PREDICTABILITY OF THE SUB-SEASONAL TO SEASONAL (S2S) SCALE RAINFALL IN INDONESIA
Sub-Seasonal to Seasonal (S2S) prediction models have been developed but not operationally run by National Hydrometeorological Services (NHMS) around the world due to the still limited forcast skill. However, there has not been comprehensive evaluation of S2S rainfall prediction in Indonesia....
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id-itb.:852832024-08-20T09:39:59ZPREDICTABILITY OF THE SUB-SEASONAL TO SEASONAL (S2S) SCALE RAINFALL IN INDONESIA Hanif Damayanti, Rosi Indonesia Theses S2S, ECMWF, zonal wind rainfall 850 hPa, MJO, Equatorial Rossby INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/85283 Sub-Seasonal to Seasonal (S2S) prediction models have been developed but not operationally run by National Hydrometeorological Services (NHMS) around the world due to the still limited forcast skill. However, there has not been comprehensive evaluation of S2S rainfall prediction in Indonesia. In this study, the skill of the ECMWF (European Centre for Medium-Range Weather Forecasts) S2S prediction model in Indonesia is evaluated using three commonly used metrics i.e., Root Mean Squared Error (RMSE), bias, and correlation, with National Centers for Environmental Prediction- National Center for Atmospheric Research (NCEPNCAR) Reanalysis I data to represent observations. The results show that the skill evolution of rainfall, as well as 850 hPa wind, prediction over Indonesia drops sharply in the second week. Although the results are consistent with those of global and entire tropical domains, it is also found that the prediction skill shows strong seasonal and variable dependance with higher predictability of 850 hPa zonal during March-April-May (MAM) and June-July-August (JJA). On the other hand, the skill 850 hPa meridional wind prediction shows higher skill during MAM and September-October-November (SON), whereas the skill of rainfall prediction is better than the others during December-January-February (DJF). Further examination of the 850 hPa winds and rainfall as potential source of predictability is conducted by deseasonalizing and apllying Empirical Orthogonal Function (EOF) analysis to the time series data. The results indicate that there is no single dominant pattern of S2S rainfall variability. Nevertheless, some largest EOFs are examined in more detail. Lag-correlation analyses between the principal components (PC) of rainfall and 850 hPa winds show that eastward-propagating Madden-Julian Oscillation (MJO), and west-ward propagating equatorial Rossby waves might serve as the sources of S2S predictability. Moreover, the largest percentage of rainfall EOF is associated with eastward Madden-Julian Oscillation (MJO) propagation. A case study of rainfall event during May 27 to July 14, 2015 shows that 850 hPa zonal wind is the most relevant predictor for the rainfall pattern, but the predictability of the zonal wind is found to be weak during active MJO period. Another case of heavy rainfall event of January 29, 2020 has also been studied, which exhibits the influence of westward equatorial Rossby (ER) wave propagation. In this case, rainfall seems to be the best predictor for high wave-number ER wave. However, the predictability of the ER wave is also weak around the time of convective event. Results of this study indicate that S2S rainfall prediction in Indonesia is still a challenging problem. As it is found in previous studies, this study confirms that the largest S2S rainfall variability is influenced by MJO phenomenon. In addition, more sporadic convective events can be attributed to high wave-number ER wave propagation. In either case, the skill of S2S prediction model is still limited in representing both MJO and ER wave propagation during active convective phases. Therefore, application of S2S prediction in Indonesia may require more advanced post-processing of model output to improve its accuracy and skill. This study has focused on deterministic skill and has not addressed the probabilistic skill of the S2S forecast. text |
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Sub-Seasonal to Seasonal (S2S) prediction models have been developed but not
operationally run by National Hydrometeorological Services (NHMS) around the
world due to the still limited forcast skill. However, there has not been
comprehensive evaluation of S2S rainfall prediction in Indonesia. In this study, the
skill of the ECMWF (European Centre for Medium-Range Weather Forecasts) S2S
prediction model in Indonesia is evaluated using three commonly used metrics i.e.,
Root Mean Squared Error (RMSE), bias, and correlation, with National Centers
for Environmental Prediction- National Center for Atmospheric Research (NCEPNCAR)
Reanalysis I data to represent observations. The results show that the skill
evolution of rainfall, as well as 850 hPa wind, prediction over Indonesia drops
sharply in the second week. Although the results are consistent with those of global
and entire tropical domains, it is also found that the prediction skill shows strong
seasonal and variable dependance with higher predictability of 850 hPa zonal
during March-April-May (MAM) and June-July-August (JJA). On the other hand,
the skill 850 hPa meridional wind prediction shows higher skill during MAM and
September-October-November (SON), whereas the skill of rainfall prediction is
better than the others during December-January-February (DJF).
