Model description paper
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02 Mar 2018
Model description paper |
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02 Mar 2018 A fire model with distinct crop, pasture, and non-agricultural burning: use of new data and a model-fitting algorithm for FINAL.1 Sam S. Rabin, Daniel S. Ward, Sergey L. Malyshev, Brian I. Magi, Elena Shevliakova, and Stephen W. PacalaThis study describes and evaluates the Fire Including Natural & Agricultural Lands model (FINAL) which, for the first time, explicitly simulates cropland and pasture management fires separately from non-agricultural fires. The non-agricultural fire module uses empirical relationships to simulate burned area in a quasi-mechanistic framework, similar to past fire modeling efforts, but with a novel optimization method that improves the fidelity of simulated fire patterns to new observational estimates of non-agricultural burning. The agricultural fire components are forced with estimates of cropland and pasture fire seasonality and frequency derived from observational land cover and satellite fire datasets. FINAL accurately simulates the amount, distribution, and seasonal timing of burned cropland and pasture over 2001â2009 (global totals: 0.434Ã106 and 2.02Ã106â¯km2âyrâ1 modeled, 0.454Ã106 and 2.04Ã106â¯km2âyrâ1 observed), but carbon emissions for cropland and pasture fire are overestimated (global totals: 0.295 and 0.706â¯PgCâyrâ1 modeled, 0.194 and 0.538â¯PgCâyrâ1 observed). The non-agricultural fire module underestimates global burned area (1.91Ã106â¯km2âyrâ1 modeled, 2.44Ã106â¯km2âyrâ1 observed) and carbon emissions (1.14â¯PgCâyrâ1 modeled, 1.84â¯PgCâyrâ1 observed). The spatial pattern of total burned area and carbon emissions is generally well reproduced across much of sub-Saharan Africa, Brazil, Central Asia, and Australia, whereas the boreal zone sees underestimates. FINAL represents an important step in the development of global fire models, and offers a strategy for fire models to consider human-driven fire regimes on cultivated lands. At the regional scale, simulations would benefit from refinements in the parameterizations and improved optimization datasets. We include an in-depth discussion of the lessons learned from using the LevenbergâMarquardt algorithm in an interactive optimization for a dynamic global vegetation model.
Received: 17 Mar 2017 – Discussion started: 13 Apr 2017 – Revised: 16 Nov 2017 – Accepted: 27 Jan 2018 – Published: 02 Mar 2018
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