We examine the skill of a new approach to climate field reconstructions
(CFRs) using an online paleoclimate data assimilation (PDA) method. Several
recent studies have foregone climate model forecasts during assimilation due
to the computational expense of running coupled global climate models
(CGCMs) and the relatively low skill of these forecasts on longer
timescales. Here we greatly diminish the computational cost by employing an
empirical forecast model (linear inverse model, LIM), which has been shown to
have skill comparable to CGCMs for forecasting annual-to-decadal surface
temperature anomalies. We reconstruct annual-average 2 m air temperature
over the instrumental period (1850–2000) using proxy records from the
PAGES 2k Consortium Phase 1 database; proxy models for estimating proxy
observations are calibrated on GISTEMP surface temperature analyses. We
compare results for LIMs calibrated using observational (Berkeley Earth),
reanalysis (20th Century Reanalysis), and CMIP5 climate model (CCSM4 and MPI)
data relative to a control offline reconstruction method. Generally, we find
that the usage of LIM forecasts for online PDA increases reconstruction
agreement with the instrumental record for both spatial fields and global
mean temperature (GMT). Specifically, the coefficient of efficiency (CE)
skill metric for detrended GMT increases by an average of 57 % over the
offline benchmark. LIM experiments display a common pattern of skill
improvement in the spatial fields over Northern Hemisphere land areas and in
the high-latitude North Atlantic–Barents Sea corridor. Experiments for
non-CGCM-calibrated LIMs reveal region-specific reductions in spatial skill
compared to the offline control, likely due to aspects of the LIM calibration
process. Overall, the CGCM-calibrated LIMs have the best performance when
considering both spatial fields and GMT. A comparison with the persistence
forecast experiment suggests that improvements are associated with the linear
dynamical constraints of the forecast and not simply persistence of
temperature anomalies
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