Abstract
While rising global temperatures have altered global drought risk and
are projected to continue to change large-scale hydroclimate, it has
proved difficult to detect the influence of warming on drought-relevant
variables at regional scales. In addition to the inherent difficulty in
identifying signals in noisy data, detection and attribution studies
generally rely on general circulation models, which may fail to
accurately capture the characteristics of naturally forced and internal
hydroclimate variability. Here, we use a long tree-ring based
paleoclimate record of drought to estimate pre-industrial variability in
the Palmer Drought Severity Index (PDSI), a commonly used metric of
drought risk. Using a Bayesian framework, we estimate the temporal and
spatial characteristics of hydroclimate variability prior to 1850. We
assess whether observed twenty-first century PDSI is compatible with
this pre-industrial variability or is better explained by a forced
response that depends on global mean temperature. Our ressults suggest
that global warming likely contributed to dry PDSI in Eastern Europe,
the Mediterranean, and Arctic Russia and to wet PDSI in Northern Europe,
East-central Asia, and Tibet.