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Pubblicazioni Scientifiche
Filtri di ricerca 4 risultati
Pubblicazioni per anno
Probabilistic sampling and estimation for large-scale assessment of poplar plantations in Northern Italy
Corona
,
P.
,
Chianucci
,
Francesco
,
Marcelli
,
Agnese
,
Gianelle
,
Damiano
,
Fattorini
,
Lorenzo
,
Grotti
,
Mirko
,
Puletti
,
Nicola
,
Mattioli
,
Walter
Mostra abstract
In the recent decades, growing demand for wood products, combined with efforts to conserve natural forests, has supported a steady increase in the global extent of planted forests. In this paper, a two-phase sampling strategy for large-scale assessment of hybrid poplar plantations in Northern Italy was implemented. The first phase was performed by means of tessellation stratified sampling on high-resolution remotely sensed imagery, covering the survey area by a grid of regular polygons of equal size and randomly and independently selecting one point per quadrat. All the plantations spotted by at least one sample point were selected. In the second phase, we randomly chosen a subset of plantations by stratified sampling that were visited on the ground to collect qualitative and quantitative attributes. The resulting estimates were reliable, and the survey demonstrated relatively easy to be implemented and replicated. These considerations support the use of the proposed sampling strategy to frequently update information on fast-growing forest plantations within agricultural farms, like hybrid poplar crops. Moreover, the results of the case study here presented highlight the relevance of hybrid poplar plantations in Italy, in the context of sustainable development strategies under a green economy perspective. © 2020, Springer-Verlag GmbH Germany, part of Springer Nature.
Large-scale two-phase estimation of wood production by poplar plantations exploiting sentinel-2 data as auxiliary information
Marcelli
,
Agnese
,
Mattioli
,
Walter
,
Puletti
,
Nicola
,
Chianucci
,
Francesco
,
Gianelle
,
Damiano
,
Grotti
,
Mirko
,
Chirici
,
Gherardo
,
D'Amico
,
Giovanni
,
Francini
,
Saverio
,
Travaglini
,
Davide
,
Fattorini
,
Lorenzo
,
Corona
,
P.
national forest inventories
regression estimator
sentinel-2
design-based inference
first-phase tessellation stratified sampling
second-phase stratified sampling
simulation study
Mostra abstract
Growing demand for wood products, combined with efforts to conserve natural forests, have supported a steady increase in the global extent of planted forests. Here, a two-phase sampling strategy for large-scale assessment of the total area and the total wood volume of fast-growing forest tree crops within agricultural land is presented. The first phase is performed using tessellation stratified sampling on high-resolution remotely sensed imagery and is sufficient for estimating the total area of plantations by means of a Monte Carlo integration estimator. The second phase is performed using stratified sampling of the plantations selected in the first phase and is aimed at estimating total wood volume by means of an approximation of the first-phase Horvitz-Thompson estimator. Vegetation indices from Sentinel-2 are exploited as freely available auxiliary information in a linear regression estimator to improve the design-based precision of the estimator based on the sole sample data. Estimators of the totals and of the design-based variances of total estimators are presented. A simulation study is developed in order to check the design-based performance of the two alternative estimators under several artificial distributions supposed for poplar plantations (random, clustered, spatially trended). An application in Northern Italy is also reported. The regression estimator turns out to be invariably better than that based on the sole sample information. Possible integrations of the proposed sampling scheme with conventional national forest inventories adopting tessellation stratified sampling in the first phase are discussed. © 2020, Finnish Society of Forest Science. All rights reserved.
Testing Removal of Carbon Dioxide, Ozone, and Atmospheric Particles by Urban Parks in Italy
Fares
,
Silvano
,
Conte
,
Adriano
,
Alivernini
,
Alessandro
,
Chianucci
,
Francesco
,
Grotti
,
Mirko
,
Zappitelli
,
Ilaria
,
Petrella
,
Fabio
,
Corona
,
P.
italy
forestry
carbon dioxide
carbon dioxide process
ecosystems
gas emissions
greenhouse gases
ozone
particles (particulate matter)
atmospheric concentration
atmospheric particles
ecosystem services
in-situ measurement
multilayer canopy model
particulate matter
tree characteristics
tropospheric ozone
air pollution
aerosol
greenspace
pollutant removal
testing method
urban area
air quality
article
canopy
dry deposition
particulate matter 10
recreational park
tree
air pollutant
city
ecosystem
air pollutants
cities
parks
recreational
trees
Mostra abstract
Cities are responsible for more than 80% of global greenhouse gas emissions. Sequestration of air pollutants is one of the main ecosystem services that urban forests provide to the citizens. The atmospheric concentration of several pollutants such as carbon dioxide (CO2), tropospheric ozone (O3), and particulate matter (PM) can be reduced by urban trees through processes of adsorption and deposition. We predict the quantity of CO2, O3, and PM removed by urban tree species with the multilayer canopy model AIRTREE in two representative urban parks in Italy: Park of Castel di Guido, a 3673 ha reforested area located northwest of Rome, and Park of Valentino, a 42 ha urban park in downtown Turin. We estimated a total annual removal of 1005 and 500 kg of carbon per hectare, 8.1 and 1.42 kg of ozone per hectare, and 8.4 and 8 kg of PM10 per hectare. We highlighted differences in pollutant sequestration between urban areas and between species, shedding light on the importance to perform extensive in situ measurements and modeling analysis of tree characteristics to provide realistic estimates of urban parks to deliver ecosystem services. ©
TRY plant trait database – enhanced coverage and open access
Kattge
,
Jens
,
Bönisch
,
Gerhard
,
Díaz
,
Sandra M.
