AI-powered Digital Twin of the Ocean: Reliable Uncertainty Quantification for Real-time Wave Height Prediction with Deep Ensemble
Environmental pollution and the depletion of fossil fuels have prompted the need for eco-friendly power generation methods based on renewable energy. However, renewable energy sources often face challenges in providing stable power due to low energy density and non-stationary. Wave energy converters...
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Zusammenfassung: | Environmental pollution and the depletion of fossil fuels have prompted the
need for eco-friendly power generation methods based on renewable energy.
However, renewable energy sources often face challenges in providing stable
power due to low energy density and non-stationary. Wave energy converters
(WECs), in particular, need reliable real-time wave height prediction to
address these issues caused by irregular wave patterns, which can lead to the
inefficient and unstable operation of WECs. In this study, we propose an
AI-powered reliable real-time wave height prediction model, aiming both high
predictive accuracy and reliable uncertainty quantification (UQ). The proposed
architecture LSTM-DE, integrates long short-term memory (LSTM) networks for
temporal prediction with deep ensemble (DE) for robust UQ, achieving accuracy
and reliability in wave height prediction. To further enhance the reliability
of the predictive models, uncertainty calibration is applied, which has proven
to significantly improve the quality of the quantified uncertainty. Based on
the real operational data obtained from an oscillating water column-wave energy
converter (OWC-WEC) system in Jeju, South Korea, we demonstrate that the
proposed LSTM-DE model architecture achieves notable predictive accuracy (R2 >
0.9) while increasing the uncertainty quality by over 50% through simple
calibration technique. Furthermore, a comprehensive parametric study is
conducted to explore the effects of key model hyperparameters, offering
valuable guidelines for diverse operational scenarios, characterized by
differences in wavelength, amplitude, and period. The findings show that the
proposed method provides robust and reliable real-time wave height predictions,
facilitating digital twin of the ocean. |
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DOI: | 10.48550/arxiv.2412.05475 |