TY - JOUR
T1 - AIRU-WRF
T2 - A physics-guided spatio-temporal wind forecasting model and its application to the U.S. Mid Atlantic offshore wind energy areas
AU - Ye, Feng
AU - Brodie, Joseph
AU - Miles, Travis
AU - Aziz Ezzat, Ahmed
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/3
Y1 - 2024/3
N2 - The reliable integration of wind energy into modern-day electricity systems heavily relies on accurate short-term wind forecasts. We propose a spatio-temporal model called AIRU-WRF (short for the AI-powered Rutgers University Weather Research & Forecasting), which combines numerical weather predictions (NWPs) with local observations in order to make wind speed forecasts that are short-term (minutes to hours ahead), and of high resolution, both spatially (site-specific) and temporally (minute-level). In contrast to purely data-driven methods, we undertake a “physics-guided” machine learning (ML) approach which captures salient physical features of the local wind field without the need to explicitly solve for those physics, including: (i) modeling wind field advection and diffusion via physically meaningful kernel functions, (ii) integrating exogenous predictors that are both meteorologically relevant and statistically significant; and (iii) linking the multi-type NWP biases to their driving mesoscale weather conditions. Tested on real-world data from the U.S. Mid Atlantic where several offshore wind projects are in-development, AIRU-WRF achieves notable improvements, in terms of both wind speed and power, relative to various forecasting benchmarks including physics-based, hybrid, statistical, and deep learning methods.
AB - The reliable integration of wind energy into modern-day electricity systems heavily relies on accurate short-term wind forecasts. We propose a spatio-temporal model called AIRU-WRF (short for the AI-powered Rutgers University Weather Research & Forecasting), which combines numerical weather predictions (NWPs) with local observations in order to make wind speed forecasts that are short-term (minutes to hours ahead), and of high resolution, both spatially (site-specific) and temporally (minute-level). In contrast to purely data-driven methods, we undertake a “physics-guided” machine learning (ML) approach which captures salient physical features of the local wind field without the need to explicitly solve for those physics, including: (i) modeling wind field advection and diffusion via physically meaningful kernel functions, (ii) integrating exogenous predictors that are both meteorologically relevant and statistically significant; and (iii) linking the multi-type NWP biases to their driving mesoscale weather conditions. Tested on real-world data from the U.S. Mid Atlantic where several offshore wind projects are in-development, AIRU-WRF achieves notable improvements, in terms of both wind speed and power, relative to various forecasting benchmarks including physics-based, hybrid, statistical, and deep learning methods.
KW - Offshore wind energy
KW - Physics-informed learning
KW - Probabilistic forecasting
KW - Spatio-temporal modeling
UR - http://www.scopus.com/inward/record.url?scp=85183570883&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85183570883&partnerID=8YFLogxK
U2 - 10.1016/j.renene.2023.119934
DO - 10.1016/j.renene.2023.119934
M3 - Article
AN - SCOPUS:85183570883
SN - 0960-1481
VL - 223
JO - Renewable Energy
JF - Renewable Energy
M1 - 119934
ER -