,
Lavorel
,
Sandra
,
Prentice
,
Iain Colin
,
Leadley
,
Paul W.
,
Tautenhahn
,
Susanne
,
Werner
,
Gijsbert
,
Aakala
,
Tuomas
,
Abedi
,
Mehdi
,
Acosta
,
Alicia Teresa Rosario
,
Adamidis
,
George C.
,
Adamson
,
Kairi
,
Aiba
,
Masahiro
,
Albert
,
Cécile Hélène
,
Alcántara
,
Julio M.
,
Alcázar C
,
Carolina
,
Aleixo
,
Izabela
,
Ali
,
Hamada E.
,
Amiaud
,
Bernard
,
Ammer
,
Christian
,
Amoroso
,
Mariano Martín
,
Anand
,
Madhur
,
Anderson
,
Carolyn G.
,
Anten
,
Niels P.R.
,
Antos
,
Joseph A.
,
Apgaua
,
Deborah Mattos Guimarães
,
Ashman
,
Tia Lynn
,
Asmara
,
Degi Harja
,
Asner
,
Gregory P.
,
Aspinwall
,
Michael J.
,
Atkin
,
Owen K.
,
Aubin
,
Isabelle
,
Baastrup-Spohr
,
Lars
,
Bahalkeh
,
Khadijeh
,
Bahn
,
Michael
,
Baker
,
Timothy R.
,
Baker
,
William J.
,
Bakker
,
Jan P.
,
Baldocchi
,
Dennis D.
,
Baltzer
,
Jennifer L.
,
Banerjee
,
Arindam
,
Baranger
,
Anne
,
Barlow
,
Jos B.
,
Barneche
,
Diego R.
,
Baruch
,
Zdravko
,
Bastianelli
,
Denis
,
Battles
,
John J.
,
Bauerle
,
William L.
,
Bauters
,
Marijn
,
Bazzato
,
Erika
,
Beckmann
,
Michael
,
Beeckman
,
Hans
,
Beierkuhnlein
,
Carl
,
Bekker
,
Renée M.
,
Belfry
,
Gavin
,
Belluau
,
Michaël
,
Beloiu Schwenke
,
Mirela
,
Benavides
,
Raquel
,
Benomar
,
Lahcen
,
Berdugo-Lattke
,
Mary Lee
,
Berenguer
,
Erika
,
Bergamin
,
Rodrigo Scarton
,
Bergmann
,
Joana
,
Carlucci
,
Marcos B.
,
Berner
,
Logan T.
,
Bernhardt-Römermann
,
Markus
,
Bigler
,
Christof
,
Bjorkman
,
Anne D.
,
Blackman
,
Chris J.
,
Blanco
,
Carolina Casagrande
,
Blonder
,
Benjamin Wong
,
Blumenthal
,
Dana M.
,
Bocanegra-González
,
Kelly Tatiana
,
Boeckx
,
Pascal
,
Bohlman
,
Stephanie Ann
,
Böhning-Gaese
,
Katrin
,
Boisvert-Marsh
,
Laura
,
Bond
,
William J.
,
Bond-Lamberty
,
Ben P.
,
Boom
,
Arnoud
,
Boonman
,
Coline C.F.
,
Bordin
,
Kauane Maiara
,
Boughton
,
Elizabeth H.
,
Boukili
,
Vanessa K.S.
,
Bowman
,
David M.J.S.
,
Bravo
,
Sandra Josefina
,
Brendel
,
Marco R.
,
Broadley
,
Martin R.
,
Brown
,
Kerry A.
,
Bruelheide
,
Helge
,
Brumnich
,
Federico
,
Bruun
,
Hans Henrik
,
Bruy
,
David
,
Buchanan
,
Serra Willow
,
Bucher
,
Solveig Franziska
,
Buchmann
,
Nina
,
Buitenwerf
,
Robert
,
Bunker
,
Daniel E.
,
Bürger
,
Jana
functional diversity
data coverage
data integration
data representativeness
plant traits
try plant trait database
Mostra abstract
Plant traits—the morphological, anatomical, physiological, biochemical and phenological characteristics of plants—determine how plants respond to environmental factors, affect other trophic levels, and influence ecosystem properties and their benefits and detriments to people. Plant trait data thus represent the basis for a vast area of research spanning from evolutionary biology, community and functional ecology, to biodiversity conservation, ecosystem and landscape management, restoration, biogeography and earth system modelling. Since its foundation in 2007, the TRY database of plant traits has grown continuously. It now provides unprecedented data coverage under an open access data policy and is the main plant trait database used by the research community worldwide. Increasingly, the TRY database also supports new frontiers of trait-based plant research, including the identification of data gaps and the subsequent mobilization or measurement of new data. To support this development, in this article we evaluate the extent of the trait data compiled in TRY and analyse emerging patterns of data coverage and representativeness. Best species coverage is achieved for categorical traits—almost complete coverage for ‘plant growth form’. However, most traits relevant for ecology and vegetation modelling are characterized by continuous intraspecific variation and trait–environmental relationships. These traits have to be measured on individual plants in their respective environment. Despite unprecedented data coverage, we observe a humbling lack of completeness and representativeness of these continuous traits in many aspects. We, therefore, conclude that reducing data gaps and biases in the TRY database remains a key challenge and requires a coordinated approach to data mobilization and trait measurements. This can only be achieved in collaboration with other initiatives. © 2019 The Authors. Global Change Biology published by John Wiley & Sons Ltd