Forecasting High-Frequency Spatio-Temporal Wind Power with Dimensionally Reduced Echo State Networks
About
Fast and accurate hourly forecasts of wind speed and power are crucial in quantifying and planning the energy budget in the electric grid. Modeling wind at a high resolution brings forth considerable challenges given its turbulent and highly nonlinear dynamics. In developing countries, where wind farms over a large domain are currently under construction or consideration, this is even more challenging given the necessity of modeling wind over space as well. In this work, we propose a machine learning approach to model the nonlinear hourly wind dynamics in Saudi Arabia with a domain-specific choice of knots to reduce the spatial dimensionality. Our results show that for locations highlighted as wind abundant by a previous work, our approach results in an 11% improvement in the two-hour-ahead forecasted power against operational standards in the wind energy sector, yielding a saving of nearly one million US dollars over a year under current market prices in Saudi Arabia.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Epidemic Forecasting | Japan TB medium-term (test) | SMAPE23.16 | 30 | |
| Long-term forecasting | ILI (test) | Empirical Coverage0.24 | 24 | |
| Long-term forecasting | Japan TB (test) | Empirical Coverage30 | 24 | |
| Long-term forecasting | Belgium COVID-19 (test) | Empirical Coverage10 | 24 | |
| Long-term forecasting | Colombia Dengue (test) | Empirical Coverage38 | 24 | |
| Long-term forecasting | Hungary Chickenpox (test) | Empirical Coverage16 | 24 | |
| Long-term forecasting | China TB (test) | Empirical Coverage20 | 16 | |
| Short-term forecasting | USA ILI | SMAPE28.71 | 15 | |
| Short-term forecasting | Belgium COVID-19 | SMAPE62.4 | 15 | |
| Epidemic Forecasting | China TB medium-term (test) | SMAPE15.35 | 15 |