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Gap-filling workshop, Jena 09/2006Markus Reichstein Gap-filling: What, why, how? - an Introduction Gap-filling Comparison Workshop, September 18-20, 2006 Max Planck Institute for Biogeochemistry Biogeochemical Model-Data Integration Group M. Reichstein (Biogeochemical Model-Data Integration Group, Max- Planck Intstitute for Biogeochemistry, Jena)
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Gap-filling workshop, Jena 09/2006Markus Reichstein Why are we here – a short historical perspective ? 2001: Falge et al. FLUXNET (AMERIFLUX, EUROFLUX) 2002: MDS online gap-filling tool MIND 2003: Boost of gap-filling methods FLUXNET 2004: Eddy QC/QA/ GF/FP workshop CARBOEUROPE Today: Comp.of 15 methods + spin-offs from gap-filling
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Gap-filling workshop, Jena 09/2006Markus Reichstein What is a gap ? “Gap is a synonym for any hole or opening; a chasm. Many uses of the word are either literally or figuratively based on this meaning.” (wikipedia.org) “A gap is a series of missing data of eddy-covariance flux data (and/or meteorology) caused by instruments failure, unfavorable measurement conditions or removal of data point during the quality control.” –Univariate gaps (e.g. only NEE) –Multivariate flux gaps (e.g. all fluxes missing sonic failure) –Flux and meteo gaps (e.g. all missing storm or Xmas) –Length of a gap?
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Gap-percentage varies Falge et al. 2001 CE database ~30% (without ½ year gaps)
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Gap-filling workshop, Jena 09/2006Markus Reichstein Gaps abundance Length of gap [days] Frequency [log(year -1 )] Length of gap [log(day)]
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Gap-filling workshop, Jena 09/2006Markus Reichstein Days affected by gaps Length of gap [days] Total days affected [days/year] Length of gap [days] Cumulative percentage affected
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Gap-filling workshop, Jena 09/2006Markus Reichstein Why ? ‘Annual sums’ Model validation at daily to monthly scale Syntheses at monthly time scale Model parameterization at hourly to daily scale Statistical time-series analysis Uncertainty estimation Modellers Data analysts
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Gap-filling workshop, Jena 09/2006Markus Reichstein Available data at daily and monthly scale before and after gap-filling
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Gap-filling workshop, Jena 09/2006Markus Reichstein How? Gap-filling requirements –Conservation of annual sums –Conservation of fluxes at other time integrals –Minimum of a-priori theoretical assumptions –Usage of a much as possible information from data –Applicability with available data –Conversation of statistical time-series properties –Availability of conditional error estimate
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Development of gap-filling methods
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Gap-filling workshop, Jena 09/2006Markus Reichstein Classification of gap-filling methods With vs. without meteorological drivers Data-oriented versus process-oriented approaches Incorporation vs. ignorance of autocorrelation Smooth versus non-smooth methods Look-up tables vs. regressions vs. neural networks
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Gap-filling workshop, Jena 09/2006Markus Reichstein Gap-filling methods characterized Meteo infoAuto- correlation Theo. assumption Conservation of error MDV-x-- LUTx--- MDS, MLUTxx-(x) NLIN, DAx-X- SDPxx(x)x ANNx(x)--
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Gap-filling workshop, Jena 09/2006Markus Reichstein Conclusions Gap-filling is important from different perspectives Annual NEE is not the only target Existence of vast majority of methods with different characteristics – need for a characterization and cross- comparison
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Gap-filling workshop, Jena 09/2006Markus Reichstein Conclusions II Open questions Can we transfer methods established for NEE also to energy fluxes and meteorological data ? How can discontinuous systems be gap-filled ? How critically do gap-filling methods affect the statistical properties of the time-series? How can gap-filling be used for uncertainty estimation of flux data ? And for flux-partitioning?
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