TY - JOUR
T1 - Pooling data improves multimodel idf estimates over median-based idf estimates
T2 - Analysis over the susquehanna and florida
AU - Srivastava, Abhishekh Kumar
AU - Grotjahn, Richard
AU - Ullrich, Paul Aaron
AU - Sadegh, Mojtaba
N1 - Publisher Copyright:
Ó 2021 American Meteorological Society.
PY - 2021/4
Y1 - 2021/4
N2 - Traditional multimodel methods for estimating future changes in precipitation intensity, duration, and frequency (IDF) curves rely on mean or median of models’ IDF estimates. Such multimodel estimates are impaired by large estimation uncertainty, shadowing their efficacy in planning efforts. Here, assuming that each climate model is one representation of the underlying data generating process, i.e., the Earth system, we propose a novel extension of current methods through pooling model data: (i) evaluate performance of climate models in simulating the spatial and temporal variability of the observed annual maximum precipitation (AMP), (ii) bias-correct and pool historical and future AMP data of reasonably performing models, and (iii) compute IDF estimates in a nonstationary framework from pooled historical and future model data. Pooling enhances fitting of the extreme value distribution to the data and assumes that data from reasonably performing models represent samples from the ‘‘true’’ underlying data generating distribution. Through Monte Carlo simulations with synthetic data, we show that return periods derived from pooled data have smaller biases and lesser uncertainty than those derived from ensembles of individual model data. We apply this method to NA-CORDEX models to estimate changes in 24-h precipitation intensity–frequency (PIF) estimates over the Susquehanna watershed and Florida peninsula. Our approach identifies significant future changes at more stations compared to median-based PIF estimates. The analysis suggests that almost all stations over the Susquehanna and at least two-thirds of the stations over the Florida peninsula will observe significant increases in 24-h precipitation for 2–100-yr return periods.
AB - Traditional multimodel methods for estimating future changes in precipitation intensity, duration, and frequency (IDF) curves rely on mean or median of models’ IDF estimates. Such multimodel estimates are impaired by large estimation uncertainty, shadowing their efficacy in planning efforts. Here, assuming that each climate model is one representation of the underlying data generating process, i.e., the Earth system, we propose a novel extension of current methods through pooling model data: (i) evaluate performance of climate models in simulating the spatial and temporal variability of the observed annual maximum precipitation (AMP), (ii) bias-correct and pool historical and future AMP data of reasonably performing models, and (iii) compute IDF estimates in a nonstationary framework from pooled historical and future model data. Pooling enhances fitting of the extreme value distribution to the data and assumes that data from reasonably performing models represent samples from the ‘‘true’’ underlying data generating distribution. Through Monte Carlo simulations with synthetic data, we show that return periods derived from pooled data have smaller biases and lesser uncertainty than those derived from ensembles of individual model data. We apply this method to NA-CORDEX models to estimate changes in 24-h precipitation intensity–frequency (PIF) estimates over the Susquehanna watershed and Florida peninsula. Our approach identifies significant future changes at more stations compared to median-based PIF estimates. The analysis suggests that almost all stations over the Susquehanna and at least two-thirds of the stations over the Florida peninsula will observe significant increases in 24-h precipitation for 2–100-yr return periods.
KW - Atmosphere
KW - Climate change
KW - Extreme events
KW - Hydrology
KW - Hydrometeorology
KW - Model evaluation/performance
KW - Regional models
KW - Statistical techniques
KW - Watersheds
UR - http://www.scopus.com/inward/record.url?scp=85117705203&partnerID=8YFLogxK
U2 - 10.1175/JHM-D-20-0180.1
DO - 10.1175/JHM-D-20-0180.1
M3 - Article
AN - SCOPUS:85117705203
SN - 1525-755X
VL - 22
SP - 971
EP - 995
JO - Journal of Hydrometeorology
JF - Journal of Hydrometeorology
IS - 4
ER -