Further examination of the 850 hPa winds and rainfall as potential source of
predictability is conducted by deseasonalizing and apllying Empirical Orthogonal
Function (EOF) analysis to the time series data. The results indicate that there is
no single dominant pattern of S2S rainfall variability. Nevertheless, some largest
EOFs are examined in more detail. Lag-correlation analyses between the principal
components (PC) of rainfall and 850 hPa winds show that eastward-propagating
Madden-Julian Oscillation (MJO), and west-ward propagating equatorial Rossby
waves might serve as the sources of S2S predictability. Moreover, the largest
percentage of rainfall EOF is associated with eastward Madden-Julian Oscillation
(MJO) propagation. A case study of rainfall event during May 27 to July 14, 2015
shows that 850 hPa zonal wind is the most relevant predictor for the rainfall
pattern, but the predictability of the zonal wind is found to be weak during active
MJO period. Another case of heavy rainfall event of January 29, 2020 has also
been studied, which exhibits the influence of westward equatorial Rossby (ER) wave
propagation. In this case, rainfall seems to be the best predictor for high wave-number ER wave. However, the predictability of the ER wave is also weak around
the time of convective event.
Results of this study indicate that S2S rainfall prediction in Indonesia is still a
challenging problem. As it is found in previous studies, this study confirms that the
largest S2S rainfall variability is influenced by MJO phenomenon. In addition,
more sporadic convective events can be attributed to high wave-number ER wave
propagation. In either case, the skill of S2S prediction model is still limited in
representing both MJO and ER wave propagation during active convective phases.
Therefore, application of S2S prediction in Indonesia may require more advanced
post-processing of model output to improve its accuracy and skill. This study has
focused on deterministic skill and has not addressed the probabilistic skill of the
S2S forecast. |
format |
Theses |
author |
Hanif Damayanti, Rosi |
spellingShingle |
Hanif Damayanti, Rosi PREDICTABILITY OF THE SUB-SEASONAL TO SEASONAL (S2S) SCALE RAINFALL IN INDONESIA |
author_facet |
Hanif Damayanti, Rosi |
author_sort |
Hanif Damayanti, Rosi |
title |
PREDICTABILITY OF THE SUB-SEASONAL TO SEASONAL (S2S) SCALE RAINFALL IN INDONESIA |
title_short |
PREDICTABILITY OF THE SUB-SEASONAL TO SEASONAL (S2S) SCALE RAINFALL IN INDONESIA |
title_full |
PREDICTABILITY OF THE SUB-SEASONAL TO SEASONAL (S2S) SCALE RAINFALL IN INDONESIA |
title_fullStr |
PREDICTABILITY OF THE SUB-SEASONAL TO SEASONAL (S2S) SCALE RAINFALL IN INDONESIA |
title_full_unstemmed |
PREDICTABILITY OF THE SUB-SEASONAL TO SEASONAL (S2S) SCALE RAINFALL IN INDONESIA |
title_sort |
predictability of the sub-seasonal to seasonal (s2s) scale rainfall in indonesia |
url |
https://digilib.itb.ac.id/gdl/view/85283 |
_version_ |
1822010665436446720 |