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      Comparison of large‐scale citizen science data and long‐term study data for phenology modeling

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          Abstract

          Large‐scale observational data from citizen science efforts are becoming increasingly common in ecology, and researchers often choose between these and data from intensive local‐scale studies for their analyses. This choice has potential trade‐offs related to spatial scale, observer variance, and interannual variability. Here we explored this issue with phenology by comparing models built using data from the large‐scale, citizen science USA National Phenology Network ( USANPN) effort with models built using data from more intensive studies at Long Term Ecological Research ( LTER) sites. We built statistical and process based phenology models for species common to each data set. From these models, we compared parameter estimates, estimates of phenological events, and out‐of‐sample errors between models derived from both USANPN and LTER data. We found that model parameter estimates for the same species were most similar between the two data sets when using simple models, but parameter estimates varied widely as model complexity increased. Despite this, estimates for the date of phenological events and out‐of‐sample errors were similar, regardless of the model chosen. Predictions for USANPN data had the lowest error when using models built from the USANPN data, while LTER predictions were best made using LTER‐derived models, confirming that models perform best when applied at the same scale they were built. This difference in the cross‐scale model comparison is likely due to variation in phenological requirements within species. Models using the USANPN data set can integrate parameters over a large spatial scale while those using an LTER data set can only estimate parameters for a single location. Accordingly, the choice of data set depends on the research question. Inferences about species‐specific phenological requirements are best made with LTER data, and if USANPN or similar data are all that is available, then analyses should be limited to simple models. Large‐scale predictive modeling is best done with the larger‐scale USANPN data, which has high spatial representation and a large regional species pool. LTER data sets, on the other hand, have high site fidelity and thus characterize inter‐annual variability extremely well. Future research aimed at forecasting phenology events for particular species over larger scales should develop models that integrate the strengths of both data sets.

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          Climate change, phenology, and phenological control of vegetation feedbacks to the climate system

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            Warming experiments underpredict plant phenological responses to climate change.

            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.
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              Shifts in flowering phenology reshape a subalpine plant community.

              Phenology--the timing of biological events--is highly sensitive to climate change. However, our general understanding of how phenology responds to climate change is based almost solely on incomplete assessments of phenology (such as first date of flowering) rather than on entire phenological distributions. Using a uniquely comprehensive 39-y flowering phenology dataset from the Colorado Rocky Mountains that contains more than 2 million flower counts, we reveal a diversity of species-level phenological shifts that bring into question the accuracy of previous estimates of long-term phenological change. For 60 species, we show that first, peak, and last flowering rarely shift uniformly and instead usually shift independently of one another, resulting in a diversity of phenological changes through time. Shifts in the timing of first flowering on average overestimate the magnitude of shifts in the timing of peak flowering, fail to predict shifts in the timing of last flowering, and underrepresent the number of species changing phenology in this plant community. Ultimately, this diversity of species-level phenological shifts contributes to altered coflowering patterns within the community, a redistribution of floral abundance across the season, and an expansion of the flowering season by more than I mo during the course of our study period. These results demonstrate the substantial reshaping of ecological communities that can be attributed to shifts in phenology.
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                Author and article information

                Contributors
                shawntaylor@weecology.org
                Journal
                Ecology
                Ecology
                10.1002/(ISSN)1939-9170
                ECY
                Ecology
                John Wiley and Sons Inc. (Hoboken )
                0012-9658
                1939-9170
                24 December 2018
                February 2019
                : 100
                : 2 ( doiID: 10.1002/ecy.2019.100.issue-2 )
                : e02568
                Affiliations
                [ 1 ] School of Natural Resources and Environment University of Florida PO Box 116455 Gainesville Florida 32611 USA
                [ 2 ] Department of Wildlife Ecology and Conservation University of Florida PO Box 110430 Gainesville Florida 32611 USA
                [ 3 ] Key Laboratory of Zoological Systematics and Evolution Institute of Zoology Chinese Academy of Sciences Beijing 100101 China
                [ 4 ] Informatics Institute University of Florida PO Box 115585 Gainesville Florida 32611 USA
                Author notes
                Author information
                http://orcid.org/0000-0002-6178-6903
                http://orcid.org/0000-0001-9369-9313
                http://orcid.org/0000-0003-3802-3331
                http://orcid.org/0000-0002-9096-3008
                http://orcid.org/0000-0001-6728-7745
                Article
                ECY2568
                10.1002/ecy.2568
                7378950
                30499218
                a0e22531-3cdd-40f9-b944-72d0605d2580
                © 2018 The Authors. Ecology published by Wiley Periodicals, Inc. on behalf of Ecological Society of America.

                This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.

                History
                : 31 May 2018
                : 19 September 2018
                : 01 October 2018
                Page count
                Figures: 4, Tables: 3, Pages: 11, Words: 8453
                Funding
                Funded by: Gordon and Betty Moore Foundation , open-funder-registry 10.13039/100000936;
                Award ID: GBMF4563
                Funded by: University of Florida Biodiversity Institute Graduate Research Fellowship
                Categories
                Article
                Articles
                Custom metadata
                2.0
                February 2019
                Converter:WILEY_ML3GV2_TO_JATSPMC version:5.8.5 mode:remove_FC converted:24.07.2020

                budburst,data integration,flowering,forecasting,long term ecological research,scale,usa national phenology network

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