TY - JOUR
T1 - Object-based analog forecasts for surface wind speed
AU - Frediani, Maria E.B.
AU - Hopson, Thomas M.
AU - Hacker, Joshua P.
AU - Anagnostou, Emmanouil N.
AU - Delle Monache, Luca
AU - Vandenberghe, Francois
N1 - Publisher Copyright:
© 2017 American Meteorological Society.
PY - 2017/12/1
Y1 - 2017/12/1
N2 - Analogs are used as a forecast postprocessing technique, in which a statistical forecast is derived from past prognostic states. This study proposes a method to identify analogs through spatial objects, which are then used to create forecast ensembles. The object-analog technique preserves the field's spatial relationships, reduces spatial dimensionality, and consequently facilitates the use of artificial intelligence algorithms to improve analog selection. Forecast objects are created with a three-step object selection, combining standard image processing algorithms. The resulting objects are used to find similar forecasts in a training set with a similarity measure based on object area intersection and magnitude. Storm-induced power outages in the Northeast United States motivated the method's validation for 10-m AGL wind speed forecasts. The training set comprises reforecasts and reanalyses of events that caused damages to the utility infrastructure. The corresponding reanalyses of the best reforecast analogs are used to produce the object-analog ensemble forecasts. The forecasts are compared with other analog forecast methods. Analogs representing lower and upper predictability limits provide references to distinguish the method's ability (to find good analogs) from the training set's ability (to provide good analogs) to generate skillful ensemble forecasts. The object-analog forecasts are competitively skillful compared to simpler analog techniques with an advantage of lower spatial dimensionality, while generating reliable ensemble forecasts, with reduced systematic and random errors, maintaining correlation, and improving Brier scores.
AB - Analogs are used as a forecast postprocessing technique, in which a statistical forecast is derived from past prognostic states. This study proposes a method to identify analogs through spatial objects, which are then used to create forecast ensembles. The object-analog technique preserves the field's spatial relationships, reduces spatial dimensionality, and consequently facilitates the use of artificial intelligence algorithms to improve analog selection. Forecast objects are created with a three-step object selection, combining standard image processing algorithms. The resulting objects are used to find similar forecasts in a training set with a similarity measure based on object area intersection and magnitude. Storm-induced power outages in the Northeast United States motivated the method's validation for 10-m AGL wind speed forecasts. The training set comprises reforecasts and reanalyses of events that caused damages to the utility infrastructure. The corresponding reanalyses of the best reforecast analogs are used to produce the object-analog ensemble forecasts. The forecasts are compared with other analog forecast methods. Analogs representing lower and upper predictability limits provide references to distinguish the method's ability (to find good analogs) from the training set's ability (to provide good analogs) to generate skillful ensemble forecasts. The object-analog forecasts are competitively skillful compared to simpler analog techniques with an advantage of lower spatial dimensionality, while generating reliable ensemble forecasts, with reduced systematic and random errors, maintaining correlation, and improving Brier scores.
KW - Forecast verification/skill
KW - Forecasting techniques
KW - Numerical weather prediction/forecasting
KW - Pattern detection
KW - Probability forecasts/models/distribution
KW - Statistical forecasting
UR - https://www.scopus.com/pages/publications/85040458235
U2 - 10.1175/MWR-D-17-0012.1
DO - 10.1175/MWR-D-17-0012.1
M3 - Article
AN - SCOPUS:85040458235
SN - 0027-0644
VL - 145
SP - 5083
EP - 5102
JO - Monthly Weather Review
JF - Monthly Weather Review
IS - 12
ER -