Constraining low-frequency variability in climate projections to predict climate on decadal to multi-decadal timescales – a poor man's initialized prediction system
R. Mahmood, M. Donat, P. Ortega, F. Doblas-Reyes, C. Delgado-Torres, M. Samsó, P. Bretonnière
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引用次数: 7
Abstract
Abstract. Near-term projections of climate change are subject to substantial
uncertainty from internal climate variability. Here we present an approach
to reduce this uncertainty by sub-selecting those ensemble members that more closely resemble observed patterns of ocean temperature variability
immediately prior to a certain start date. This constraint aligns the
observed and simulated variability phases and is conceptually similar to
initialization in seasonal to decadal climate predictions. We apply this
variability constraint to large multi-model projection ensembles from the
Coupled Model Intercomparison Project phase 6 (CMIP6), consisting of more
than 200 ensemble members, and evaluate the skill of the constrained
ensemble in predicting the observed near-surface temperature, sea-level
pressure, and precipitation on decadal to multi-decadal timescales. We find that the constrained projections show significant skill in predicting the climate of the following 10 to 20 years, and added value over the ensemble of unconstrained projections. For the first decade after applying the constraint, the global patterns of skill are very similar and can even outperform those of the multi-model ensemble mean of initialized decadal hindcasts from the CMIP6 Decadal Climate Prediction Project (DCPP). In particular for temperature, larger areas show added skill in the constrained projections compared to DCPP, mainly in the Pacific and some neighboring land regions. Temperature and sea-level pressure in several regions are predictable multiple decades ahead, and show significant added value over the unconstrained projections for forecasting the first 2 decades and the 20-year averages. We further demonstrate the suitability of regional constraints to attribute predictability to certain ocean regions. On the example of global average temperature changes, we confirm the role of Pacific variability in modulating the reduced rate of global warming in the early 2000s, and demonstrate the predictability of reduced global warming rates over the following 15 years based on the climate conditions leading up to 1998. Our results illustrate that constraining internal variability can significantly improve the accuracy of near-term climate change estimates for the next few decades.