Tim OsbornClimatic Research Unit, School of Environmental Sciences, UEA
Twitter: @TimOsbornClimEGU, 19 April 2016
Interdecadal variability in surface climate during the instrumental period
2006‐2012 ref
1986‐2005 ref
– Expert judgement: reduce near‐term CMIP5 changes by 10% to 40% depending on interpretation of variability/slowdown
• 10% relative to 2006‐2012 baseline (implies slowdown is not unforced variability)• 40% relative to 1986‐2005 baseline (is that compatible with long‐term projections?)
– Due to unforced variability & uncertainty in forcings, ranges of projections from groups of models with high & low climate response do not fully separate for another few decades
A “forced” signal was first removed from the global‐mean temperature(multi‐model‐mean of low TCR CMIP5 models,
scaled to fit the observed temperature, then subtracted)
Correlation between the slopes of piecewise continuous trends fitted to global‐mean temperature and fitted to zonal‐mean temperature, for a range of trend lengths
HadCRUT4 global temperature & HadCRUT4 zonal‐mean temperatures
Correlation between the slopes of piecewise continuous trends fitted to global‐mean temperature and fitted to zonal‐mean temperature, for a range of trend lengths
HadCRUT4 global temperature & HadCRUT4 zonal‐mean temperatures
ENSO
AMO
Correlation between the slopes of piecewise continuous trends fitted to global‐mean temperature and fitted to zonal‐mean sea level pressure, for a range of trend lengths
HadCRUT4 global temperature & HadSLP2(r) zonal‐mean SLP
Correlation between the slopes of piecewise continuous trends fitted to global‐mean temperature and fitted to zonal‐mean sea level pressure, for a range of trend lengths
HadCRUT4 global temperature & HadSLP2(r) zonal‐mean SLP
Correlation between the slopes of piecewise continuous trends fitted to global‐mean temperature and fitted to zonal‐mean sea level pressure, for a range of trend lengths
HadCRUT4 global temperature & HadSLP2(r) zonal‐mean SLP
Stronger westward flow
Correlation between the slopes of piecewise continuous trends fitted to global‐mean temperature & fitted to 15S‐15N mean sea level pressure, for a range of trend lengths
HadCRUT4 global temperature & HadSLP2(r) mean of SLP between 15S and 15N for each longitude
Correlation between the slopes of piecewise continuous trends fitted to global‐mean temperature & fitted to 15S‐15N mean sea level pressure, for a range of trend lengths
HadCRUT4 global temperature & HadSLP2(r) mean of SLP between 15S and 15N for each longitude
El Nino
La Nina?
Summary
Motivation:• Constraining future projections using observations
– Influenced by what part of observing warming is forced and what is unforced variability
– Important for baselines and understanding near‐term & long‐term IPCC projections
Periods of warming & cooling (or faster & slower warming):• Have distinct spatial structures that depend on timescale
– ENSO then Pacific (Inter‐)Decadal Variability then Atlantic MultidecadalVariability
– Relative prominence of PDV and AMV depend on whether an estimated forced signal is removed, to leave an estimate of unforced variability (PDO and AMO)
This work was supported by the Natural Environment Research Council[NERC, grant number NE/N006348/1, part of the SMURPHS project]