firemafs project: gomez- dans , spessa , wooster, lewis

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Assessment and optimisation of SPITFIRE using EO data, and Bayesian probability and Markov Chain Monte Carlo (MCMC) techniques FireMAFS project: Gomez-Dans, Spessa, Wooster, Lew

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Assessment and optimisation of SPITFIRE using EO data, and Bayesian probability and Markov Chain Monte Carlo (MCMC) techniques. FireMAFS project: Gomez- Dans , Spessa , Wooster, Lewis. *. *. LPJ: Lund Potsdam Dynamic Vegetation Model - PowerPoint PPT Presentation

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Page 1: FireMAFS  project:  Gomez- Dans ,  Spessa , Wooster, Lewis

Assessment and optimisation of SPITFIRE using EO data, and Bayesian probability and Markov

Chain Monte Carlo (MCMC) techniques

FireMAFS project: Gomez-Dans, Spessa, Wooster, Lewis

Page 2: FireMAFS  project:  Gomez- Dans ,  Spessa , Wooster, Lewis

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* By-passing the vegetation dynamics and soil hydrology

components of LPJ.

LPJ: Lund Potsdam Dynamic Vegetation Model

SPITFIRE: Spread and Intensity of Fire and Emissions

Model

LPJ SPITFIRE… Above-ground fuel load.

SPITFIRE LPJ… Post-fire plant mortality and above-

ground biomass unburnt.

Page 3: FireMAFS  project:  Gomez- Dans ,  Spessa , Wooster, Lewis
Page 4: FireMAFS  project:  Gomez- Dans ,  Spessa , Wooster, Lewis

Improved PFT densities and distribution

Page 5: FireMAFS  project:  Gomez- Dans ,  Spessa , Wooster, Lewis

Improved fuel load magnitudes and distribution

Page 6: FireMAFS  project:  Gomez- Dans ,  Spessa , Wooster, Lewis

uncalibrated

calibratedMODISsatellite

Page 7: FireMAFS  project:  Gomez- Dans ,  Spessa , Wooster, Lewis

White = 0% disparity

Light pink ~ 1% disparity

Dark red ~ 20% disparity

This gives a basis to further investigate structural and parameterisation problems with the fire model without having to worry too much about errors emanating from the vegetation model itself.