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Neutral Network Adaptive Filter with Application to Ocean Current Energy Estimation

In: Advanced Statistical Modeling, Forecasting, and Fault Detection in Renewable Energy Systems

Author

Listed:
  • Hong Son Hoang
  • Remy Baraille

Abstract

This chapter proposes a new approach for the design of an adaptive filter (AF), which is based on an artificial neural network (NN) structure for estimating the system state. The NNs are now widely used as a technology offering a way to solve complex and nonlinear problems such as time-series forecasting, process control, parameter state estimation, and fault diagnosis. The proposed NN-based adaptive filtering (NNAF) is designed by considering the filtering algorithm as an input-output system and two-stage optimization procedure. The first concerns a learning process where the weights of the NNAF are estimated to minimize the error between the filtered state and the state samples generated by a numerical model. The adaptation is carried out next to minimize the mean prediction error (MPE) of the system outputs (error between the observations and the system output forecast) subject to the coefficients associated with the estimated NN weights. Simulation results for different numerical models, especially for state estimation of the chaotic Lorenz system as well as for the ocean current at different deep layers which is important for renewable energy device placements, are presented to show the efficiency of the NNAF.

Suggested Citation

  • Hong Son Hoang & Remy Baraille, 2020. "Neutral Network Adaptive Filter with Application to Ocean Current Energy Estimation," Chapters, in: Fouzi Harrou & Ying Sun (ed.), Advanced Statistical Modeling, Forecasting, and Fault Detection in Renewable Energy Systems, IntechOpen.
  • Handle: RePEc:ito:pchaps:204518
    DOI: 10.5772/intechopen.90148
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    More about this item

    Keywords

    neural network; Kalman filter; adaptive filter; machine learning; minimum prediction error approach; ocean current energy;
    All these keywords.

    JEL classification:

    • Q20 - Agricultural and Natural Resource Economics; Environmental and Ecological Economics - - Renewable Resources and Conservation - - - General
    • Q40 - Agricultural and Natural Resource Economics; Environmental and Ecological Economics - - Energy - - - General

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