies, MDPI, vol. 13(20), pages 1-29, October.
    4. Joseph, Lionel P. & Deo, Ravinesh C. & Prasad, Ramendra & Salcedo-Sanz, Sancho & Raj, Nawin & Soar, Jeffrey, 2023. "Near real-time wind speed forecast model with bidirectional LSTM networks," Renewable Energy, Elsevier, vol. 204(C), pages 39-58.

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