Prediction of forest NPP in Italy by the combination of ground and remote sensing data

被引:21
|
作者
Chirici, Gherardo [1 ]
Chiesi, Marta [2 ]
Corona, Piermaria [3 ]
Puletti, Nicola [3 ]
Mura, Matteo [4 ]
Maselli, Fabio [2 ]
机构
[1] Univ Florence, Dept Agr Food & Forestry Syst, GeoLAB Lab Geomat, I-50145 Florence, Italy
[2] IBIMET CNR, I-50019 Sesto Fiorentino, FI, Italy
[3] Consiglio Ric Agr & Anal Econ Agr, Forestry Res Ctr CRA SEL, Arezzo, Italy
[4] Univ Molise, Dipartimento Biosci & Terr, I-86090 Pesche, Is, Italy
关键词
Modified C-Fix; BIOME-BGC; Forest inventory; Current annual increment; Regional estimates; Italy; NET PRIMARY PRODUCTION; CARBON MASS FLUXES; PRIMARY PRODUCTIVITY; ATMOSPHERIC CO2; ANCILLARY DATA; CLIMATE-CHANGE; GROWING STOCK; SCALE; INVENTORIES; REGRESSION;
D O I
10.1007/s10342-015-0864-4
中图分类号
S7 [林业];
学科分类号
0829 ; 0907 ;
摘要
Our research group has recently proposed a strategy to simulate net forest carbon fluxes based on the coupling of a NDVI-driven parametric model, Modified C-Fix, and of a biogeochemical model, BIOME-BGC. The outputs of the two models are combined through the use of a proxy of ecosystem distance from equilibrium condition which accounts for the occurred disturbances. This modeling strategy is currently applied to all Italian forest areas using an available set of NDVI images and ancillary data descriptive of an 8-year period (1999-2006). The obtained estimates of forest net primary production (NPP) are first analyzed in order to assess the importance of the main model drivers on relevant spatial variability. This analysis indicates that growing stock is the most influential model driver, followed by forest type and meteorological variables. In particular, the positive influence of growing stock on NPP can be constrained by thermal and water limitations, which are most evident in the upper mountain and most southern zones, respectively. Next, the NPP estimates, aggregated over seven main forest types and twenty administrative regions in Italy, are converted into current annual increment of standing volume (CAI) by specific coefficients. The accuracy of these CAI estimates is finally assessed by comparison with the ground data collected during a recent national forest inventory. The results obtained indicate that the modeling approach tends to overestimate the ground CAI for most forest types. In particular, the overestimation is notable for forest types which are mostly managed as coppice, while it is negligible for high forests. The possible origins of these phenomena are investigated by examining the main model drivers together with the results of previous studies and of older forest inventories. The implications of using different NPP estimation methods are finally discussed in view of assessing the forest carbon budget on a national basis.
引用
收藏
页码:453 / 467
页数:15
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