Auto-Regressive HMM Inference with Incomplete Data for Short-Horizon Wind Forecasting
Barber, Chris, Bockhorst, Joseph, Roebber, Paul
–Neural Information Processing Systems
Accurate short-term wind forecasts (STWFs), with time horizons from 0.5 to 6 hours, are essential for efficient integration of wind power to the electrical power grid. Physical models based on numerical weather predictions are currently not competitive, and research on machine learning approaches is ongoing. Two major challenges confronting these efforts are missing observations and weather-regime induced dependency shifts among wind variables at geographically distributed sites. In this paper we introduce approaches that address both of these challenges. We describe a new regime-aware approach to STWF that use auto-regressive hidden Markov models (AR-HMM), a subclass of conditional linear Gaussian (CLG) models.
Neural Information Processing Systems
Feb-15-2020, 00:41:35 GMT