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Enhancing generic ecological model for short-term prediction of Southern North Sea algal dynamics with remote sensing images
Authors:Hong Li  Mijail Arias  Anouk Blauw  Arthur E. Mynett  Steef Peters
Affiliation:a UNESCO-IHE Institute for Water Education, 2601 DA Delft, Netherlands
b Delft University of Technology, Faculty of CiTG, 2600 GA Delft, Netherlands
c Deltares (WL|Delft Hydraulics), 2600 MH, Netherlands
d Institute for Environmental Studies (IVM), Vrije Universiteit, 1081 HV Amsterdam, Netherlands
Abstract:
Physically based numerical modelling follows from the basic understanding of the underlying mechanisms and is often represented by a set of (partial differential) equations. It is one of the main approaches in population dynamics modelling. The emphasis of the model introduced in this paper is on the simulation of short-term spatial and temporal dynamics of harmful algal bloom (HAB) events. Total suspended matter (TSM) concentration is one of the dominant factors for harmful algal bloom (HAB) prediction in North Sea. However, the modelling of suspended matter contains a high degree of uncertainty in this area. Therefore, this research aims to achieve a better estimation for the short-term prediction of harmful algal bloom development in both space and time by using spatially distributed TSM retrieved from remotely sensed images as physically based model inputs. In order to supply complete spatially covered datasets for the physically based model instrument: generic ecological model (GEM), this research retrieves TSM information from MERIS images by means of proper estimation techniques including biharmonic splines and self-learning cellular automata. A better estimation of HAB spatial pattern development is achieved by adding spatially distributed TSM data as inputs to original GEM model, and it proved that chlorophyll-a concentration in this area is very sensitive to TSM concentration.
Keywords:Generic ecological model   MERIS data   Algal dynamics modelling   Southern North Sea   Total suspended matter   Self-learning cellular automata
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