TY - JOUR
T1 - Projected changes of typhoon intensity in a regional climate model
T2 - Development of a machine learning bias correction scheme
AU - Tan, Jinkai
AU - Chen, Sheng
AU - Lee, Chia Ying
AU - Dong, Guangtao
AU - Hu, Wenyan
AU - Wang, Jun
N1 - Publisher Copyright:
© 2020 Royal Meteorological Society
PY - 2021/3/30
Y1 - 2021/3/30
N2 - A machine learning-based bias correction scheme was developed to adjust the simulated Western North Pacific typhoon intensity in a 25-km regional climate model (RCM). The bias correction scheme, MLERA, consists of a hybrid neural network, which takes modelled atmospheric and oceanic conditions near the storm centre as input. We use air temperature, specific humidity, and relative vorticity at 300 hPa, geopotential height at 700 hPa, wind speed at 850 hPa, sea-level pressure, 10-m wind speed, and total air-sea fluxes. Those predictors are selected using least absolute shrinkage and selection operator (Lasso) algorithm and principal component analysis (PCA). Because there is no ‘ground truth’ for RCM simulated storms, we train and test MLERA using ERA-Interim reanalysis and best-track data. The intensity statistics estimated from MLERA match well with those from observations. MLERA, when applied to RCM history base period, increases the likelihood of simulated typhoons (with wind speed >33 m/s) from 40.8 to 73.9% in the direct simulation. Meanwhile, the RCM itself produces no C3+ storms (wind speed >50 m/s) in both RCP4.5 and RCP8.5 scenarios, while MLERA significantly increases those storms. MLERA suggests an increasing trend of the frequency of violent typhoons from near-term (2031–2060) to long-term (2069–2098). Such an increase is consistent with our understanding that a warming climate will increase the storm intensity. The present study shows the potential of the machine learning technique for bias correcting cyclone intensity in RCMs. Furthermore, the proposed algorithm could also be applied to the next generation of high-resolution global climate models, which may have a spatial grid spacing close to today's RCMs.
AB - A machine learning-based bias correction scheme was developed to adjust the simulated Western North Pacific typhoon intensity in a 25-km regional climate model (RCM). The bias correction scheme, MLERA, consists of a hybrid neural network, which takes modelled atmospheric and oceanic conditions near the storm centre as input. We use air temperature, specific humidity, and relative vorticity at 300 hPa, geopotential height at 700 hPa, wind speed at 850 hPa, sea-level pressure, 10-m wind speed, and total air-sea fluxes. Those predictors are selected using least absolute shrinkage and selection operator (Lasso) algorithm and principal component analysis (PCA). Because there is no ‘ground truth’ for RCM simulated storms, we train and test MLERA using ERA-Interim reanalysis and best-track data. The intensity statistics estimated from MLERA match well with those from observations. MLERA, when applied to RCM history base period, increases the likelihood of simulated typhoons (with wind speed >33 m/s) from 40.8 to 73.9% in the direct simulation. Meanwhile, the RCM itself produces no C3+ storms (wind speed >50 m/s) in both RCP4.5 and RCP8.5 scenarios, while MLERA significantly increases those storms. MLERA suggests an increasing trend of the frequency of violent typhoons from near-term (2031–2060) to long-term (2069–2098). Such an increase is consistent with our understanding that a warming climate will increase the storm intensity. The present study shows the potential of the machine learning technique for bias correcting cyclone intensity in RCMs. Furthermore, the proposed algorithm could also be applied to the next generation of high-resolution global climate models, which may have a spatial grid spacing close to today's RCMs.
KW - RCM
KW - bias correction
KW - intensity
KW - machine learning
KW - typhoon
UR - https://www.scopus.com/pages/publications/85099049062
U2 - 10.1002/joc.6987
DO - 10.1002/joc.6987
M3 - 文章
AN - SCOPUS:85099049062
SN - 0899-8418
VL - 41
SP - 2749
EP - 2764
JO - International Journal of Climatology
JF - International Journal of Climatology
IS - 4
ER -