TY - JOUR
T1 - An analog technique to improve storm wind speed prediction using a dual NWP model approach
AU - Yang, Jaemo
AU - Astitha, Marina
AU - Monache, Luca Delle
AU - Alessandrini, Stefano
N1 - Publisher Copyright:
© 2018 American Meteorological Society.
PY - 2018/12/1
Y1 - 2018/12/1
N2 - This study presents a new implementation of the analog ensemble method (AnEn) to improve the prediction of wind speed for 146 storms that have impacted the northeast United States in the period 2005-16. The AnEn approach builds an ensemble by using a set of past observations that correspond to the best analogs of numerical weather prediction (NWP). Unlike previous studies, dual-predictor combinations are used to generate AnEn members, which include wind speed, wind direction, and 2-m temperature, simulated by two state-of-the-science atmospheric models [the Weather Research and Forecasting (WRF) Model and the Regional Atmospheric Modeling System-Integrated Community Limited Area Modeling System (RAMS-ICLAMS)]. Bias correction is also applied to each analog to gain additional benefits in predicting wind speed. Both AnEn and the bias-corrected analog ensemble (BCAnEn) are tested with a weighting strategy, which optimizes the predictor combination with root-mean-square error (RMSE) minimization. A leave-one-out cross validation is implemented, that is, each storm is predicted using the remaining 145 as the training dataset, with modeled and observed values over 80 stations in the northeast United States. The results show improvements of 9%-42% and 1%-29% with respect to originalWRF and ICLAMS simulations, as measured by the RMSE of individual storms. Moreover, for two high-impact tropical storms (Irene and Sandy), BCAnEn significantly reduces the error of raw prediction (average RMSE reduction of 22% for Irene and 26% for Sandy). The AnEn and BCAnEn techniques demonstrate their potential to combine different NWPmodels to improve storm wind speed prediction, compared to the use of a single NWP.
AB - This study presents a new implementation of the analog ensemble method (AnEn) to improve the prediction of wind speed for 146 storms that have impacted the northeast United States in the period 2005-16. The AnEn approach builds an ensemble by using a set of past observations that correspond to the best analogs of numerical weather prediction (NWP). Unlike previous studies, dual-predictor combinations are used to generate AnEn members, which include wind speed, wind direction, and 2-m temperature, simulated by two state-of-the-science atmospheric models [the Weather Research and Forecasting (WRF) Model and the Regional Atmospheric Modeling System-Integrated Community Limited Area Modeling System (RAMS-ICLAMS)]. Bias correction is also applied to each analog to gain additional benefits in predicting wind speed. Both AnEn and the bias-corrected analog ensemble (BCAnEn) are tested with a weighting strategy, which optimizes the predictor combination with root-mean-square error (RMSE) minimization. A leave-one-out cross validation is implemented, that is, each storm is predicted using the remaining 145 as the training dataset, with modeled and observed values over 80 stations in the northeast United States. The results show improvements of 9%-42% and 1%-29% with respect to originalWRF and ICLAMS simulations, as measured by the RMSE of individual storms. Moreover, for two high-impact tropical storms (Irene and Sandy), BCAnEn significantly reduces the error of raw prediction (average RMSE reduction of 22% for Irene and 26% for Sandy). The AnEn and BCAnEn techniques demonstrate their potential to combine different NWPmodels to improve storm wind speed prediction, compared to the use of a single NWP.
KW - Atmosphere
KW - Ensembles
KW - Extreme events
KW - Numerical weather prediction/forecasting
KW - Wind
UR - https://www.scopus.com/pages/publications/85058077406
U2 - 10.1175/MWR-D-17-0198.1
DO - 10.1175/MWR-D-17-0198.1
M3 - Article
AN - SCOPUS:85058077406
SN - 0027-0644
VL - 146
SP - 4057
EP - 4077
JO - Monthly Weather Review
JF - Monthly Weather Review
IS - 12
ER -