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Skill of real-time operational forecasts with the APCC multi-model ensemble prediction system during the period 2008–2015

This paper assesses the real-time 1-month lead forecasts of 3-month (seasonal) mean temperature and precipitation on a monthly basis issued by the Asia-Pacific Economic Cooperation Climate Center (APCC) for 2008–2015 (8 years, 96 forecasts). It shows the current level of the APCC operational multi-m...

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Published in:Climate dynamics 2017-12, Vol.49 (11-12), p.4141-4156
Main Authors: Min, Young-Mi, Kryjov, Vladimir N., Oh, Sang Myeong, Lee, Hyun-Ju
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description This paper assesses the real-time 1-month lead forecasts of 3-month (seasonal) mean temperature and precipitation on a monthly basis issued by the Asia-Pacific Economic Cooperation Climate Center (APCC) for 2008–2015 (8 years, 96 forecasts). It shows the current level of the APCC operational multi-model prediction system performance. The skill of the APCC forecasts strongly depends on seasons and regions that it is higher for the tropics and boreal winter than for the extratropics and boreal summer due to direct effects and remote teleconnections from boundary forcings. There is a negative relationship between the forecast skill and its interseasonal variability for both variables and the forecast skill for precipitation is more seasonally and regionally dependent than that for temperature. The APCC operational probabilistic forecasts during this period show a cold bias (underforecasting of above-normal temperature and overforecasting of below-normal temperature) underestimating a long-term warming trend. A wet bias is evident for precipitation, particularly in the extratropical regions. The skill of both temperature and precipitation forecasts strongly depends upon the ENSO strength. Particularly, the highest forecast skill noted in 2015/2016 boreal winter is associated with the strong forcing of an extreme El Nino event. Meanwhile, the relatively low skill is associated with the transition and/or continuous ENSO-neutral phases of 2012–2014. As a result the skill of real-time forecast for boreal winter season is higher than that of hindcast. However, on average, the level of forecast skill during the period 2008–2015 is similar to that of hindcast.
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subjects Atmospheric temperature
Bias
Climate and economics
Climatology
Earth and Environmental Science
Earth Sciences
El Nino
El Nino events
El Nino phenomena
El Nino-Southern Oscillation event
Evaluation
Forecasts and trends
Geophysics/Geodesy
Lead
Mathematical models
Mean temperatures
Oceanography
Precipitation
Precipitation (Meteorology)
Precipitation forecasting
Real time
Regions
Seasons
Southern Oscillation
Temperature
Temperature effects
Tropical environments
Weather forecasting
Winter
title Skill of real-time operational forecasts with the APCC multi-model ensemble prediction system during the period 2008–2015
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