Abstract

Empirical models, designed to predict surface variables over seasons to decades ahead, provide useful benchmarks for comparison against the performance of dynamical forecast systems; they may also be employable as predictive tools for use by climate services in their own right. A new global empirical decadal prediction system is presented, based on a multiple linear regression approach designed to produce probabilistic output for comparison against dynamical models. A global attribution is performed initially to identify the important forcing and predictor components of the model . Ensemble hindcasts of surface air temperature anomaly fields are then generated, based on the forcings and predictors identified as important, under a series of different prediction ‘modes’ and their performance is evaluated. The modes include a real-time setting, a scenario in which future volcanic forcings are prescribed during the hindcasts, and an approach which exploits knowledge of the forced trend. A two-tier prediction system, which uses knowledge of future sea surface temperatures in the Pacific and Atlantic Oceans, is also tested, but within a perfect knowledge framework. Each mode is designed to identify sources of predictability and uncertainty, as well as investigate different approaches to the design of decadal prediction systems for operational use. It is found that the empirical model shows skill above that of persistence hindcasts for annual means at lead times of up to 10 years ahead in all of the prediction modes investigated. It is suggested that hindcasts which exploit full knowledge of the forced trend due to increasing greenhouse gases throughout the hindcast period can provide more robust estimates of model bias for the calibration of the empirical model in an operational setting. The two-tier system shows potential for improved real-time prediction, given the assumption that skilful predictions of large-scale modes of variability are available. The empirical model framework has been designed with enough flexibility to facilitate further developments, including the prediction of other surface variables and the ability to incorporate additional predictors within the model that are shown to contribute significantly to variability at the local scale. It is also semi-operational in the sense that forecasts have been produced for the coming decade and can be updated when additional data becomes available.

Highlights

  • Near-term climate prediction, on seasonal to multi-decadal timescales, has been widely recognised as an important field in recent years (Smith et al 2012; Kirtman et al 2013; Doblas-Reyes et al 2013a; Meehl et al 2014; Kirtman et al 2014)

  • In all forecasts predictive information is exploited from the externally forced variability associated with natural and anthropogenic activity. This includes greenhouse gas (GHG) forcing, solar irradiance, volcanic aerosols and ‘other’ anthropogenic radiative forcings (OA). These forcings are prescribed in the model as global averages according to the CMIP5 historical scenario and Representative Concentration Pathway (RCP) 4.5 (Meinshausen et al 2011; Thomson et al 2011) for future projections, which are all given in units of W/m2 relative to a 1750 baseline

  • The fitted model coefficients convert the individual components from their native units (W/m2 for the forcings and K for El-Niño Southern Oscillation (ENSO)) to equivalent global annual mean surface air temperature anomalies relative to the baseline 1750

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Summary

Introduction

Near-term climate prediction, on seasonal to multi-decadal timescales, has been widely recognised as an important field in recent years (Smith et al 2012; Kirtman et al 2013; Doblas-Reyes et al 2013a; Meehl et al 2014; Kirtman et al 2014). The model, based on a multiple linear regression approach similar to Lean and Rind (2008) and Eden et al (2015), uses observed and projected global forcings based on well-understood physical relationships, as well as large-scale predictors that have been shown to represent aspects of local scale variability, for example ENSO. This approach is used to produce probabilistic hindcasts and predictions on time scales of 1 year to a decade ahead.

Empirical model design
Identifying important predictors
Factors influencing global mean temperature
Regional patterns of temperature change
Decadal hindcasts
Generating ensembles
Bias correction
Hindcast skill
The standard model
Additional predictors
Forecast for 2016–2025
Findings
Conclusions
Full Text
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