1 / 11

Investigation of Potential Predictability of the Baltic Sea Ecosystem

Biological Department Leibniz-Institute for Baltic Sea Research Warnemünde AMBER Project Research Cluster A (Time Series Analysis) WP 3 for more information: www.io-warnemuende.de/amber.html Supervisor: Joachim Dippner. Investigation of Potential Predictability of the Baltic Sea Ecosystem.

Télécharger la présentation

Investigation of Potential Predictability of the Baltic Sea Ecosystem

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Biological Department Leibniz-Institute for Baltic Sea Research Warnemünde AMBER Project Research Cluster A (Time Series Analysis) WP 3 for more information: www.io-warnemuende.de/amber.html Supervisor: Joachim Dippner Investigation of Potential Predictability of the Baltic Sea Ecosystem

  2. Prediction • The state of tomorrow is a function of the state of today • Prediction depends on the state of today • needs some kind of transfer function • should have a skill better than persistency

  3. Questions • Do we know the actual state? • Do we know the dominating processes? • Can we define a transfer function? – be it a differential operator, some predictor filter or whatever • Where lie the sensitivities? • How good is the prediction? • Which Models are feasible?

  4. Follow ups • How will the ecosystem change under anthropogenic induced changes (climate, land use, fishing) • Is it possible to identify early indicators, thresholds, quality objectives?

  5. Statistical Models • Statistical Downscaling for investigation of variability and relationship between variables • Analysis of POPs to further investigate the space-time variability in the data • maybe GAM/T-GAM, Bayesian Modeling,...?

  6. Statistical Downscaling • Idea: to find a relationship between observed large scale data and local data and using this empirical model to estimate local data from modeled large scale data • here: • local data: ecological data • large scale data: climatological data (NAO index, SST, Air Temperature, ...) • needs long time series (>20y)

  7. SD Method (Krönke et al 1998) • all combinations of X and Y are tried out • after high skill and high correlation found ecological plausibility will be tested • if plausible, a potential relationship has been found

  8. Downscaling Method: Stastistical Model • Calculate the covariance matrix of the observations • Calculate EOFs (=PCA) for the data vectors of interest • reduces dimensionality • reduces noise • Do a CCA on the time coefficients (loadings) to find the relationship between the predicand and predictor • validate this relationship using either a validation period or crossvalidation

  9. SD: Selection of results • Skill Factors • the correlation coefficient r between the observations and estimations • Brier-based score: where variance of error (estimate - observation) variance of observation

  10. POP Analysis • Linear multivariate technique • used to analyse space-time variability of time series („waves“ in the observational data) • Mostly used to find oscillatory modes in climate data • Good for systems with quasi-oscillatory modes and linear processes to the first approximation • idea is to find oscillatory modes in ecological data and to get information also about the spatial variability

  11. Present status • Preparation and investigation of time series of the Mecklenburg-Vorpommern monitoring programme: • time series of physical, chemical and biological data in some cases starting 1970 • ca 200 phytoplankton species • stations lie off the coast of Mecklenburg- Vorpommern • and for recreation: recoding the POP-Analysis program to run on PCs with open source libraries

More Related