TY - JOUR
T1 - Utilizing probabilistic downscaling methods to develop streamflow forecasts from climate forecasts
AU - Mazrooei, Amirhossein
AU - Sankarasubramanian, A.
N1 - Publisher Copyright:
© 2017 American Meteorological Society.
PY - 2017/11/1
Y1 - 2017/11/1
N2 - Statistical information from ensembles of climate forecasts can be utilized in improving the streamflow predictions by using different downscaling methods. This study investigates the use of multinomial logistic regression (MLR) in downscaling large-scale ensemble climate forecasts into basin-scale probabilistic streamflow forecasts of categorical events over major river basins across the U.S. Sun Belt. The performance of MLR is then compared with the categorical forecasts estimated from the traditional approach, principal component regression (PCR). Results from both cross validation and split sampling reveal that in general, the probabilistic categorical forecasts from the MLR model have more accuracy and exhibit higher rank probability skill score (RPSS) compared to the PCR probabilistic forecasts. MLR forecasts are also more skillful than PCR forecasts during the winter season as well as for basins that exhibit high interannual variability in streamflows. The role of ensemble size of precipitation forecasts in developing MLR-based streamflow forecasts was also investigated. Because of its simplicity, MLR offers an alternate, reliable approach to developing categorical streamflow forecasts.
AB - Statistical information from ensembles of climate forecasts can be utilized in improving the streamflow predictions by using different downscaling methods. This study investigates the use of multinomial logistic regression (MLR) in downscaling large-scale ensemble climate forecasts into basin-scale probabilistic streamflow forecasts of categorical events over major river basins across the U.S. Sun Belt. The performance of MLR is then compared with the categorical forecasts estimated from the traditional approach, principal component regression (PCR). Results from both cross validation and split sampling reveal that in general, the probabilistic categorical forecasts from the MLR model have more accuracy and exhibit higher rank probability skill score (RPSS) compared to the PCR probabilistic forecasts. MLR forecasts are also more skillful than PCR forecasts during the winter season as well as for basins that exhibit high interannual variability in streamflows. The role of ensemble size of precipitation forecasts in developing MLR-based streamflow forecasts was also investigated. Because of its simplicity, MLR offers an alternate, reliable approach to developing categorical streamflow forecasts.
KW - Ensembles
KW - Model comparison
KW - Principal components analysis
KW - Probability forecasts/models/distribution
KW - Statistical forecasting
KW - Streamflow
UR - https://www.scopus.com/pages/publications/85035770341
U2 - 10.1175/JHM-D-17-0021.1
DO - 10.1175/JHM-D-17-0021.1
M3 - Article
AN - SCOPUS:85035770341
SN - 1525-755X
VL - 18
SP - 2959
EP - 2972
JO - Journal of Hydrometeorology
JF - Journal of Hydrometeorology
IS - 11
ER -