Operational Wind Speed Forecasts for Chile's Electric Power Sector Using a Hybrid ML Model
- URL: http://arxiv.org/abs/2409.09263v3
- Date: Wed, 18 Sep 2024 15:17:25 GMT
- Title: Operational Wind Speed Forecasts for Chile's Electric Power Sector Using a Hybrid ML Model
- Authors: Dhruv Suri, Praneet Dutta, Flora Xue, Ines Azevedo, Ravi Jain,
- Abstract summary: We quantify the impact of increasing intermittent generation from wind and solar on thermal power plants in Chile.
We introduce a hybrid wind speed forecasting methodology which combines two custom ML models for Chile.
Our hybrid approach outperforms the most accurate operational deterministic systems by 4-21% for short-term forecasts and 5-23% for medium-term forecasts.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As Chile's electric power sector advances toward a future powered by renewable energy, accurate forecasting of renewable generation is essential for managing grid operations. The integration of renewable energy sources is particularly challenging due to the operational difficulties of managing their power generation, which is highly variable compared to fossil fuel sources, delaying the availability of clean energy. To mitigate this, we quantify the impact of increasing intermittent generation from wind and solar on thermal power plants in Chile and introduce a hybrid wind speed forecasting methodology which combines two custom ML models for Chile. The first model is based on TiDE, an MLP-based ML model for short-term forecasts, and the second is based on a graph neural network, GraphCast, for medium-term forecasts up to 10 days. Our hybrid approach outperforms the most accurate operational deterministic systems by 4-21% for short-term forecasts and 5-23% for medium-term forecasts and can directly lower the impact of wind generation on thermal ramping, curtailment, and system-level emissions in Chile.
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