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Warming experiments underpredict plant phenological responses to climate change.

Authors :
Wolkovich EM
Cook BI
Allen JM
Crimmins TM
Betancourt JL
Travers SE
Pau S
Regetz J
Davies TJ
Kraft NJ
Ault TR
Bolmgren K
Mazer SJ
McCabe GJ
McGill BJ
Parmesan C
Salamin N
Schwartz MD
Cleland EE
Source :
Nature [Nature] 2012 May 02; Vol. 485 (7399), pp. 494-7. Date of Electronic Publication: 2012 May 02.
Publication Year :
2012

Abstract

Warming experiments are increasingly relied on to estimate plant responses to global climate change. For experiments to provide meaningful predictions of future responses, they should reflect the empirical record of responses to temperature variability and recent warming, including advances in the timing of flowering and leafing. We compared phenology (the timing of recurring life history events) in observational studies and warming experiments spanning four continents and 1,634 plant species using a common measure of temperature sensitivity (change in days per degree Celsius). We show that warming experiments underpredict advances in the timing of flowering and leafing by 8.5-fold and 4.0-fold, respectively, compared with long-term observations. For species that were common to both study types, the experimental results did not match the observational data in sign or magnitude. The observational data also showed that species that flower earliest in the spring have the highest temperature sensitivities, but this trend was not reflected in the experimental data. These significant mismatches seem to be unrelated to the study length or to the degree of manipulated warming in experiments. The discrepancy between experiments and observations, however, could arise from complex interactions among multiple drivers in the observational data, or it could arise from remediable artefacts in the experiments that result in lower irradiance and drier soils, thus dampening the phenological responses to manipulated warming. Our results introduce uncertainty into ecosystem models that are informed solely by experiments and suggest that responses to climate change that are predicted using such models should be re-evaluated.

Details

Language :
English
ISSN :
1476-4687
Volume :
485
Issue :
7399
Database :
MEDLINE
Journal :
Nature
Publication Type :
Academic Journal
Accession number :
22622576
Full Text :
https://doi.org/10.1038/nature11014