Seminar: Lazaro Alonso Silva
Institutsseminar
- Datum: 25.01.2024
- Uhrzeit: 14:30
- Vortragende(r): Lazaro Alonso Silva
- (Reichstein department)
- Raum: Hörsaal (C0.001)
We
show that a hybrid approach effectively predicts model parameters with a
single neural network, compared with the site-level optimized set of
parameters.
This
approach demonstrates its capability to generate predictions consistent
with in-situ parameter calibrations across various spatial locations,
showcasing its versatility and reliability in modelling coupled systems.
Here,
the physics-based process models undergo evaluation across several
FLUXNET sites. Various observations—such as gross primary productivity,
net ecosystem exchange, evapotranspiration, transpiration, the
normalized difference vegetation index, above-ground biomass, and
ecosystem respiration—are utilized as targets to assess the model's
performance. Simultaneously, a neural network (NN) is trained to predict
the model parameters, using input features(to the NN) such as plant
functional types, climate types, bioclimatic variables, atmospheric
nitrogen and phosphorus deposition, and soil properties. The model
simulation is executed within our internal framework Sindbad.jl (to be
open-sourced), designed to ensure compatibility with gradient-based
optimization methods.