Loading...
Pubblicazioni Scientifiche
Filtri di ricerca 2 risultati
Pubblicazioni per anno
Multi-temporal dataset of stand and canopy structural data in temperate and Mediterranean coppice forests
Chianucci
,
Francesco
,
Ferrara
,
Carlotta
,
Bertini
,
Giada
,
Fabbio
,
Gianfranco
,
Tattoni
,
Clara
,
Rocchini
,
Duccio
,
Corona
,
P.
,
Cutini
,
Andrea
Mostra abstract
Key message: We provided long-term stand and canopy structural data from permanent monitoring plots representative of some most diffuse temperate and Mediterranean forests, under different coppice management regimes. Periodic inventories were performed in the surveyed plots since the 1970s. Annual litterfall production and its partitioning (leaf, woody, reproductive parts) and optical canopy measurements using the LAI-2000 Plant Canopy Analyzer were performed every year in fully equipped plots since the 1990s. These data can be used for evaluating the influence of coppice management in the stand and canopy structure, the parametrization of radiative transfer models that require accurate ground truth data, and the calibration of high to medium resolution remotely sensed data. Dataset access is at https://doi.org/10.17632/z8zm3ytkcx.2. Associated metadata is available at https://agroenvgeo.data.inra.fr/geonetwork/srv/eng/catalog.search#/metadata/2bd2d77f-3cf8-43da-b1b5-9f8196dc017f . © 2019, INRA and Springer-Verlag France SAS, part of Springer Nature.
LONG-TERM COMPARISON OF IN SITU AND REMOTELY-SENSED LEAF AREA INDEX IN TEMPERATE AND MEDITERRANEAN BROADLEAVED FORESTS
Tattoni
,
Clara
,
Chianucci
,
Francesco
,
Grotti
,
Mirko
,
Zorer
,
Roberto
,
Cutini
,
Andrea
,
Rocchini
,
Duccio
Mostra abstract
Monitoring vegetation structure and functioning is critical for modelling terrestrial ecosystems and energy cycles. Leaf area index (LAI) is an important structural property of vegetation used in many land-surface, climate, and forest monitoring applications. Remote sensing provides a unique way to obtain estimates of leaf area index at spatially extensive areas. However, the analysis and extraction of quantitative information from remotely-sensed data require accurate cross-calibration with in situ forest measurements, which are generally spatially-and temporally-limited, thereby limiting the ability to compare the seasonal dynamic patterns between field and remotely-sensed time series. This is particularly relevant in temperate broadleaved forests, which are characterized by high level of complexity, which can complicate the retrieval of vegetation attributes from remotely-sensed data. In this study, we performed a long-term comparison of MODIS LAI products with continuous in situ leaf area index measurements collected monthly in temperate and Mediterranean forests from 2000 to 2016. Results indicated that LAI showed a good correlation between satellite and ground data for most of the stands, and the pattern in seasonal changes were highly overlapping between the time-series. We conclude that MODIS LAI data are suitable for phenological application and for up-scaling LAI from the stand level to larger scales. © 2019, Italian Society of Remote Sensing. All rights reserved.