2020
DOI: 10.1029/2019gb006453
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Time of Emergence and Large Ensemble Intercomparison for Ocean Biogeochemical Trends

Abstract: Anthropogenically forced changes in ocean biogeochemistry are underway and critical for the ocean carbon sink and marine habitat. Detecting such changes in ocean biogeochemistry will require quantification of the magnitude of the change (anthropogenic signal) and the natural variability inherent to the climate system (noise). Here we use Large Ensemble (LE) experiments from four Earth system models (ESMs) with multiple emissions scenarios to estimate Time of Emergence (ToE) and partition projection uncertainty… Show more

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Cited by 52 publications
(56 citation statements)
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References 62 publications
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“…We identify the fingerprint using ensemble and global-mean output to maximize the influence of external forcing and dampen the in-LOVENDUSKI ET AL. (Lovenduski et al, 2016;McKinley et al, 2016;Schlunegger et al, 2019Schlunegger et al, , 2020. The spatial pattern associated with the COVID-related fingerprint is estimated as the regression coefficient of the ensemble mean at each location onto the standardized fingerprint (subtract mean and divide by standard deviation) over 2019-2024 for each emission scenario.…”
Section: Statistical Approachmentioning
confidence: 99%
“…We identify the fingerprint using ensemble and global-mean output to maximize the influence of external forcing and dampen the in-LOVENDUSKI ET AL. (Lovenduski et al, 2016;McKinley et al, 2016;Schlunegger et al, 2019Schlunegger et al, , 2020. The spatial pattern associated with the COVID-related fingerprint is estimated as the regression coefficient of the ensemble mean at each location onto the standardized fingerprint (subtract mean and divide by standard deviation) over 2019-2024 for each emission scenario.…”
Section: Statistical Approachmentioning
confidence: 99%
“…S8 weakly emergent over decadal timescales even after biome aggregation, indicating a stringent need for sustained observations over multiple decades and over broad regions for detection of secular trends. Nevertheless, model uncertainty of physical and ecological processes can be large 40 , and it is our hope that our study motivates further work to advance representation of processes that sustain marine growing season characteristics.…”
Section: Discussionmentioning
confidence: 98%
“…A number of climate parameters, including surface air temperature 33,34 , precipitation 35 , sea surface temperature and ocean carbon uptake 36 , are expected to permanently exceed recent natural variability within decades due to anthropogenic influence. The projections analysed here, however, suggest that a high-emissions signature of the AIS sea level contribution will not unambiguously emerge from the wide potential range of low-emission sea level projections for over 100 years due to current limitations in our understanding in ice flow and sliding and despite the significant climatic differences between scenarios.…”
Section: Discussionmentioning
confidence: 99%